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padding:0pt 5.03pt; vertical-align:top"><p class=3D"Normal0" style= =3D"margin-bottom:0pt; text-align:center; line-height:150%; font-size:10pt"= ><span style=3D"line-height:150%; font-family:'Times New Roman'; font-size:= 6.67pt; font-weight:bold; vertical-align:super">1</span></p></td><td style= =3D"width:171.95pt; border:0.75pt solid #000000; padding:0pt 5.03pt; vertic= al-align:top"><p class=3D"Normal0" style=3D"margin-left:7.1pt; margin-botto= m:0pt; text-indent:-7.1pt; text-align:justify; line-height:normal; font-siz= e:10pt"><span style=3D"font-family:'Times New Roman'">Karen Vanessa Bowen M= oreno</span></p></td><td style=3D"width:10.5pt; border:0.75pt solid #000000= ; padding:0pt 5.03pt; vertical-align:top"><p class=3D"Normal0" style=3D"mar= gin-bottom:0pt; text-align:center; line-height:150%; font-size:10pt"><span = style=3D"height:0pt; text-align:left; display:block; position:absolute; z-i= ndex:1"><img src=3D"data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAAABQAAAAUC= 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yle=3D"width:3.25pt; border:0.75pt solid #000000; padding:0pt 5.03pt; verti= cal-align:top"><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:= center; line-height:150%; font-size:14pt"><span style=3D"font-family:'Times= New Roman'"> </span></p></td><td colspan=3D"4" style=3D"width:370.7pt= ; border:0.75pt solid #000000; padding:0pt 5.03pt; vertical-align:top"><p c= lass=3D"Normal0" style=3D"margin-bottom:0pt; text-align:justify; line-heigh= t:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">Uni= versidad Bolivariana del Ecuador (UBE), Dur=C3=A1n, Ecuador.</span></p><p c= lass=3D"Normal0" style=3D"margin-bottom:0pt; text-align:justify; line-heigh= t:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">Mae= str=C3=ADa en Educaci=C3=B3n entornos digitales</span></p><p class=3D"Norma= l0" style=3D"margin-bottom:0pt; text-align:justify; line-height:normal"><sp= an style=3D"font-family:'Times New Roman'; text-decoration:underline; color= 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style=3D"border-top:0.75pt solid #000000; border-bottom:0.75pt solid #000= 000; padding:0pt; vertical-align:top"></td></tr><tr><td style=3D"width:3.25= pt; border:0.75pt solid #000000; padding:0pt 5.03pt; vertical-align:top"><p= class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:center; line-heig= ht:150%; font-size:14pt"><span style=3D"font-family:'Times New Roman'"> = 0;</span></p></td><td colspan=3D"4" style=3D"width:370.7pt; border:0.75pt s= olid #000000; padding:0pt 5.03pt; vertical-align:top"><p class=3D"Normal0" = style=3D"margin-bottom:0pt; text-align:justify; line-height:normal; font-si= ze:10pt"><span style=3D"font-family:'Times New Roman'">Universidad Bolivari= ana del Ecuador (UBE), Dur=C3=A1n, Ecuador.</span></p><p class=3D"Normal0" = style=3D"margin-bottom:0pt; text-align:justify; line-height:normal; font-si= ze:10pt"><span style=3D"font-family:'Times New Roman'">Maestr=C3=ADa en Edu= caci=C3=B3n entornos digitales</span></p><p class=3D"Normal0" style=3D"marg= in-left:7.1pt; margin-bottom:0pt; text-indent:-7.1pt; text-align:justify; l= ine-height:normal"><span style=3D"font-family:'Times New Roman'; text-decor= ation:underline; color:#0563c1">pvverac@ube.ec</span></p></td></tr><tr><td = style=3D"width:3.25pt; border:0.75pt solid #000000; padding:0pt 5.03pt; ver= tical-align:top"><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-alig= n:center; line-height:150%; font-size:10pt"><span style=3D"line-height:150%= ; font-family:'Times New Roman'; font-size:6.67pt; font-weight:bold; vertic= al-align:super">3</span></p></td><td style=3D"width:171.95pt; border:0.75pt= solid #000000; padding:0pt 5.03pt; vertical-align:top"><p class=3D"Normal0= " style=3D"margin-left:7.1pt; margin-bottom:0pt; text-indent:-7.1pt; text-a= lign:justify; line-height:normal; font-size:10pt"><span style=3D"font-famil= y:'Times New Roman'">Zeidy Sandra L=C3=B3pez Collazo</span></p></td><td sty= le=3D"width:10.5pt; border:0.75pt solid #000000; padding:0pt 5.03pt; vertic= al-align:top"><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:c= enter; line-height:150%; font-size:10pt"><span style=3D"height:0pt; text-al= ign:left; display:block; position:absolute; z-index:3"><img src=3D"data:ima= ge/png;base64,iVBORw0KGgoAAAANSUhEUgAAABQAAAAUCAYAAACNiR0NAAAABHNCSVQICAgIf= AhkiAAAAAlwSFlzAAAOxAAADsQBlSsOGwAAA2lJREFUOI21lEtoXVUUhr+197n3nNzbJN6omdTW= RmwbikVq4iMxk0ZU2oGgA1FnQcQiUhUnFqo4cGIRQUGd+KDY+Jp25ouiGCOxElqjhba0URPzsPQ= muY9zzj1nLwcnuU1iQ0f+mzXZe///Wv/aiy1cBV/83NNOPr/VWHunqO5OVNuNlQVjmZCGjCVhcP= HR3q8XrsaVNUITu/KSlu7LFeSpNNZ+57RTjDTvqFM1IvNiGXWJvD/9x8yXB/efizYU/Hy8/0W/a= A/Xq43r1P3nOCNIFsW2XLleTd648Z/863v3nkjWCL59dp/fWSsfzOXNkShKacvfgnMRlXjqqqIr= wr5vkihyhxbT+K2ne082AAzADZXyPj+wL8ehQ1NH700v0N35OAroutW0rxDF6rUUvddaJfdwM9H= wqYFSa0GO1SrpfucUVUXEZCQcqQtZ0VEU1QTPtmAkDygiEBTsTxq6hx65fWTOy7l0exjKgGrGcj= To2/oKS9EUZ2aPcf/Oo1iTI9UGqFJrzDF5+Sv+Wvg+y+IEVXaGibsbOO5hGBSkbUUQdRT9zaQuB= hE6Ct2MT7/D9OIIVnw6Ct3csfk52oNtTMwcBbE0YteeC7we4LinSI9Z03dBNUVxTdu1eI7FcBIj= 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ration:none"><span class=3D"Hyperlink" style=3D"line-height:150%; font-fami= ly:'Times New Roman'; font-size:10pt">https://orcid.org/0000-0001-6570-2239= </span></a></p></td><td style=3D"border-top:0.75pt solid #000000; border-bo= ttom:0.75pt solid #000000; padding:0pt; vertical-align:top"></td></tr><tr><= td style=3D"width:3.25pt; border:0.75pt solid #000000; padding:0pt 5.03pt; = vertical-align:top"><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-a= lign:center; line-height:150%; font-size:14pt"><span style=3D"font-family:'= Times New Roman'"> </span></p></td><td colspan=3D"4" style=3D"width:37= 0.7pt; border:0.75pt solid #000000; padding:0pt 5.03pt; vertical-align:top"= ><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:justify; line-= height:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'= ">Universidad Bolivariana del Ecuador (UBE), Dur=C3=A1n, Ecuador.</span></p= ><p class=3D"Normal0" style=3D"margin-left:7.1pt; margin-bottom:0pt; text-i= ndent:-7.1pt; text-align:justify; line-height:normal"><span style=3D"font-f= amily:'Times New Roman'; text-decoration:underline; color:#0563c1">zslopezc= @ube.edu.ec</span></p></td></tr><tr><td style=3D"width:3.25pt; border:0.75p= t solid #000000; padding:0pt 5.03pt; vertical-align:top"><p class=3D"Normal= 0" style=3D"margin-bottom:0pt; text-align:center; line-height:150%; font-si= ze:10pt"><span style=3D"line-height:150%; font-family:'Times New Roman'; fo= nt-size:6.67pt; font-weight:bold; vertical-align:super">4</span></p></td><t= d style=3D"width:171.95pt; border:0.75pt solid #000000; padding:0pt 5.03pt;= vertical-align:top"><p class=3D"Normal0" style=3D"margin-left:7.1pt; margi= n-bottom:0pt; text-indent:-7.1pt; text-align:justify; line-height:normal; f= ont-size:10pt"><span style=3D"font-family:'Times New Roman'">Wellington Isa= ac Maliza Cruz</span></p></td><td style=3D"width:10.5pt; border:0.75pt soli= d #000000; padding:0pt 5.03pt; vertical-align:top"><p class=3D"Normal0" sty= 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style=3D"line-height:150%; font-family:'Times New Roman'; font-size:10pt">= https://orcid.org/0009-0005-1426-583X</span></a></p></td><td style=3D"borde= r-top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; padding:0pt= ; vertical-align:top"></td></tr><tr><td style=3D"width:3.25pt; border:0.75p= t solid #000000; padding:0pt 5.03pt; vertical-align:top"><p class=3D"Normal= 0" style=3D"margin-bottom:0pt; text-align:center; line-height:150%; font-si= ze:14pt"><span style=3D"font-family:'Times New Roman'"> </span></p></t= d><td colspan=3D"4" style=3D"width:370.7pt; border:0.75pt solid #000000; pa= dding:0pt 5.03pt; vertical-align:top"><p class=3D"Normal0" style=3D"margin-= bottom:0pt; text-align:justify; line-height:normal; font-size:10pt"><span s= tyle=3D"font-family:'Times New Roman'">Universidad Bolivariana del Ecuador = (UBE), Dur=C3=A1n, Ecuador.</span></p><p class=3D"Normal0" style=3D"margin-= bottom:0pt; text-align:justify; line-height:normal"><span style=3D"font-fam= ily:'Times New Roman'; text-decoration:underline; color:#0563c1">wimalizac@= ube.edu.ec</span></p></td></tr><tr style=3D"height:0pt"><td style=3D"width:= 14.05pt"></td><td style=3D"width:182.75pt"></td><td style=3D"width:21.3pt">= </td><td style=3D"width:177.15pt"></td><td style=3D"width:0.3pt"></td></tr>= </table><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-indent:36pt; = text-align:center; line-height:115%; font-size:14pt"><span style=3D"font-fa= mily:'Times New Roman'; font-style:italic"> </span></p><p class=3D"Nor= mal0" style=3D"margin-bottom:0pt; text-indent:36pt; text-align:center; line= -height:115%; font-size:14pt"><span style=3D"font-family:'Times New Roman';= font-style:italic"> </span></p><table style=3D"width:436.35pt; margin= -left:0.25pt; margin-bottom:0pt; padding:0pt; border-collapse:collapse"><tr= ><td colspan=3D"3" style=3D"width:156.4pt; padding:0pt 5.4pt; vertical-alig= n:top"><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:right; l= ine-height:normal; font-size:10pt"><a id=3D"_heading_h.qq7csgiyozqh"></a><s= pan style=3D"font-family:'Times New Roman'; color:#0000ff"> </span></p= ><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:right; line-he= ight:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">=  </span></p></td><td colspan=3D"2" style=3D"width:258.35pt; border-top= :0.75pt solid #000000; padding:0pt 5.4pt; vertical-align:top"><p class=3D"N= ormal0" style=3D"margin-bottom:0pt; text-align:right; line-height:normal; f= ont-size:10pt"><span style=3D"font-family:'Times New Roman'; font-weight:bo= ld">Art=C3=ADculo de Investigaci=C3=B3n Cient=C3=ADfica y Tecnol=C3=B3gica<= /span></p><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:right= ; line-height:normal; font-size:10pt"><span style=3D"font-family:'Times New= Roman'">Enviado: </span></p><p class=3D"Normal0" style=3D"margin-bottom:0p= t; text-align:right; line-height:normal; font-size:10pt"><span style=3D"fon= t-family:'Times New Roman'">Revisado: </span></p><p class=3D"Normal0" style= =3D"margin-bottom:0pt; text-align:right; line-height:normal; font-size:10pt= "><span style=3D"font-family:'Times New Roman'">Aceptado: </span></p><p cla= ss=3D"Normal0" style=3D"margin-bottom:0pt; text-align:right; line-height:no= rmal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">Publica= do:</span></p><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:r= ight; line-height:normal; font-size:10pt"><span style=3D"font-family:'Times= New Roman'">DOI:</span><span style=3D"font-family:'Times New Roman'"> = ;</span></p></td></tr><tr style=3D"height:6.55pt"><td colspan=3D"3" style= =3D"width:156.4pt; padding:0pt 5.4pt; vertical-align:top"><p class=3D"Norma= l0" style=3D"margin-bottom:0pt; text-align:right; line-height:normal; font-= size:6pt"><span style=3D"font-family:'Times New Roman'; color:#0000ff"> = 0;</span></p><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:ri= ght; line-height:normal; font-size:6pt"><span style=3D"font-family:'Times N= ew Roman'; color:#0000ff"> </span></p></td><td colspan=3D"2" style=3D"= width:258.35pt; border-bottom:0.75pt solid #000000; padding:0pt 5.4pt; vert= ical-align:top"><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align= :right; line-height:normal; font-size:6pt"><span style=3D"font-family:'Time= s New Roman'; font-weight:bold"> </span></p></td></tr><tr><td style=3D= "width:37.8pt; padding:0pt 5.4pt; vertical-align:top"><p class=3D"Normal0" = style=3D"margin-bottom:0pt; text-align:justify; line-height:150%; font-size= :12pt"><span style=3D"font-family:'Times New Roman'; font-weight:bold"> = 0;</span></p><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:ju= stify; line-height:150%; font-size:12pt"><span style=3D"font-family:'Times = New Roman'; font-weight:bold">C=C3=ADtese:</span><span style=3D"font-family= :'Times New Roman'"> </span></p></td><td style=3D"width:1.55pt; padding:0pt= 5.4pt; vertical-align:top"><p class=3D"Normal0" style=3D"margin-bottom:0pt= ; text-align:justify; line-height:150%; font-size:12pt"><span style=3D"font= -family:'Times New Roman'; font-weight:bold"> </span></p></td><td cols= pan=3D"2" style=3D"width:358.55pt; border-bottom:0.75pt solid #000000; padd= ing:0pt 5.4pt; vertical-align:top"><p class=3D"Normal0" style=3D"margin-bot= tom:0pt; text-align:justify; line-height:normal; font-size:10pt"><span styl= e=3D"font-family:'Times New Roman'"> </span></p><p class=3D"Normal0" s= tyle=3D"margin-bottom:0pt; text-align:justify; line-height:normal; font-siz= e:10pt"><span style=3D"font-family:'Times New Roman'">DATOS REVISTA</span><= /p><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:justify; lin= e-height:normal; font-size:10pt"><span style=3D"font-family:'Times New Roma= n'">DATOS REVISTA</span></p><p class=3D"Normal0" style=3D"margin-bottom:0pt= ; text-align:justify; line-height:normal; font-size:10pt"><span style=3D"fo= nt-family:'Times New Roman'">DATOS REVISTA</span></p></td><td style=3D"bord= er-top:0.75pt solid #000000; padding:0pt; vertical-align:top"></td></tr><tr= style=3D"height:0pt"><td style=3D"width:48.6pt"></td><td style=3D"width:12= .35pt"></td><td style=3D"width:106.25pt"></td><td style=3D"width:263.1pt"><= /td><td style=3D"width:6.05pt"></td></tr></table><p class=3D"Normal0" style= =3D"margin-bottom:0pt; line-height:115%; font-size:12pt"><img src=3D"data:i= mage/png;base64,iVBORw0KGgoAAAANSUhEUgAAAjcAAACMCAYAAACAuogxAAAABHNCSVQICAg= IfAhkiAAAAAlwSFlzAAAOxAAADsQBlSsOGwAAIABJREFUeJzsnXd4VFXe+D93ZpKZZNIrIRB6TQ= hdEOngUgSkClIUEGUJUlR4URcVVBTQVRBFRBSR3gOhJjQDIQXSJ5n0RnqfJJM6M/f3R8hds7q7r= ovu6/ubz/PAA7ecc+655575nm87giiKImbMmDFjxowZM/9HkP23G2DGjBkzZsyYMfMoMQs3ZsyY= MWPGjJn/U5iFGzNmzJgxY8bM/ynMwo0ZM2bMmDFj5v8UZuHGjBkzZsyYMfN/CsVvX4XY6l8CSH8= jiiCA2HJUFBGFh8dbjgnCj27+23EzZsyYMWPGjJmf4/fR3IjQLLVI/wHAJDT/U0QEUcQkCpgQQB= Awic3XiaKx+fzf3WvGjBkzZsyYMfNz/A7CjYCkhREFQIYoglEEEwKiICBDRMCEIEBWSRXHbyeTW= 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s+t+v81CoWCN998kwkTJvxm3x48ePDgwYOH28NtCW6cTifl5eVYLJZbD/QXBje3i79ijjKZjICA= AHQ6nbuA04MHDx48ePDw13FbghsPHjx48ODBg4f/FDxLCR48ePDgwYOH/yo8wY0HDx48ePDg4b+= KP7UVPDs72+3C7cGDBw8ePHjw8L+BRqOhRYsWtzz+p4Kb77777qYqvB48ePDgwYMHD38X4eHhTJ= ky5ZbHPQXFHjx48ODBg4f/Kjw1Nx48ePDgwYOH/yo8wY0HDx48ePDg4b8KT3DjwYMHDx48ePiv4= v8DkrKy3KIORuIAAAAASUVORK5CYII=3D" width=3D"567" height=3D"140" alt=3D"" />= </p><table style=3D"width:437.1pt; margin-left:0.25pt; margin-bottom:0pt; p= adding:0pt; border-collapse:collapse"><tr><td style=3D"width:74.75pt; borde= r:0.75pt solid #000000; padding:0pt 5.03pt; vertical-align:top"><p class=3D= "Normal0" style=3D"text-align:justify; line-height:115%; font-size:12pt"><s= pan style=3D"font-family:'Times New Roman'; font-weight:bold; color:#767171= ">Palabras claves:</span><span style=3D"font-family:'Times New Roman'; colo= r:#767171"> </span></p><p class=3D"Normal0" style=3D"line-height:108%; font= -size:12pt"><span style=3D"font-family:'Times New Roman'">Simuladores digit= ales, ense=C3=B1anza de la f=C3=ADsica, movimiento, innovaci=C3=B3n pedag= =C3=B3gica, aprendizaje interactivo.</span></p></td><td colspan=3D"2" style= =3D"width:9.7pt; border:0.75pt solid #000000; padding:0pt 5.03pt; vertical-= align:top"><p class=3D"Title" style=3D"margin-top:6pt; margin-bottom:12pt; = text-align:justify; line-height:115%; font-size:12pt"><span style=3D"font-f= amily:'Times New Roman'; font-weight:bold"> </span></p></td><td style= =3D"width:319.5pt; border:0.75pt solid #000000; padding:0pt 5.03pt; vertica= l-align:top"><p class=3D"Normal0" style=3D"text-align:justify; line-height:= 115%; font-size:12pt"><span style=3D"font-family:'Times New Roman'; font-we= ight:bold; color:#808080">Resumen </span></p><p class=3D"Normal0" style=3D"= text-align:justify; line-height:115%; font-size:12pt"><span style=3D"font-f= amily:'Times New Roman'; font-weight:bold">Introducci=C3=B3n: </span><span = style=3D"font-family:'Times New Roman'">El uso de Tecnolog=C3=ADas de la </= span><span style=3D"font-family:'Times New Roman'; text-decoration:underlin= e">Informaci=C3=B3n y la Comunicaci=C3=B3n (TIC</span><span style=3D"font-f= amily:'Times New Roman'">) en la educaci=C3=B3n secundaria permiti=C3=B3 la= transici=C3=B3n de modelos tradicionales a entornos de aprendizaje din=C3= =A1micos. En la ense=C3=B1anza de la F=C3=ADsica, espec=C3=ADficamente en t= emas complejos como el movimiento, los simuladores digitales emergen como h= erramientas clave para facilitar la visualizaci=C3=B3n y experimentaci=C3= =B3n de conceptos abstractos. </span><span style=3D"font-family:'Times New = Roman'; font-weight:bold">Objetivo: </span><span style=3D"font-family:'Time= s New Roman'">Determinar el impacto del uso de los simuladores digitales en= la comprensi=C3=B3n del tema de Movimiento en la asignatura de F=C3=ADsica= , en estudiantes de primer a=C3=B1o de Bachillerato General Unificado. </sp= an><span style=3D"font-family:'Times New Roman'; font-weight:bold">Metodolo= g=C3=ADa: </span><span style=3D"font-family:'Times New Roman'">La investiga= ci=C3=B3n es de tipo explicativa con un enfoque cuantitativo-experimental. = Se emplearon m=C3=A9todos te=C3=B3ricos como el inductivo-deductivo para la= formulaci=C3=B3n de hip=C3=B3tesis, y m=C3=A9todos emp=C3=ADricos mediante= gu=C3=ADas de observaci=C3=B3n y encuestas estructuradas. El an=C3=A1lisis= estad=C3=ADstico compar=C3=B3 la efectividad de los simuladores antes y de= spu=C3=A9s de la intervenci=C3=B3n en una poblaci=C3=B3n de estudiantes div= idida en grupo control y grupo experimental. </span><span style=3D"font-fam= ily:'Times New Roman'; font-weight:bold">Resultados:</span><span style=3D"f= ont-family:'Times New Roman'"> Los resultados evidencian que el uso de simu= ladores digitales mejora la comprensi=C3=B3n del tema de Movimiento y el de= sempe=C3=B1o acad=C3=A9mico de los estudiantes. Ambos grupos iniciaron con = el mismo nivel de conocimiento; tras la intervenci=C3=B3n, el grupo experim= ental alcanz=C3=B3 un incremento de 1.68 puntos en la prueba post test, sup= erior al aumento de 0.80 puntos del grupo control. Asimismo, se registr=C3= =B3 mayor motivaci=C3=B3n y participaci=C3=B3n, confirmando la efectividad = pedag=C3=B3gica de los simuladores digitales para el aprendizaje significat= ivo de la f=C3=ADsica. </span><span style=3D"font-family:'Times New Roman';= font-weight:bold">Conclusi=C3=B3n:</span><span style=3D"line-height:115%; = font-family:'Times New Roman'; font-size:11pt"> </span><span style=3D"font-= family:'Times New Roman'">El uso de simuladores digitales establece una est= rategia pedag=C3=B3gica eficaz para mejorar la comprensi=C3=B3n del tema de= Movimiento en F=C3=ADsica, al favorecer un aprendizaje significativo, mayo= r motivaci=C3=B3n y mejor desempe=C3=B1o acad=C3=A9mico en los estudiantes,= superando las limitaciones de los m=C3=A9todos tradicionales y contribuyen= do al fortalecimiento del proceso de ense=C3=B1anza-aprendizaje. </span><sp= an style=3D"font-family:'Times New Roman'; font-weight:bold">=C3=81rea de e= studio general: </span><span style=3D"font-family:'Times New Roman'">Educac= i=C3=B3n. </span><span style=3D"font-family:'Times New Roman'; font-weight:= bold">=C3=81rea de estudio espec=C3=ADfica: </span><span style=3D"font-fami= ly:'Times New Roman'">Entornos digitales. </span><span style=3D"font-family= :'Times New Roman'; font-weight:bold; color:#333333">Tipo de estudio:</span= ><span style=3D"font-family:'Times New Roman'; color:#333333">  </span= ><span style=3D"font-family:'Times New Roman'">Art=C3=ADculo original.</spa= n></p></td></tr><tr><td colspan=3D"2" style=3D"width:78pt; border-top:0.75p= t solid #000000; border-right:0.75pt solid #5b9bd5; border-left:0.75pt soli= d #5b9bd5; border-bottom:0.75pt solid #5b9bd5; padding:0pt 5.03pt; vertical= -align:top"><p class=3D"Title" style=3D"margin-top:6pt; margin-bottom:12pt;= text-align:justify; line-height:115%; font-size:12pt"><span style=3D"font-= family:'Times New Roman'; font-weight:bold; color:#767171">Keywords:</span>= <span style=3D"font-family:'Times New Roman'; color:#767171"> </span></p><p= ><span style=3D"font-family:'Times New Roman'">Digital simulators, physics = teaching, motion, pedagogical innovation, interactive learning.</span></p><= p class=3D"Title" style=3D"margin-top:6pt; margin-bottom:12pt; text-align:j= ustify; line-height:115%; font-size:12pt"><span style=3D"font-family:'Times= New Roman'; font-weight:bold"> </span></p></td><td style=3D"width:6.4= 5pt; border-top:0.75pt solid #000000; border-right:0.75pt solid #5b9bd5; bo= rder-left:0.75pt solid #5b9bd5; border-bottom:0.75pt solid #5b9bd5; padding= :0pt 5.03pt; vertical-align:top"><p class=3D"Title" style=3D"margin-top:6pt= ; margin-bottom:12pt; text-align:justify; line-height:115%; font-size:12pt"= ><span style=3D"font-family:'Times New Roman'; font-weight:bold"> </sp= an></p></td><td style=3D"width:319.5pt; border-top:0.75pt solid #000000; bo= rder-right:0.75pt solid #5b9bd5; border-left:0.75pt solid #5b9bd5; border-b= ottom:0.75pt solid #5b9bd5; padding:0pt 5.03pt; vertical-align:top"><p clas= s=3D"Normal0" style=3D"text-align:justify; line-height:108%; font-size:12pt= "><span style=3D"font-family:'Times New Roman'; font-weight:bold; color:#80= 8080">Abstract</span></p><p class=3D"Normal0" style=3D"text-align:justify; = line-height:115%; font-size:12pt"><span style=3D"font-family:'Times New Rom= an'; font-weight:bold">Introduction: </span><span style=3D"font-family:'Tim= es New Roman'">The use of </span><span style=3D"font-family:'Times New Roma= n'; text-decoration:underline">Information and Communication Technologies (= ICTs</span><span style=3D"font-family:'Times New Roman'">) in secondary edu= cation enabled the transition from traditional models to dynamic learning e= nvironments. In physics education, specifically in complex topics such as m= otion, digital simulators have emerged as key tools for facilitating the vi= sualization and experimentation of abstract concepts. </span><span style=3D= "font-family:'Times New Roman'; font-weight:bold">Objective: </span><span s= tyle=3D"font-family:'Times New Roman'">To determine the impact of the use o= f digital simulators on the understanding of the topic of Motion in the sub= ject of Physics, in first year students of General Unified Baccalaureate. <= /span><span style=3D"font-family:'Times New Roman'; font-weight:bold">Metho= dology: </span><span style=3D"font-family:'Times New Roman'">The research i= s explanatory in nature with a quantitative-experimental approach. Theoreti= cal methods such as inductive-deductive reasoning were used to formulate hy= potheses, and empirical methods were employed using observation guides and = structured surveys. Statistical analysis compared the effectiveness of the = simulators before and after the intervention in a student population divide= d into a control group and an experimental group. </span><span style=3D"fon= t-family:'Times New Roman'; font-weight:bold">Results: </span><span style= =3D"font-family:'Times New Roman'">The results show that the use of digital= simulators improves students' understanding of the topic of Motion and the= ir academic performance. Both groups started with the same level of knowled= ge; after the intervention, the experimental group achieved an increase of = 1.68 points on the post-test, greater than the 0.80-point increase of the c= ontrol group. Furthermore, greater motivation and participation were observ= ed, confirming the pedagogical effectiveness of digital simulators for mean= ingful learning in Physics. </span><span style=3D"font-family:'Times New Ro= man'; font-weight:bold">Conclusion: </span><span style=3D"font-family:'Time= s New Roman'">The use of digital simulators establishes an effective pedago= gical strategy to improve the understanding of the topic of Motion in Physi= cs, by promoting meaningful learning, greater motivation and better academi= c performance in students, overcoming the limitations of traditional method= s and contributing to the strengthening of the teaching-learning process. <= /span><span style=3D"font-family:'Times New Roman'; font-weight:bold">Gener= al Area of Study: </span><span style=3D"font-family:'Times New Roman'">Educ= ation. </span><span style=3D"font-family:'Times New Roman'; font-weight:bol= d">Specific area of study: </span><span style=3D"font-family:'Times New Rom= an'">Digital Environment. </span><span style=3D"font-family:'Times New Roma= n'; font-weight:bold; color:#333333; background-color:#ffffff">Type of stud= y:</span><span style=3D"font-family:'Times New Roman'; color:#333333; backg= round-color:#ffffff"> Original article</span><span style=3D"font-family:'Ti= mes New Roman'; color:#333333">.</span></p></td></tr><tr style=3D"height:0p= t"><td style=3D"width:85.55pt"></td><td style=3D"width:3.25pt"></td><td sty= le=3D"width:17.25pt"></td><td style=3D"width:330.3pt"></td></tr></table><p = class=3D"Normal0" style=3D"margin-bottom:10pt; line-height:115%; font-size:= 12pt"><span style=3D"font-family:'Times New Roman'; font-weight:bold; color= :#a5a5a5"> </span></p><ol style=3D"margin:0pt; padding-left:0pt"><li c= lass=3D"Normal0" style=3D"margin-left:32pt; text-align:justify; line-height= :108%; padding-left:4pt; font-family:'Times New Roman'; font-size:12pt; fon= t-weight:bold; color:#767171"><span>Introducci=C3=B3n</span></li></ol><p st= yle=3D"margin-top:6pt; text-align:justify; line-height:115%; font-size:12pt= "><span style=3D"font-family:'Times New Roman'">En las =C3=BAltimas d=C3=A9= cadas, en la educaci=C3=B3n se experiment=C3=B3 cambios significativos con = la integraci=C3=B3n de las </span><span style=3D"font-family:'Times New Rom= an'; text-decoration:underline">Tecnolog=C3=ADas de la Informaci=C3=B3n y l= a Comunicaci=C3=B3n (TIC</span><span style=3D"font-family:'Times New Roman'= ">). A nivel mundial, los simuladores digitales se consolidaron como herram= ientas clave para facilitar la ense=C3=B1anza de las ciencias, especialment= e en asignaturas como F=C3=ADsica. Estas herramientas permiten representar = fen=C3=B3menos complejos de forma interactiva, favoreciendo el aprendizaje = activo y la comprensi=C3=B3n profunda. </span><span style=3D"font-family:'T= imes New Roman'; background-color:#ffff00">Imbert</span><span style=3D"font= -family:'Times New Roman'"> (2022) destaca que las simulaciones promueven e= l pensamiento cr=C3=ADtico y reflexivo, ya que el estudiante accede a los f= undamentos te=C3=B3ricos al contrastar resultados experimentales mediante e= l juego y la competencia. </span></p><p style=3D"margin-top:6pt; text-align= :justify; line-height:115%; font-size:12pt"><span style=3D"font-family:'Tim= es New Roman'">De manera complementaria, </span><span style=3D"font-family:= 'Times New Roman'; background-color:#ffff00">Rosales</span><span style=3D"f= ont-family:'Times New Roman'"> et al. (2023) subrayan que el uso de simulad= ores digitales se consolid=C3=B3 como una herramienta pedag=C3=B3gica efica= z para la ense=C3=B1anza de la F=C3=ADsica, ya que facilita la comprensi=C3= =B3n de conceptos complejos mediante su visualizaci=C3=B3n y manipulaci=C3= =B3n interactiva. En conjunto, estas perspectivas respaldan la creciente te= ndencia global hacia la integraci=C3=B3n de simuladores en la educaci=C3=B3= n cient=C3=ADfica como medio para potenciar el aprendizaje significativo, e= l pensamiento cr=C3=ADtico y la participaci=C3=B3n del estudiante.</span></= p><p style=3D"margin-top:6pt; text-align:justify; line-height:115%; font-si= ze:12pt"><span style=3D"font-family:'Times New Roman'">Los simuladores digi= tales se presentan como una alternativa viable, ya que permiten interactuar= con fen=C3=B3menos f=C3=ADsicos de forma virtual, facilitando la comprensi= =C3=B3n de conceptos complejos, promoviendo una conexi=C3=B3n m=C3=A1s efic= az entre la teor=C3=ADa y la pr=C3=A1ctica (</span><span style=3D"font-fami= ly:'Times New Roman'; background-color:#ffff00">Cumbal</span><span style=3D= "font-family:'Times New Roman'">, 2020). Existen estudios recientes que evi= dencian que los estudiantes de bachillerato general unificado en Ecuador pr= esentan niveles bajos del desempe=C3=B1o en la F=C3=ADsica, particularmente= en temas relacionados con el movimiento, lo que demuestra la necesidad de = cambiar por metodolog=C3=ADas innovadoras que mejoren la comprensi=C3=B3n y= generen un aprendizaje m=C3=A1s significativo (</span><span style=3D"font-= family:'Times New Roman'; background-color:#ffff00">Cabrera</span><span sty= le=3D"font-family:'Times New Roman'"> & Carri=C3=B3n, 2023). </span></p= ><p style=3D"margin-top:6pt; text-align:justify; line-height:115%; font-siz= e:12pt"><span style=3D"font-family:'Times New Roman'; background-color:#fff= f00">Ch=C3=A1vez</span><span style=3D"font-family:'Times New Roman'"> &= Mestres (2023) destacan que estas herramientas promueven el aprendizaje in= teractivo y el desarrollo del pensamiento cr=C3=ADtico. Asimismo, </span><s= pan style=3D"font-family:'Times New Roman'; background-color:#ffff00">Intri= ago-Alava</span><span style=3D"font-family:'Times New Roman'"> et al. (2024= ) confirman su efectividad al mostrar mejoras en el rendimiento acad=C3=A9m= ico tras su implementaci=C3=B3n, estos hallazgos confirman la pertinencia d= e integrar recursos digitales en la ense=C3=B1anza de la f=C3=ADsica, en co= ncordancia con las demandas actuales del sistema educativo ecuatoriano.</sp= an></p><p style=3D"margin-top:6pt; text-align:justify; line-height:115%; fo= nt-size:12pt"><span style=3D"font-family:'Times New Roman'">En la </span><s= pan style=3D"font-family:'Times New Roman'; text-decoration:underline">Unid= ad Educativa =E2=80=9CManuel C=C3=B3rdova Galarza</span><span style=3D"font= -family:'Times New Roman'">=E2=80=9D los estudiantes de primer a=C3=B1o de = Bachillerato General Unificado enfrentan dificultades para visualizar conce= ptos, aplicar f=C3=B3rmulas, relacionar la teor=C3=ADa con la pr=C3=A1ctica= y desarrollar habilidades de pensamiento cr=C3=ADtico. </span></p><p style= =3D"margin-top:6pt; text-align:justify; line-height:115%; font-size:12pt"><= span style=3D"font-family:'Times New Roman'">Otra limitaci=C3=B3n se atribu= ye, en gran medida a la ausencia de un laboratorio de ciencias que facilite= el desarrollo de vivencias experimentales que refuercen el aprendizaje te= =C3=B3rico. No obstante, la disponibilidad de un laboratorio de computaci= =C3=B3n en la instituci=C3=B3n representa una oportunidad valiosa para tran= sformar la ense=C3=B1anza de las ciencias mediante la integraci=C3=B3n de r= ecursos digitales, en particular simuladores digitales.</span></p><p style= =3D"margin-top:6pt; text-align:justify; line-height:115%; font-size:12pt"><= span style=3D"font-family:'Times New Roman'">En este contexto, surge la nec= esidad de aprovechar los recursos tecnol=C3=B3gicos disponibles para supera= r las limitaciones estructurales y optimizar la ense=C3=B1anza de la F=C3= =ADsica en el nivel educativo referido. Por tanto, el presente art=C3=ADcul= o se centra en dar soluci=C3=B3n al siguiente problema de investigaci=C3=B3= n: =C2=BFCu=C3=A1l es el impacto del uso de simuladores digitales en la com= prensi=C3=B3n del tema de movimiento de la asignatura de f=C3=ADsica en los= estudiantes del primer a=C3=B1o de bachillerato general unificado de la </= span><span style=3D"font-family:'Times New Roman'; text-decoration:underlin= e">Unidad Educativa =E2=80=9CManuel C=C3=B3rdova Galarza=E2=80=9D</span><sp= an style=3D"font-family:'Times New Roman'"> ?, cuyo objeto de la investigac= i=C3=B3n es el empleo de simuladores digitales en la ense=C3=B1anza del tem= a de movimiento de la asignatura de f=C3=ADsica</span><span style=3D"font-f= amily:'Times New Roman'; color:#ff0000">.</span></p><p style=3D"margin-top:= 6pt; text-align:justify; line-height:115%; font-size:12pt"><span style=3D"f= ont-family:'Times New Roman'">En este marco, el objetivo general que encami= na la investigaci=C3=B3n consiste en determinar el impacto del uso de los s= imuladores digitales en la comprensi=C3=B3n del tema de Movimiento en la as= ignatura de F=C3=ADsica, en estudiantes de primer a=C3=B1o de bachillerato = general unificado. Este objetivo permitir=C3=A1 evaluar con rigurosidad en = qu=C3=A9 medida los simuladores digitales contribuyen a mejorar no solo la = comprensi=C3=B3n del tema de movimiento, sino tambi=C3=A9n la capacidad de = los estudiantes para visualizar conceptos, aplicar f=C3=B3rmulas, relaciona= r la teor=C3=ADa con la pr=C3=A1ctica y desarrollar habilidades de pensamie= nto cr=C3=ADtico</span><span style=3D"font-family:'Times New Roman'; color:= #ff0000">.</span></p><p style=3D"margin-top:6pt; text-align:justify; line-h= eight:115%; font-size:12pt"><span style=3D"font-family:'Times New Roman'">E= n relaci=C3=B3n con el problema y el objetivo de investigaci=C3=B3n, identi= ficados, se formula la siguiente hip=C3=B3tesis: =E2=80=9CSi se determina e= l impacto del uso de los simuladores digitales en la comprensi=C3=B3n del t= ema de movimiento, entonces se contribuye a perfeccionar el proceso de ense= =C3=B1anza-aprendizaje de la asignatura de f=C3=ADsica del primer a=C3=B1o = del bachillerato general unificado. </span></p><p style=3D"margin-top:6pt; = line-height:115%; font-size:12pt"><span style=3D"font-family:'Times New Rom= an'">Para alcanzar el objetivo general y comprobar la hip=C3=B3tesis plante= ada, se establecen los siguientes objetivos espec=C3=ADficos:</span></p><h1= style=3D"margin-top:0pt; margin-left:21.3pt; margin-bottom:0pt; text-inden= t:-18pt; text-align:justify; line-height:115%; font-size:12pt"><span style= =3D"font-family:'Times New Roman'"><span>a)</span></span><span style=3D"wid= th:8pt; font:7pt 'Times New Roman'; display:inline-block">   = ;  </span><span style=3D"font-family:'Times New Roman'; font-weight:no= rmal">Determinar los principales referentes te=C3=B3rico-metodol=C3=B3gicos= que sustentan el uso de los simuladores digitales en la comprensi=C3=B3n d= el tema de movimiento.</span></h1><h1 style=3D"margin-top:0pt; margin-left:= 21.3pt; margin-bottom:0pt; text-indent:-18pt; text-align:justify; line-heig= ht:115%; font-size:12pt"><span style=3D"font-family:'Times New Roman'"><spa= n>b)</span></span><span style=3D"width:7.33pt; font:7pt 'Times New Roman'; = display:inline-block">     </span><span style=3D"font-f= amily:'Times New Roman'; font-weight:normal">Identificar las dificultades q= ue enfrentan los estudiantes en la comprensi=C3=B3n del tema de movimiento = mediante m=C3=A9todos de ense=C3=B1anza tradicionales. </span></h1><h1 styl= e=3D"margin-top:0pt; margin-left:21.3pt; margin-bottom:0pt; text-indent:-18= pt; text-align:justify; line-height:115%; font-size:12pt"><span style=3D"fo= nt-family:'Times New Roman'"><span>c)</span></span><span style=3D"width:8.6= 8pt; font:7pt 'Times New Roman'; display:inline-block">   &#= xa0;  </span><span style=3D"font-family:'Times New Roman'; font-weight= :normal">Elaborar actividades de laboratorio con el uso de simuladores digi= tales para la comprensi=C3=B3n del tema de movimiento de la asignatura de f= =C3=ADsica.</span></h1><h1 style=3D"margin-top:0pt; margin-left:21.3pt; mar= gin-bottom:0pt; text-indent:-18pt; text-align:justify; line-height:115%; fo= nt-size:12pt"><span style=3D"font-family:'Times New Roman'"><span>d)</span>= </span><span style=3D"width:7.33pt; font:7pt 'Times New Roman'; display:inl= ine-block">     </span><span style=3D"font-family:'Time= s New Roman'; font-weight:normal">Evaluar la influencia del uso de simulado= res digitales en la comprensi=C3=B3n del tema de Movimiento la capacidad de= los estudiantes para visualizar conceptos, aplicar f=C3=B3rmulas, relacion= ar la teor=C3=ADa con la pr=C3=A1ctica y desarrollar habilidades de pensami= ento cr=C3=ADtico en el tema de movimiento de la asignatura de f=C3=ADsica.= </span></h1><p class=3D"Normal0" style=3D"margin-left:36pt; margin-bottom:0= pt; text-align:justify; line-height:108%; font-size:12pt"><span style=3D"fo= nt-family:'Times New Roman'"> </span></p><ol start=3D"2" style=3D"marg= in:0pt; padding-left:0pt"><li class=3D"Normal0" style=3D"margin-left:32pt; = line-height:108%; padding-left:4pt; font-family:'Times New Roman'; font-siz= e:12pt; font-weight:bold; color:#767171"><span>Metodolog=C3=ADa</span></li>= </ol><p style=3D"margin-top:6pt; text-align:justify; line-height:108%; font= -size:12pt"><span style=3D"font-family:'Times New Roman'">La presente inves= tigaci=C3=B3n se realiza desde un enfoque cuantitativo caracteriz=C3=A1ndos= e por ser deductivo y secuencial con dise=C3=B1o experimental, buscando evi= dencias emp=C3=ADricas que sustenten su validez</span><span style=3D"line-h= eight:108%; font-family:'Times New Roman'; font-size:11pt"> </span><span st= yle=3D"font-family:'Times New Roman'">permite</span><span style=3D"line-hei= ght:108%; font-family:'Times New Roman'; font-size:11pt"> </span><span styl= e=3D"font-family:'Times New Roman'">identificar qu=C3=A9 tipo de simulacion= es son m=C3=A1s efectivas, c=C3=B3mo mejoran la comprensi=C3=B3n, y qu=C3= =A9 estrategias de uso son m=C3=A1s adecuadas para los estudiantes. Este di= se=C3=B1o es adecuado cuando se busca establecer relaciones de causa y efec= to entre la intervenci=C3=B3n pedag=C3=B3gica y resultados de aprendizaje (= </span><span style=3D"font-family:'Times New Roman'; background-color:#ffff= 00">Hern=C3=A1ndez</span><span style=3D"font-family:'Times New Roman'"> &am= p; Mendoza, 2018).</span></p><p style=3D"margin-top:6pt; text-align:justify= ; line-height:108%; font-size:12pt"><span style=3D"font-family:'Times New R= oman'">Este enfoque permite recopilar esos datos num=C3=A9ricos mediante in= strumentos estructurados, como encuestas y pruebas objetivas, cuyos an=C3= =A1lisis estad=C3=ADsticos facilitan la comparaci=C3=B3n entre resultados o= btenidos antes y despu=C3=A9s de la implementaci=C3=B3n de las actividades = de laboratorio con el uso de simuladores digitales. Esta estrategia es util= izada en investigaciones educativas que eval=C3=BAan la efectividad de los = recursos tecnol=C3=B3gicos, lo que permite medir cambios en el rendimiento = acad=C3=A9mico y comprensi=C3=B3n de conceptos (</span><span style=3D"font-= family:'Times New Roman'; background-color:#ffff00">Intriago-Alava</span><s= pan style=3D"font-family:'Times New Roman'"> et al., 2024; </span><span sty= le=3D"font-family:'Times New Roman'; background-color:#ffff00">Ch=C3=A1vez<= /span><span style=3D"font-family:'Times New Roman'"> & Mestres, 2023).<= /span></p><p style=3D"margin-top:6pt; text-align:justify; line-height:108%;= font-size:12pt"><span style=3D"font-family:'Times New Roman'">Juntamente c= on el enfoque cuantitativo-experimental, el tipo de investigaci=C3=B3n que = se utiliza es la explicativa, ya que el objetivo principal es identificar r= elaciones de causa y efecto entre dos fen=C3=B3menos: El uso de simuladores= digitales y la comprensi=C3=B3n del tema Movimiento. La investigaci=C3=B3n= explicativa busca responder a preguntas del tipo =C2=BFpor qu=C3=A9 sucede= ? y =C2=BFde qu=C3=A9 manera influye una variable sobre otra?, lo cual se a= linea directamente con el prop=C3=B3sito de la investigaci=C3=B3n. </span><= /p><p style=3D"margin-top:6pt; text-align:justify; line-height:108%; font-s= ize:12pt"><span style=3D"font-family:'Times New Roman'">Se trata de explica= r c=C3=B3mo una intervenci=C3=B3n pedag=C3=B3gica, lo que se concreta en el= uso de simuladores digitales, puede modificar el rendimiento y la comprens= i=C3=B3n del tema de Movimiento de los estudiantes. Este tipo de investigac= i=C3=B3n permitir=C3=A1: Comprobar si existe una mejora significativa en el= nivel de comprensi=C3=B3n despu=C3=A9s del uso de simuladores. Analizar si= el rendimiento acad=C3=A9mico se ve influenciado por el uso de herramienta= s digitales. Entender el mecanismo mediante el cual las TIC impactan en el = aprendizaje de contenidos abstractos en f=C3=ADsica.</span></p><p style=3D"= margin-top:6pt; margin-bottom:12pt; text-align:justify; line-height:115%; f= ont-size:12pt"><span style=3D"font-family:'Times New Roman'">Asimismo, se a= plic=C3=B3 el m=C3=A9todo inductivo-deductivo, para interpretar los aportes= de investigaciones previas</span><span style=3D"font-family:'Times New Rom= an'; color:#ff0000"> </span><span style=3D"font-family:'Times New Roman'">y= formular la hip=C3=B3tesis a comprobar. Este enfoque l=C3=B3gico es clave = en investigaciones que buscan explicar relaciones causa-efecto entre una in= tervenci=C3=B3n y su impacto en el aprendizaje. En cuanto a los m=C3=A9todo= s emp=C3=ADricos, se utiliza una gu=C3=ADa de observaci=C3=B3n que fue apli= cada antes y encuesta estructurada despu=C3=A9s de la implementaci=C3=B3n d= e las actividades de laboratorio con el uso de simuladores digitales, para = determinar el nivel de percepci=C3=B3n y satisfacci=C3=B3n de los estudiant= es. Estos instrumentos, permiten recopilar datos cuantitativos que evidenci= an la aceptaci=C3=B3n y utilidad de la herramienta (</span><span style=3D"f= ont-family:'Times New Roman'; background-color:#ffff00">Intriago-Alava</spa= n><span style=3D"font-family:'Times New Roman'"> et al., 2024). </span></p>= <p style=3D"margin-bottom:12pt; text-align:justify; line-height:108%; font-= size:12pt"><span style=3D"font-family:'Times New Roman'">De acuerdo con </s= pan><span style=3D"font-family:'Times New Roman'; background-color:#ffff00"= >Hern=C3=A1ndez</span><span style=3D"font-family:'Times New Roman'"> & = Mendoza (2018) cuando se realizan dise=C3=B1os experimentales se aplica una= prueba previa antes de la intervenci=C3=B3n y una prueba posterior despu= =C3=A9s de la aplicaci=C3=B3n. Estos dise=C3=B1os, permiten comparar los re= sultados obtenidos en el grupo experimental como en el de control. </span><= /p><p style=3D"margin-bottom:12pt; text-align:justify; line-height:108%; fo= nt-size:12pt"><span style=3D"font-family:'Times New Roman'">En la investiga= ci=C3=B3n se emplean m=C3=A9todos estad=C3=ADsticos para evaluar el impacto= del uso de simuladores digitales para la comprensi=C3=B3n del tema de Movi= miento de la asignatura f=C3=ADsica en estudiantes de primer a=C3=B1o de ba= chillerato general unificado, permitiendo no solo describir los datos recop= ilados, sino establecer relaciones que sean significativas para comparar lo= s resultados de mejor manera, teniendo en cuenta la anal=C3=ADtica del apre= ndizaje como estrategia de mejoramiento de la educaci=C3=B3n virtual.</span= ></p><p style=3D"margin-bottom:12pt; text-align:justify; line-height:108%; = font-size:12pt"><span style=3D"font-family:'Times New Roman'">En primer lug= ar, se aplica la estad=C3=ADstica descriptiva para analizar c=C3=B3mo respo= nden los estudiantes antes y despu=C3=A9s de la implementaci=C3=B3n de los = simuladores digitales, como un medio para entender las caracter=C3=ADsticas= de un conjunto de datos y representar con precisi=C3=B3n la informaci=C3= =B3n cuantitativa del estudio.</span></p><p style=3D"margin-bottom:12pt; te= xt-align:justify; line-height:108%; font-size:12pt"><span style=3D"font-fam= ily:'Times New Roman'">En segundo lugar, para comprobar si existen diferenc= ias significativas entre el rendimiento antes y despu=C3=A9s del uso de sim= uladores, se aplica la estad=C3=ADstica inferencial, que permite realizar p= ruebas estad=C3=ADsticas que eval=C3=BAan si los cambios observados son deb= idos al uso de simuladores o simplemente al azar. </span></p><p style=3D"ma= rgin-bottom:12pt; text-align:justify; line-height:108%; font-size:12pt"><sp= an style=3D"font-family:'Times New Roman'">Finalmente, se realiza an=C3=A1l= isis comparativo entre grupo de control y experimental, este enfoque permit= e contrastar los resultados obtenidos en un grupo que utiliza simuladores d= igitales con otro que no los utiliza, lo cual tiene sustento</span><span st= yle=3D"font-family:'Times New Roman'; color:#ff0000"> </span><span style=3D= "font-family:'Times New Roman'">en recomendaciones de investigaciones recie= ntes, como las de </span><span style=3D"font-family:'Times New Roman'; back= ground-color:#ffff00">Intriago-=C3=81lava</span><span style=3D"font-family:= 'Times New Roman'"> et al.</span><span style=3D"font-family:'Times New Roma= n'; color:#ff0000"> </span><span style=3D"font-family:'Times New Roman'">(2= 024) y </span><span style=3D"font-family:'Times New Roman'; background-colo= r:#ffff00">Ch=C3=A1vez</span><span style=3D"font-family:'Times New Roman'">= & Mestres (2023) quienes utilizaron estrategias similares para evaluar= el impacto de recursos tecnol=C3=B3gicos en el aprendizaje de la f=C3=ADsi= ca.</span></p><p style=3D"margin-bottom:10pt; text-align:justify; line-heig= ht:108%; font-size:12pt"><span style=3D"font-family:'Times New Roman'">Para= ello, se emplean instrumentos que permitan recopilar y analizar informaci= =C3=B3n mediante herramientas de anal=C3=ADtica del aprendizaje, consideran= do la interacci=C3=B3n en los simuladores, tiempos de respuesta, frecuencia= de uso y progresi=C3=B3n en las actividades. De este modo, se aplican m=C3= =A9todos cuantitativos y an=C3=A1lisis comparativos que faciliten identific= ar cambios en el rendimiento de los estudiantes antes y despu=C3=A9s del us= o de los simuladores digitales.</span></p><p style=3D"margin-bottom:10pt; t= ext-align:justify; line-height:108%; font-size:12pt"><span style=3D"font-fa= mily:'Times New Roman'">La poblaci=C3=B3n objeto de estudio est=C3=A1 const= ituida por 54 estudiantes de primer a=C3=B1o de bachillerato general unific= ado de la </span><span style=3D"font-family:'Times New Roman'; text-decorat= ion:underline">Unidad Educativa =E2=80=9CManuel C=C3=B3rdova Galarza</span>= <span style=3D"font-family:'Times New Roman'">=E2=80=9D durante el per=C3= =ADodo 2025=E2=80=932026, divididos en dos paralelos: A (28 estudiantes) y = B (26 estudiantes). Se utiliza una muestra probabil=C3=ADstica, conformada = por el total de estudiantes para un 100% de representatividad, distribuidos= en: grupo experimental: 28 estudiantes que participan en la implementaci= =C3=B3n de las actividades de laboratorio con el uso de simuladores digital= es y el grupo de control: 26 estudiantes que contin=C3=BAan con el m=C3=A9t= odo tradicional de ense=C3=B1anza. </span></p><p style=3D"text-align:justif= y; line-height:108%; font-size:12pt"><span style=3D"font-family:'Times New = Roman'">Las etapas de la investigaci=C3=B3n se estructuraron en cuatro etap= as principales, planificadas en correspondencia con los objetivos espec=C3= =ADficos planteados y con base en un enfoque cuantitativo-experimental, com= o se muestra en la </span><span style=3D"font-family:'Times New Roman'; fon= t-weight:bold">Figura 1</span><span style=3D"font-family:'Times New Roman'"= >.</span><span style=3D"font-family:'Times New Roman'"> </span></p><p = style=3D"text-align:justify; line-height:108%; font-size:12pt"><span style= =3D"font-family:'Times New Roman'"> </span></p><p style=3D"text-align:= center; line-height:108%; font-size:12pt"><span style=3D"font-family:'Times= New Roman'; font-weight:bold">Figura 1</span></p><p style=3D"text-align:ce= nter; line-height:200%; font-size:12pt"><span style=3D"font-family:'Times N= ew Roman'; font-style:italic">Etapas de la propuesta</span><span style=3D"f= ont-family:'Times New Roman'; font-style:italic"> </span></p><p style= =3D"text-align:justify; line-height:108%; font-size:12pt"><span style=3D"fo= nt-family:'Times New Roman'"> </span></p><p style=3D"text-align:justif= y; line-height:108%; font-size:12pt"><span style=3D"height:0pt; text-align:= left; display:block; position:absolute; z-index:5"><img src=3D"data:image/p= ng;base64,iVBORw0KGgoAAAANSUhEUgAAAigAAACSCAYAAABvwzG/AAAABHNCSVQICAgIfAhki= AAAAAlwSFlzAAAOxAAADsQBlSsOGwAAIABJREFUeJztnXl4TOf7xm9ZRIJISEIEsW+xhaqt1doJ= 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font-size:12pt"><span style=3D"font-family:'Times New Roman'"> </span= ></p><p style=3D"text-align:justify; line-height:108%; font-size:12pt"><spa= n style=3D"font-family:'Times New Roman'; font-weight:bold">Fase de Revisi= =C3=B3n te=C3=B3rica y conceptual:</span><span style=3D"font-family:'Times = New Roman'"> en esta fase se abord=C3=B3 la fundamentaci=C3=B3n te=C3=B3ric= a del proceso de ense=C3=B1anza-aprendizaje del tema de movimiento en la as= ignatura de f=C3=ADsica, con =C3=A9nfasis en el uso de simuladores digitale= s como mediadores pedag=C3=B3gicos. Se revisaron enfoques did=C3=A1cticos a= ctuales, estudios previos y aportes a la investigaci=C3=B3n cient=C3=ADfica= , el aprendizaje significativo y la innovaci=C3=B3n pedag=C3=B3gica.</span>= <span style=3D"font-family:'Times New Roman'"> </span><span style=3D"f= ont-family:'Times New Roman'"> </span></p><p style=3D"text-align:justi= fy; line-height:108%; font-size:12pt"><span style=3D"font-family:'Times New= Roman'; font-weight:bold">Fase diagn=C3=B3stica:</span><span style=3D"font= -family:'Times New Roman'"> en esta fase se aplic=C3=B3 a ambos grupos de e= studiantes una prueba diagn=C3=B3stica de conocimientos (pretest) sobre el = tema movimiento, centrada en conceptos claves, interpretaci=C3=B3n de gr=C3= =A1ficos y resoluci=C3=B3n de problemas, con el prop=C3=B3sito de identific= ar las principales dificultades que enfrentan los estudiantes al aprender e= ste tema mediante m=C3=A9todos tradicionales</span><span style=3D"font-fami= ly:'Times New Roman'"> </span><span style=3D"font-family:'Times New Ro= man'"> </span></p><p style=3D"text-align:justify; line-height:108%; fo= nt-size:12pt"><span style=3D"font-family:'Times New Roman'; font-weight:bol= d">Fase de aplicaci=C3=B3n de la metodolog=C3=ADa:</span><span style=3D"fon= t-family:'Times New Roman'"> en esta fase se ejecut=C3=B3 la intervenci=C3= =B3n pedag=C3=B3gica en un grupo experimental, utilizando los simuladores d= igitales (PhET, Educaplus, GeoGebra), con actividades pr=C3=A1cticas guiada= s y experimentales, y se contrastaron los resultados con un grupo de contro= l que continu=C3=B3 con la metodolog=C3=ADa tradicional (clase expositiva, = uso del libro de texto y resoluci=C3=B3n de problemas en pizarra). Se aplic= =C3=B3 el instrumento de evaluaci=C3=B3n (prueba post test) despu=C3=A9s de= la intervenci=C3=B3n para medir los niveles de participaci=C3=B3n, compren= si=C3=B3n y rendimiento acad=C3=A9mico.</span><span style=3D"font-family:'T= imes New Roman'"> </span><span style=3D"font-family:'Times New Roman'"= > </span></p><p style=3D"margin-bottom:12pt; text-align:justify; line-= height:108%; font-size:12pt"><span style=3D"font-family:'Times New Roman'; = font-weight:bold">Fase de An=C3=A1lisis y valoraci=C3=B3n de los resultados= :</span><span style=3D"font-family:'Times New Roman'"> en esta fase se anal= izar=C3=A1n los resultados obtenidos del pre y post test de los estudiantes= , mediante el an=C3=A1lisis estad=C3=ADstico descriptivo: c=C3=A1lculo de m= edias, desviaci=C3=B3n est=C3=A1ndar y frecuencias. Los resultados obtenido= s sirvieron de base para las conclusiones y recomendaciones de la investiga= ci=C3=B3n.</span><span style=3D"font-family:'Times New Roman'"> </span= ></p><ol start=3D"3" style=3D"margin:0pt; padding-left:0pt"><li class=3D"No= rmal0" style=3D"margin-left:32pt; text-align:justify; line-height:108%; pad= ding-left:4pt; font-family:'Times New Roman'; font-size:12pt; font-weight:b= old; color:#767171"><span>Resultados </span></li></ol><p style=3D"margin-bo= ttom:12pt; text-align:justify; line-height:108%; font-size:12pt"><span styl= e=3D"font-family:'Times New Roman'">En la determinaci=C3=B3n de los princip= ales referentes te=C3=B3rico-metodol=C3=B3gicos que sustentan el uso de los= simuladores digitales en la comprensi=C3=B3n del tema de movimiento se emp= le=C3=B3 el m=C3=A9todo te=C3=B3rico an=C3=A1lisis documental, el cual perm= iti=C3=B3 revisar y sistematizar investigaciones previas.</span><span style= =3D"font-family:'Times New Roman'">  </span><span style=3D"font-family= :'Times New Roman'">Entre las principales las que a continuaci=C3=B3n se re= fieren:</span></p><p style=3D"margin-bottom:12pt; text-align:justify; line-= height:108%; font-size:12pt"><span style=3D"font-family:'Times New Roman'">= La ense=C3=B1anza de la f=C3=ADsica debe trascender la mera transmisi=C3=B3= n de conocimiento t=C3=A9cnico, buscando facilitar la comprensi=C3=B3n de l= os procesos naturales y el desarrollo de habilidades cognitivas superiores.= </span><span style=3D"font-family:'Times New Roman'; background-color:#fff= f00">Gonz=C3=A1lez et al. (2022</span><span style=3D"font-family:'Times New= Roman'">) plantean una concepci=C3=B3n sist=C3=A9mica y din=C3=A1mica del = proceso educativo, que integra las dimensiones f=C3=ADsica, social y epist= =C3=A9mica del aprendizaje cient=C3=ADfico. A su vez </span><span style=3D"= font-family:'Times New Roman'; background-color:#ffff00">Arredondo</span><s= pan style=3D"font-family:'Times New Roman'"> et al. (2020) destacan la impo= rtancia del an=C3=A1lisis cient=C3=ADfico y estad=C3=ADstico para la interp= retaci=C3=B3n de datos educativos y el perfeccionamiento del proceso de ens= e=C3=B1anza. </span></p><p style=3D"margin-bottom:12pt; text-align:justify;= line-height:108%; font-size:12pt"><span style=3D"font-family:'Times New Ro= man'">Para </span><span style=3D"font-family:'Times New Roman'; background-= color:#ffff00">Intriago-Alava</span><span style=3D"font-family:'Times New R= oman'"> et al. (2024) y </span><span style=3D"font-family:'Times New Roman'= ; background-color:#ffff00">Rosales</span><span style=3D"font-family:'Times= New Roman'"> et al. (2023) los simuladores digitales se presentan como ins= trumentos did=C3=A1cticos claves que facilitan la construcci=C3=B3n activa = del conocimiento, permitiendo al estudiante manipular variables y observar = resultados en tiempo real, en concordancia con el aprendizaje significativo= y constructivista. </span></p><p style=3D"margin-bottom:12pt; text-align:j= ustify; line-height:108%; font-size:12pt"><span style=3D"font-family:'Times= New Roman'">El fen=C3=B3meno del movimiento, entendido como el cambio de p= osici=C3=B3n de un cuerpo en un sistema de referencia, abarca magnitudes f= =C3=ADsicas esenciales como la posici=C3=B3n, velocidad y aceleraci=C3=B3n.= </span><span style=3D"font-family:'Times New Roman'; background-color:#fff= f00">Imbert</span><span style=3D"font-family:'Times New Roman'"> (2022) sub= raya la complejidad de ense=C3=B1ar estos conceptos debido a su naturaleza = abstracta y la necesidad de vincularlos a representaciones concretas para s= u comprensi=C3=B3n plena. El empleo de simuladores digitales permite experi= mentar con estos fen=C3=B3menos en espacios virtuales que simulan la din=C3= =A1mica real, facilitando una conexi=C3=B3n tangible entre el conocimiento = te=C3=B3rico y sus aplicaciones (</span><span style=3D"font-family:'Times N= ew Roman'; background-color:#ffff00">Ch=C3=A1vez</span><span style=3D"font-= family:'Times New Roman'"> & Mestres, 2023).</span></p><p style=3D"marg= in-bottom:12pt; text-align:justify; line-height:108%; font-size:12pt"><span= style=3D"font-family:'Times New Roman'">Los simuladores digitales, concret= amente aquellos basados en plataformas como PhET, se consolido como recurso= s efectivos para la ense=C3=B1anza experimental en f=C3=ADsica. </span><spa= n style=3D"font-family:'Times New Roman'; background-color:#ffff00">Ch=C3= =A1vez</span><span style=3D"font-family:'Times New Roman'"> & Mestres (= 2023) indican que estas plataformas ofrecen entornos seguros donde los estu= diantes pueden experimentar, manipular y observar variables f=C3=ADsicas, f= avoreciendo la internalizaci=C3=B3n de conceptos y el desarrollo de compete= ncias cient=C3=ADficas. Por otro lado </span><span style=3D"font-family:'Ti= mes New Roman'; background-color:#ffff00">Cumbal</span><span style=3D"font-= family:'Times New Roman'"> (2020) evidencia que el uso de simuladores forta= lece la motivaci=C3=B3n y el desempe=C3=B1o acad=C3=A9mico, debido a la int= eracci=C3=B3n l=C3=BAdica y reflexiva que los estudiantes desarrollan en es= te tipo de entornos virtuales. </span></p><p style=3D"margin-bottom:12pt; t= ext-align:justify; line-height:108%; font-size:12pt"><span style=3D"font-fa= mily:'Times New Roman'">Estos referentes demuestran el potencial de los sim= uladores digitales para transformar la ense=C3=B1anza del movimiento al ofr= ecer experiencias de aprendizaje m=C3=A1s concretas, visuales e interactiva= s. Esta investigaci=C3=B3n profundiza en el impacto espec=C3=ADfico del uso= de simuladores digitales en estudiantes de bachillerato general unificado,= con resultados que refuerzan la efectividad pedag=C3=B3gica de estas herra= mientas en la mejora de la comprensi=C3=B3n y motivaci=C3=B3n estudiantil.<= /span><span style=3D"font-family:'Times New Roman'"> </span></p><p sty= le=3D"margin-bottom:12pt; text-align:justify; line-height:108%; font-size:1= 2pt"><span style=3D"font-family:'Times New Roman'">Para el cumplimiento del= segundo objetivo espec=C3=ADfico y con el prop=C3=B3sito de identificar el= nivel de conocimientos previos de los estudiantes sobre el tema movimiento= en la asignatura de f=C3=ADsica, se aplic=C3=B3 una prueba diagn=C3=B3stic= a (pretest) basada en cinco preguntas conceptuales y cinco problemas num=C3= =A9ricos, al total de 54 estudiantes de primer a=C3=B1o de bachillerato gen= eral unificado, distribuidos en grupo experimental (28 estudiantes) y grupo= control (26 estudiantes), para evaluar la comprensi=C3=B3n inicial del tem= a de movimiento en f=C3=ADsica, de la cual se obtuvieron los siguientes res= ultados, como se muestra en la </span><span style=3D"font-family:'Times New= Roman'; font-weight:bold">Tabla 1</span><span style=3D"font-family:'Times = New Roman'">.</span></p><p style=3D"text-align:center; line-height:108%; fo= nt-size:12pt"><span style=3D"font-family:'Times New Roman'; font-weight:bol= d">Tabla 1</span></p><p style=3D"text-align:center; line-height:200%; font-= size:12pt"><span style=3D"font-family:'Times New Roman'; font-style:italic"= >Puntajes promedio en la prueba pretest por grupo</span><span style=3D"font= -family:'Times New Roman'; font-style:italic"> </span></p><table style= =3D"margin-bottom:0pt; padding:0pt; border-collapse:collapse"><tr style=3D"= height:15pt"><td style=3D"width:88.75pt; border-top:0.75pt solid #000000; p= adding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:12pt; line= -height:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman= '">Promedio cualitativo</span></p></td><td style=3D"width:43.7pt; border-to= p:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D= "margin-bottom:12pt; line-height:normal; font-size:10pt"><span style=3D"fon= t-family:'Times New Roman'">Escala cualitativa</span></p></td><td colspan= =3D"2" style=3D"width:96.7pt; border-top:0.75pt solid #000000; padding:0pt = 5.25pt; vertical-align:top"><p style=3D"margin-bottom:12pt; line-height:nor= mal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">Grupo co= ntrol</span></p></td><td style=3D"width:52.2pt; border-top:0.75pt solid #00= 0000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:12p= t; line-height:normal; font-size:10pt"><span style=3D"font-family:'Times Ne= w Roman'">Grupo experimental</span></p></td><td style=3D"width:61.7pt; bord= er-top:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p sty= le=3D"margin-bottom:12pt; line-height:normal; font-size:10pt"><span style= =3D"font-family:'Times New Roman'">Total</span><span style=3D"font-family:'= Times New Roman'"> </span><span style=3D"font-family:'Times New Roman'= ">de estudiantes por destreza</span></p></td></tr><tr style=3D"height:27.75= pt"><td rowspan=3D"2" style=3D"width:88.75pt; border-top:0.75pt solid #0000= 00; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:= top"><p style=3D"margin-bottom:0pt; line-height:normal; font-size:10pt"><sp= an style=3D"font-family:'Times New Roman'">Destreza o aprendizaje alcanzado= </span><span style=3D"font-family:'Times New Roman'"> </span></p><p st= yle=3D"margin-bottom:0pt; line-height:normal; font-size:10pt"><span style= =3D"font-family:'Times New Roman'">Rango (9.00 =E2=80=93 10.00)</span><span= style=3D"font-family:'Times New Roman'"> </span></p></td><td style=3D= "width:43.7pt; border-top:0.75pt solid #000000; border-bottom:0.75pt solid = #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:= 0pt; text-align:justify; line-height:normal; font-size:10pt"><span style=3D= "font-family:'Times New Roman'">A+</span></p></td><td colspan=3D"2" style= =3D"width:96.7pt; border-top:0.75pt solid #000000; border-bottom:0.75pt sol= id #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bott= om:0pt; text-align:justify; line-height:normal; font-size:10pt"><span style= =3D"font-family:'Times New Roman'">0</span></p></td><td style=3D"width:52.2= pt; border-top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; pa= dding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:0pt; text-a= lign:justify; line-height:normal; font-size:10pt"><span style=3D"font-famil= y:'Times New Roman'">1</span></p></td><td rowspan=3D"2" style=3D"width:61.7= pt; border-top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; pa= dding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:0pt; text-a= lign:justify; line-height:normal; font-size:10pt"><span style=3D"font-famil= y:'Times New Roman'">13</span></p></td></tr><tr style=3D"height:27.75pt"><t= d style=3D"width:43.7pt; border-top:0.75pt solid #000000; border-bottom:0.7= 5pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"marg= in-bottom:0pt; text-align:justify; line-height:normal; font-size:10pt"><spa= n style=3D"font-family:'Times New Roman'">A-</span></p></td><td colspan=3D"= 2" style=3D"width:96.7pt; border-top:0.75pt solid #000000; border-bottom:0.= 75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"mar= gin-bottom:0pt; text-align:justify; line-height:normal; font-size:10pt"><sp= an style=3D"font-family:'Times New Roman'">7</span></p></td><td style=3D"wi= dth:52.2pt; border-top:0.75pt solid #000000; border-bottom:0.75pt solid #00= 0000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:0pt= ; text-align:justify; line-height:normal; font-size:10pt"><span style=3D"fo= nt-family:'Times New Roman'">5</span></p></td></tr><tr style=3D"height:27.7= 5pt"><td rowspan=3D"2" style=3D"width:88.75pt; border-top:0.75pt solid #000= 000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align= :top"><p style=3D"margin-bottom:0pt; line-height:normal; font-size:10pt"><s= pan style=3D"font-family:'Times New Roman'">Alcanza los aprendizajes</span>= <span style=3D"font-family:'Times New Roman'"> </span></p><p style=3D"= margin-bottom:0pt; line-height:normal; font-size:10pt"><span style=3D"font-= family:'Times New Roman'">Rango (7.00 =E2=80=93 8.00)</span><span style=3D"= font-family:'Times New Roman'"> </span></p></td><td style=3D"width:43.= 7pt; border-top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; p= adding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:0pt; text-= align:justify; line-height:normal; font-size:10pt"><span style=3D"font-fami= ly:'Times New Roman'">B+</span></p></td><td colspan=3D"2" style=3D"width:96= .7pt; border-top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; = padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:0pt; text= -align:justify; line-height:normal; font-size:10pt"><span style=3D"font-fam= ily:'Times New Roman'">7</span></p></td><td style=3D"width:52.2pt; border-t= op:0.75pt solid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.= 25pt; vertical-align:top"><p style=3D"margin-bottom:0pt; text-align:justify= ; line-height:normal; font-size:10pt"><span style=3D"font-family:'Times New= Roman'">11</span></p></td><td rowspan=3D"2" style=3D"width:61.7pt; border-= top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5= .25pt; vertical-align:top"><p style=3D"margin-bottom:0pt; text-align:justif= y; line-height:normal; font-size:10pt"><span style=3D"font-family:'Times Ne= w Roman'">30</span><span style=3D"font-family:'Times New Roman'"> </sp= an></p></td></tr><tr style=3D"height:27.75pt"><td style=3D"width:43.7pt; bo= rder-top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; padding:= 0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:0pt; text-align:j= ustify; line-height:normal; font-size:10pt"><span style=3D"font-family:'Tim= es New Roman'">B-</span></p></td><td colspan=3D"2" style=3D"width:96.7pt; b= order-top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; padding= :0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:0pt; text-align:= justify; line-height:normal; font-size:10pt"><span style=3D"font-family:'Ti= mes New Roman'">6</span></p></td><td style=3D"width:52.2pt; border-top:0.75= pt solid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; v= ertical-align:top"><p style=3D"margin-bottom:0pt; text-align:justify; line-= height:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'= ">6</span></p></td></tr><tr style=3D"height:27.75pt"><td rowspan=3D"2" styl= e=3D"width:88.75pt; border-top:0.75pt solid #000000; border-bottom:0.75pt s= olid #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bo= ttom:0pt; line-height:normal; font-size:10pt"><span style=3D"font-family:'T= imes New Roman'">Est=C3=A1 pr=C3=B3ximo a alcanzar</span><span style=3D"fon= t-family:'Times New Roman'"> </span></p><p style=3D"margin-bottom:0pt;= line-height:normal; font-size:10pt"><span style=3D"font-family:'Times New = Roman'">Rango (4.00 =E2=80=93 6.00)</span><span style=3D"font-family:'Times= New Roman'"> </span></p></td><td style=3D"width:43.7pt; border-top:0.= 75pt solid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt;= vertical-align:top"><p style=3D"margin-bottom:0pt; text-align:justify; lin= e-height:normal; font-size:10pt"><span style=3D"font-family:'Times New Roma= n'">C+</span></p></td><td colspan=3D"2" style=3D"width:96.7pt; border-top:0= .75pt solid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt= ; vertical-align:top"><p style=3D"margin-bottom:0pt; text-align:justify; li= ne-height:normal; font-size:10pt"><span style=3D"font-family:'Times New Rom= an'">4</span></p></td><td style=3D"width:52.2pt; border-top:0.75pt solid #0= 00000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-ali= gn:top"><p style=3D"margin-bottom:0pt; text-align:justify; line-height:norm= al; font-size:10pt"><span style=3D"font-family:'Times New Roman'">3</span><= span style=3D"font-family:'Times New Roman'"> </span></p></td><td rows= pan=3D"2" style=3D"width:61.7pt; border-top:0.75pt solid #000000; border-bo= ttom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style= =3D"margin-bottom:0pt; text-align:justify; line-height:normal; font-size:10= pt"><span style=3D"font-family:'Times New Roman'">11</span></p></td></tr><t= r style=3D"height:31.5pt"><td style=3D"width:43.7pt; border-top:0.75pt soli= d #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical= -align:top"><p style=3D"margin-bottom:0pt; text-align:justify; line-height:= normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">C-</s= pan></p></td><td colspan=3D"2" style=3D"width:96.7pt; border-top:0.75pt sol= id #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertica= l-align:top"><p style=3D"margin-bottom:0pt; text-align:justify; line-height= :normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">2</s= pan></p></td><td style=3D"width:52.2pt; border-top:0.75pt solid #000000; bo= rder-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><= p style=3D"margin-bottom:0pt; text-align:justify; line-height:normal; font-= size:10pt"><span style=3D"font-family:'Times New Roman'">2</span></p></td><= /tr><tr style=3D"height:15pt"><td style=3D"width:88.75pt; border-top:0.75pt= solid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; ver= tical-align:top"><p style=3D"margin-bottom:12pt; text-align:justify; line-h= eight:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'"= >Total estudiantes</span><span style=3D"font-family:'Times New Roman'"> = 0;</span></p></td><td style=3D"width:43.7pt; border-top:0.75pt solid #00000= 0; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:t= op"><p style=3D"margin-bottom:12pt; text-align:justify; line-height:normal;= font-size:10pt"><span style=3D"font-family:'Times New Roman'"> </span= ></p></td><td style=3D"width:32pt; border-top:0.75pt solid #000000; border-= bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p sty= le=3D"margin-bottom:12pt; text-align:justify; line-height:normal; font-size= :10pt"><span style=3D"font-family:'Times New Roman'">26</span><span style= =3D"font-family:'Times New Roman'"> </span></p></td><td colspan=3D"2" = style=3D"width:116.9pt; border-top:0.75pt solid #000000; border-bottom:0.75= pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margi= n-bottom:12pt; text-align:justify; line-height:normal; font-size:10pt"><spa= n style=3D"font-family:'Times New Roman'">28</span><span style=3D"font-fami= ly:'Times New Roman'"> </span></p></td><td style=3D"width:61.7pt; bord= er-top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; padding:0p= t 5.25pt; vertical-align:top"><p style=3D"margin-bottom:12pt; text-align:ju= stify; line-height:normal; font-size:10pt"><span style=3D"font-family:'Time= s New Roman'">54</span><span style=3D"font-family:'Times New Roman'"> = </span></p></td></tr><tr style=3D"height:0pt"><td style=3D"width:99.25pt"><= /td><td style=3D"width:54.2pt"></td><td style=3D"width:42.5pt"></td><td sty= le=3D"width:64.7pt"></td><td style=3D"width:62.7pt"></td><td style=3D"width= :72.2pt"></td></tr></table><p style=3D"margin-bottom:12pt; line-height:200%= ; font-size:12pt"><span style=3D"font-family:'Times New Roman'"> </spa= n></p><p style=3D"margin-bottom:12pt; text-align:justify; line-height:108%;= font-size:12pt"><span style=3D"font-family:'Times New Roman'">Los resultad= os de la prueba diagn=C3=B3stica pretest aplicado a los estudiantes de prim= er a=C3=B1o de bachillerato general unificado muestran que ambos grupos, ex= perimental y control, comienzan con niveles de comprensi=C3=B3n del tema mo= vimiento en f=C3=ADsica similares y moderados.</span><span style=3D"font-fa= mily:'Times New Roman'"> </span></p><p style=3D"margin-bottom:12pt; te= xt-align:justify; line-height:108%; font-size:12pt"><span style=3D"font-fam= ily:'Times New Roman'">Las calificaciones que obtuvieron los estudiantes de= l grupo experimental y del grupo control indican un desempe=C3=B1o intermed= io, ubicado principalmente en los niveles B- y A- seg=C3=BAn la escala cual= itativa del </span><span style=3D"font-family:'Times New Roman'; text-decor= ation:underline; background-color:#ffff00">Ministerio de Educaci=C3=B3n del= Ecuador</span><span style=3D"font-family:'Times New Roman'"> (2025). Los n= iveles B- reflejan que los estudiantes alcanzan los aprendizajes con cierta= s limitaciones, mientras que el nivel A- representa la destreza o aprendiza= je alcanzado con capacidad para aplicar conocimientos de forma m=C3=A1s aut= =C3=B3noma y colaborativa.</span><span style=3D"line-height:108%; font-fami= ly:'Times New Roman'; font-size:11pt">=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0= =C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0=C2=A0 </span><span style=3D"font-famil= y:'Times New Roman'"> </span></p><p style=3D"margin-bottom:12pt; text-= align:justify; line-height:108%; font-size:12pt"><span style=3D"font-family= :'Times New Roman'">Este an=C3=A1lisis evidencia que, aunque la mayor=C3=AD= a de estudiantes en ambos grupos poseen una base conceptual adecuada, exist= e un margen importante para profundizar y fortalecer el aprendizaje a parti= r de metodolog=C3=ADas innovadoras.</span><span style=3D"font-family:'Times= New Roman'"> </span></p><p style=3D"margin-bottom:12pt; text-align:ju= stify; line-height:108%; font-size:12pt"><span style=3D"font-family:'Times = New Roman'">Estos hallazgos est=C3=A1n en l=C3=ADnea con investigaciones pr= evias que resaltan la efectividad de la tecnolog=C3=ADa educativa para pote= nciar el aprendizaje significativo en f=C3=ADsica, facilitando la visualiza= ci=C3=B3n, experimentaci=C3=B3n y comprensi=C3=B3n de conceptos complejos, = y contribuyendo a la formaci=C3=B3n integral del estudiante en entornos dig= itales contempor=C3=A1neos. Ambos grupos inician en condiciones similares y= homog=C3=A9neas, lo que proporciona una base v=C3=A1lida y garantiza condi= ciones equitativas para la evaluaci=C3=B3n del impacto real y efectivo del = uso de simuladores digitales en el proceso de aprendizaje, permitiendo atri= buir cualquier mejora posterior a la intervenci=C3=B3n pedag=C3=B3gica apli= cada.</span><span style=3D"font-family:'Times New Roman'"> </span></p>= <p style=3D"margin-bottom:12pt; text-align:justify; line-height:108%; font-= size:12pt"><span style=3D"font-family:'Times New Roman'">En la fase de apli= caci=C3=B3n metodol=C3=B3gica, la intervenci=C3=B3n pedag=C3=B3gica en el g= rupo experimental se centr=C3=B3 en el uso de simuladores digitales como Ph= ET, Educaplus y GeoGebra para el aprendizaje del tema movimiento en f=C3=AD= sica, mientras que el grupo de control continu=C3=B3 con el m=C3=A9todo tra= dicional de ense=C3=B1anza, sustentado en clases expositivas, uso del libro= de texto y resoluci=C3=B3n de ejercicios en pizarra.</span><span style=3D"= font-family:'Times New Roman'"> </span><span style=3D"font-family:'Tim= es New Roman'"> </span></p><p style=3D"margin-bottom:12pt; text-align:= justify; line-height:108%; font-size:12pt"><span style=3D"font-family:'Time= s New Roman'">Las actividades realizadas para el grupo experimental se dise= =C3=B1aron para favorecer la exploraci=C3=B3n, la experimentaci=C3=B3n y la= interpretaci=C3=B3n de fen=C3=B3menos f=C3=ADsicos mediante entornos digit= ales, las cuales incluyeron:</span><span style=3D"font-family:'Times New Ro= man'"> </span></p><p style=3D"margin-bottom:12pt; text-align:justify; = line-height:108%; font-size:12pt"><span style=3D"font-family:'Times New Rom= an'; font-weight:bold">Exploraci=C3=B3n inicial: </span><span style=3D"font= -family:'Times New Roman'">los estudiantes interactuaron con el simulador = =E2=80=9CMovimiento en una dimensi=C3=B3n=E2=80=9D de </span><span style=3D= "font-family:'Times New Roman'; text-decoration:underline">PhET Interactive= Simulations</span><span style=3D"font-family:'Times New Roman'">, observan= do el desplazamiento de una persona al modificar variables como posici=C3= =B3n, tiempo y velocidad, como se muestra en la </span><span style=3D"font-= family:'Times New Roman'; font-weight:bold">Figura 2</span><span style=3D"f= ont-family:'Times New Roman'">. Esta fase permiti=C3=B3 generar la discusi= =C3=B3n grupal sobre las diferencias entre velocidad constante y aceleraci= =C3=B3n. Los estudiantes compararon trayectorias y gr=C3=A1ficos v=E2=80=93= t generados en el simulador, identificando el comportamiento del movimiento= rectil=C3=ADneo uniforme.</span><span style=3D"font-family:'Times New Roma= n'"> </span></p><p style=3D"margin-bottom:12pt; text-align:center; lin= e-height:108%; font-size:12pt"><span style=3D"font-family:'Times New Roman'= ; font-weight:bold">Figura 2</span></p><p style=3D"margin-bottom:12pt; text= -align:center; line-height:108%; font-size:12pt"><span style=3D"font-family= :'Times New Roman'; font-style:italic">Simulador PhET =E2=80=93 =E2=80=9CMo= vimiento en 1D=E2=80=9D</span><span style=3D"font-family:'Times New Roman';= font-style:italic"> </span></p><p style=3D"margin-bottom:12pt; text-a= lign:center; line-height:108%; font-size:12pt"><img src=3D"data:image/png;b= ase64,iVBORw0KGgoAAAANSUhEUgAAAZIAAADoCAYAAADFTGLpAAAABHNCSVQICAgIfAhkiAAAA= AlwSFlzAAAOxAAADsQBlSsOGwAAIABJREFUeJzsvXeYHNd14Pu7t1LnnhyRExEJEiBFQiRFUhIp= 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iX2kdxlSCnxmgWQYjaftONwz9gY20dGKJfLVCpVPD/KvWUZJul0mkw6jZN0MAyjmSYl/lYxdzYf= Z2fN/wcRTPZAn0RJEQAAAABJRU5ErkJggg=3D=3D" width=3D"402" height=3D"232" alt= =3D"" /></p><p style=3D"margin-bottom:12pt; text-align:justify; line-height= :108%; font-size:12pt"><span style=3D"font-family:'Times New Roman'; font-w= eight:bold">Construcci=C3=B3n conceptual:</span><span style=3D"font-family:= 'Times New Roman'"> mediante el simulador GeoGebra, los estudiantes represe= ntaron gr=C3=A1ficas de posici=C3=B3n-tiempo y velocidad-tiempo, interpreta= ndo estas afectan las gr=C3=A1ficas de posici=C3=B3n, velocidad y aceleraci= =C3=B3n en funci=C3=B3n del tiempo, como se muestra en la </span><span styl= e=3D"font-family:'Times New Roman'; font-weight:bold">Figura 3</span><span = style=3D"font-family:'Times New Roman'">. Se realizaron ejercicios para com= parar visual y anal=C3=ADticamente los </span><span style=3D"font-family:'T= imes New Roman'; text-decoration:underline">Movimientos Rectil=C3=ADneos Un= iforme (MRU</span><span style=3D"font-family:'Times New Roman'">) y </span>= <span style=3D"font-family:'Times New Roman'; text-decoration:underline">Un= iformemente Acelerado (MRUA</span><span style=3D"font-family:'Times New Rom= an'">).</span></p><p style=3D"margin-bottom:12pt; text-align:center; line-h= eight:108%; font-size:12pt"><span style=3D"font-family:'Times New Roman'; f= ont-weight:bold">Figura 3</span></p><p style=3D"margin-bottom:12pt; text-al= ign:center; line-height:108%; font-size:12pt"><span style=3D"font-family:'T= imes New Roman'; font-style:italic">Simulador GeoGebra =E2=80=93 Gr=C3=A1fi= cas de movimiento </span></p><p style=3D"margin-bottom:12pt; text-align:cen= ter; line-height:108%; font-size:12pt"><img src=3D"data:image/png;base64,iV= 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style=3D"font-family:'Times New Roman'; font-weight:bold"> <= /span><span style=3D"font-family:'Times New Roman'; font-weight:bold"> = ;</span><span style=3D"font-family:'Times New Roman'; font-weight:bold">&#x= a0;</span><span style=3D"font-family:'Times New Roman'; font-weight:bold">&= #xa0;</span><span style=3D"font-family:'Times New Roman'; font-weight:bold"= > </span><span style=3D"font-family:'Times New Roman'; font-weight:bol= d"> </span><span style=3D"font-family:'Times New Roman'; font-weight:b= old"> </span><span style=3D"font-family:'Times New Roman'; font-weight= :bold"> </span><span style=3D"font-family:'Times New Roman'; font-weig= ht:bold"> </span><span style=3D"font-family:'Times New Roman'; font-we= ight:bold"> </span><span style=3D"font-family:'Times New Roman'; font-= weight:bold"> </span><span style=3D"font-family:'Times New Roman'; fon= t-weight:bold"> </span><span style=3D"font-family:'Times New Roman'; f= ont-weight:bold"> </span><span style=3D"font-family:'Times New Roman';= font-weight:bold"> </span><span style=3D"width:15pt; line-height:108%; fon= t-family:'Times New Roman'; font-size:11pt; display:inline-block"> </s= pan><span style=3D"width:36pt; line-height:108%; font-family:'Times New Rom= an'; font-size:11pt; display:inline-block"> </span><span style=3D"font= -family:'Times New Roman'"> </span></p><p style=3D"margin-bottom:12pt;= text-align:justify; line-height:108%; font-size:12pt"><span style=3D"font-= family:'Times New Roman'; font-weight:bold">Aplicaci=C3=B3n: </span><span s= tyle=3D"font-family:'Times New Roman'">utilizando el simulador </span><span= style=3D"font-family:'Times New Roman'; font-style:italic">Educaplus: Ca= =C3=ADda libre</span><span style=3D"font-family:'Times New Roman'">, los es= tudiantes observaron c=C3=B3mo la velocidad y la aceleraci=C3=B3n var=C3=AD= an durante el descenso de un cuerpo desde diferentes alturas, como se muest= ra en la </span><span style=3D"font-family:'Times New Roman'; font-weight:b= old">Figura 4</span><span style=3D"font-family:'Times New Roman'">. Se regi= straron tiempos de ca=C3=ADda y velocidades instant=C3=A1neas, comparando l= os resultados con los valores te=C3=B3ricos del modelo del MRUA.</span><spa= n style=3D"font-family:'Times New Roman'"> </span></p><p style=3D"marg= in-bottom:12pt; text-indent:36pt; text-align:justify; line-height:108%; fon= t-size:12pt"><span style=3D"font-family:'Times New Roman'"> </span></p= ><p style=3D"margin-bottom:12pt; text-align:center; line-height:108%; font-= size:12pt"><span style=3D"font-family:'Times New Roman'; font-weight:bold">= Figura 4</span></p><p style=3D"margin-bottom:12pt; text-align:center; line-= height:108%; font-size:12pt"><span style=3D"font-family:'Times New Roman'; = font-style:italic">Simulador Educaplus =E2=80=93 Ca=C3=ADda libre</span><sp= an style=3D"font-family:'Times New Roman'; font-style:italic"> </span>= </p><p style=3D"margin-bottom:12pt; text-align:center; line-height:108%; fo= nt-size:12pt"><img src=3D"data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAAAXw= 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=B3n conceptual del grupo experimental. Los estudiantes mostraron mayor fac= ilidad para interpretar las gr=C3=A1ficas de movimiento, relacionar variabl= es f=C3=ADsicas y resolver problemas num=C3=A9ricos. El uso de simuladores = digitales favoreci=C3=B3 un aprendizaje m=C3=A1s visual e interactivo, tran= sformando la experiencia tradicional en un proceso activo y exploratorio.</= span><span style=3D"font-family:'Times New Roman'"> </span></p><p styl= e=3D"margin-bottom:12pt; text-align:justify; line-height:108%; font-size:12= pt"><span style=3D"font-family:'Times New Roman'">La fase de an=C3=A1lisis = y valoraci=C3=B3n de los resultados constituy=C3=B3 el eje central de la in= vestigaci=C3=B3n, pues permiti=C3=B3 contrastar los datos obtenidos en el p= retest y post test de ambos grupos para determinar el impacto real del uso = de simuladores digitales en la comprensi=C3=B3n del tema de movimiento.</sp= an><span style=3D"font-family:'Times New Roman'"> </span></p><p style= =3D"margin-bottom:12pt; text-align:justify; line-height:108%; font-size:12p= t"><span style=3D"font-family:'Times New Roman'">Los resultados se procesar= on mediante an=C3=A1lisis estad=C3=ADstico descriptivo, considerando las me= didas de tendencia central (media, desviaci=C3=B3n est=C3=A1ndar). Estos va= lores se emplearon para comparar el progreso alcanzado por el grupo experim= ental (que trabaj=C3=B3 con PhET, GeoGebra y Educaplus) frente al grupo de = control (que continu=C3=B3 con la metodolog=C3=ADa tradicional).</span><spa= n style=3D"font-family:'Times New Roman'"> </span></p><p style=3D"marg= in-bottom:12pt; text-align:center; line-height:108%; font-size:12pt"><span = style=3D"font-family:'Times New Roman'; font-weight:bold">Tabla 2</span></p= ><p style=3D"margin-bottom:12pt; text-align:center; line-height:108%; font-= size:12pt"><span style=3D"font-family:'Times New Roman'; font-style:italic"= >Comparaci=C3=B3n de resultados pretest =E2=80=93 post test</span><span sty= le=3D"font-family:'Times New Roman'; font-style:italic"> </span></p><t= able style=3D"margin-bottom:0pt; padding:0pt; border-collapse:collapse"><tr= style=3D"height:13.5pt"><td style=3D"width:48.9pt; border-top:0.75pt solid= #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom= :12pt; text-align:justify; line-height:normal; font-size:10pt"><span style= =3D"font-family:'Times New Roman'"> </span><span style=3D"font-family:= 'Times New Roman'"> </span></p></td><td style=3D"width:56.8pt; border-= top:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style= =3D"margin-bottom:12pt; text-align:justify; line-height:normal; font-size:1= 0pt"><span style=3D"font-family:'Times New Roman'">Grupo</span><span style= =3D"font-family:'Times New Roman'"> </span></p></td><td style=3D"width= :43.55pt; border-top:0.75pt solid #000000; padding:0pt 5.25pt; vertical-ali= gn:top"><p style=3D"margin-bottom:12pt; text-align:justify; line-height:nor= mal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">N</span>= <span style=3D"font-family:'Times New Roman'"> </span></p></td><td sty= le=3D"width:48.25pt; border-top:0.75pt solid #000000; padding:0pt 5.25pt; v= ertical-align:top"><p style=3D"margin-bottom:12pt; text-align:justify; line= -height:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman= '">Media</span><span style=3D"font-family:'Times New Roman'"> </span><= /p></td><td style=3D"width:53.35pt; border-top:0.75pt solid #000000; paddin= g:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:12pt; text-alig= n:justify; line-height:normal; font-size:10pt"><span style=3D"font-family:'= Times New Roman'">Desviaci=C3=B3n est=C3=A1ndar</span></p></td><td style=3D= "width:50.25pt; border-top:0.75pt solid #000000; padding:0pt 5.25pt; vertic= al-align:top"><p style=3D"margin-bottom:12pt; text-align:justify; line-heig= ht:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">M= =C3=ADnimo</span><span style=3D"font-family:'Times New Roman'"> </span= ></p></td><td style=3D"width:50.6pt; border-top:0.75pt solid #000000; paddi= ng:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:12pt; text-ali= gn:justify; line-height:normal; font-size:10pt"><span style=3D"font-family:= 'Times New Roman'">M=C3=A1ximo</span><span style=3D"font-family:'Times New = Roman'"> </span></p></td></tr><tr style=3D"height:12.75pt"><td rowspan= =3D"2" style=3D"width:48.9pt; border-top:0.75pt solid #000000; border-botto= m:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D= "margin-bottom:12pt; text-align:justify; line-height:normal; font-size:10pt= "><span style=3D"font-family:'Times New Roman'">Prueba Pretest</span><span = style=3D"font-family:'Times New Roman'"> </span></p></td><td style=3D"= width:56.8pt; border-top:0.75pt solid #000000; border-bottom:0.75pt solid #= 000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:1= 2pt; text-align:justify; line-height:normal; font-size:10pt"><span style=3D= "font-family:'Times New Roman'">Grupo Control</span><span style=3D"font-fam= ily:'Times New Roman'"> </span></p></td><td style=3D"width:43.55pt; bo= rder-top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; padding:= 0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:12pt; text-align:= justify; line-height:normal; font-size:10pt"><span style=3D"font-family:'Ti= mes New Roman'">26</span><span style=3D"font-family:'Times New Roman'"> = 0;</span></p></td><td style=3D"width:48.25pt; border-top:0.75pt solid #0000= 00; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:= top"><p style=3D"margin-bottom:12pt; text-align:justify; line-height:normal= ; font-size:10pt"><span style=3D"font-family:'Times New Roman'">7.33</span>= <span style=3D"font-family:'Times New Roman'"> </span></p></td><td sty= le=3D"width:53.35pt; border-top:0.75pt solid #000000; border-bottom:0.75pt = solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-b= ottom:12pt; text-align:justify; line-height:normal; font-size:10pt"><span s= tyle=3D"font-family:'Times New Roman'">1.170</span><span style=3D"font-fami= ly:'Times New Roman'"> </span></p></td><td style=3D"width:50.25pt; bor= der-top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; padding:0= pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:12pt; text-align:j= ustify; line-height:normal; font-size:10pt"><span style=3D"font-family:'Tim= es New Roman'">5.00</span><span style=3D"font-family:'Times New Roman'">&#x= a0;</span></p></td><td style=3D"width:50.6pt; border-top:0.75pt solid #0000= 00; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:= top"><p style=3D"margin-bottom:12pt; text-align:justify; line-height:normal= ; font-size:10pt"><span style=3D"font-family:'Times New Roman'">9.00</span>= <span style=3D"font-family:'Times New Roman'"> </span></p></td></tr><t= r style=3D"height:12.75pt"><td style=3D"width:56.8pt; border-top:0.75pt sol= id #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertica= l-align:top"><p style=3D"margin-bottom:12pt; text-align:justify; line-heigh= t:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">Gru= po Experimental</span><span style=3D"font-family:'Times New Roman'"> <= /span></p></td><td style=3D"width:43.55pt; border-top:0.75pt solid #000000;= border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top= "><p style=3D"margin-bottom:12pt; text-align:justify; line-height:normal; f= ont-size:10pt"><span style=3D"font-family:'Times New Roman'">28</span><span= style=3D"font-family:'Times New Roman'"> </span></p></td><td style=3D= "width:48.25pt; border-top:0.75pt solid #000000; border-bottom:0.75pt solid= #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom= :12pt; text-align:justify; line-height:normal; font-size:10pt"><span style= =3D"font-family:'Times New Roman'">7.46</span><span style=3D"font-family:'T= imes New Roman'"> </span></p></td><td style=3D"width:53.35pt; border-t= op:0.75pt solid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.= 25pt; vertical-align:top"><p style=3D"margin-bottom:12pt; text-align:justif= y; line-height:normal; font-size:10pt"><span style=3D"font-family:'Times Ne= w Roman'">1.138</span><span style=3D"font-family:'Times New Roman'"> <= /span></p></td><td style=3D"width:50.25pt; border-top:0.75pt solid #000000;= border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top= "><p style=3D"margin-bottom:12pt; text-align:justify; line-height:normal; f= ont-size:10pt"><span style=3D"font-family:'Times New Roman'">5.00</span><sp= an style=3D"font-family:'Times New Roman'"> </span></p></td><td style= =3D"width:50.6pt; border-top:0.75pt solid #000000; border-bottom:0.75pt sol= id #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bott= om:12pt; text-align:justify; line-height:normal; font-size:10pt"><span styl= e=3D"font-family:'Times New Roman'">9.50</span><span style=3D"font-family:'= Times New Roman'"> </span></p></td></tr><tr style=3D"height:12.75pt"><= td rowspan=3D"2" style=3D"width:48.9pt; border-top:0.75pt solid #000000; bo= rder-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><= p style=3D"margin-bottom:12pt; text-align:justify; line-height:normal; font= -size:10pt"><span style=3D"font-family:'Times New Roman'">Prueba Post test<= /span><span style=3D"font-family:'Times New Roman'"> </span></p></td><= td style=3D"width:56.8pt; border-top:0.75pt solid #000000; border-bottom:0.= 75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"mar= gin-bottom:12pt; text-align:justify; line-height:normal; font-size:10pt"><s= pan style=3D"font-family:'Times New Roman'">Grupo Control</span><span style= =3D"font-family:'Times New Roman'"> </span></p></td><td style=3D"width= :43.55pt; border-top:0.75pt solid #000000; border-bottom:0.75pt solid #0000= 00; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:12pt;= text-align:justify; line-height:normal; font-size:10pt"><span style=3D"fon= t-family:'Times New Roman'">26</span><span style=3D"font-family:'Times New = Roman'"> </span></p></td><td style=3D"width:48.25pt; border-top:0.75pt= solid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; ver= tical-align:top"><p style=3D"margin-bottom:12pt; text-align:justify; line-h= eight:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'"= >8.13</span><span style=3D"font-family:'Times New Roman'"> </span></p>= </td><td style=3D"width:53.35pt; border-top:0.75pt solid #000000; border-bo= ttom:0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style= =3D"margin-bottom:12pt; text-align:justify; line-height:normal; font-size:1= 0pt"><span style=3D"font-family:'Times New Roman'">0.782</span><span style= =3D"font-family:'Times New Roman'"> </span></p></td><td style=3D"width= :50.25pt; border-top:0.75pt solid #000000; border-bottom:0.75pt solid #0000= 00; padding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:12pt;= text-align:justify; line-height:normal; font-size:10pt"><span style=3D"fon= t-family:'Times New Roman'">7.00</span><span style=3D"font-family:'Times Ne= w Roman'"> </span></p></td><td style=3D"width:50.6pt; border-top:0.75p= t solid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; ve= rtical-align:top"><p style=3D"margin-bottom:12pt; text-align:justify; line-= height:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'= ">9.50</span><span style=3D"font-family:'Times New Roman'"> </span></p= ></td></tr><tr style=3D"height:12.75pt"><td style=3D"width:56.8pt; border-t= op:0.75pt solid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.= 25pt; vertical-align:top"><p style=3D"margin-bottom:12pt; text-align:justif= y; line-height:normal; font-size:10pt"><span style=3D"font-family:'Times Ne= w Roman'">Grupo Experimental</span><span style=3D"font-family:'Times New Ro= man'"> </span></p></td><td style=3D"width:43.55pt; border-top:0.75pt s= olid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; verti= cal-align:top"><p style=3D"margin-bottom:12pt; text-align:justify; line-hei= ght:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">2= 8</span><span style=3D"font-family:'Times New Roman'"> </span></p></td= ><td style=3D"width:48.25pt; border-top:0.75pt solid #000000; border-bottom= :0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"= margin-bottom:12pt; text-align:justify; line-height:normal; font-size:10pt"= ><span style=3D"font-family:'Times New Roman'">9.14</span><span style=3D"fo= nt-family:'Times New Roman'"> </span></p></td><td style=3D"width:53.35= pt; border-top:0.75pt solid #000000; border-bottom:0.75pt solid #000000; pa= dding:0pt 5.25pt; vertical-align:top"><p style=3D"margin-bottom:12pt; text-= align:justify; line-height:normal; font-size:10pt"><span style=3D"font-fami= ly:'Times New Roman'">0.665</span><span style=3D"font-family:'Times New Rom= an'"> </span></p></td><td style=3D"width:50.25pt; border-top:0.75pt so= lid #000000; border-bottom:0.75pt solid #000000; padding:0pt 5.25pt; vertic= al-align:top"><p style=3D"margin-bottom:12pt; text-align:justify; line-heig= ht:normal; font-size:10pt"><span style=3D"font-family:'Times New Roman'">8.= 00</span><span style=3D"font-family:'Times New Roman'"> </span></p></t= d><td style=3D"width:50.6pt; border-top:0.75pt solid #000000; border-bottom= :0.75pt solid #000000; padding:0pt 5.25pt; vertical-align:top"><p style=3D"= margin-bottom:12pt; text-align:justify; line-height:normal; font-size:10pt"= ><span style=3D"font-family:'Times New Roman'">10.00</span><span style=3D"f= ont-family:'Times New Roman'"> </span></p></td></tr></table><p style= =3D"margin-bottom:12pt; line-height:108%; font-size:12pt"><span style=3D"fo= nt-family:'Times New Roman'"> </span></p><p style=3D"margin-bottom:12p= t; text-align:justify; line-height:108%; font-size:12pt"><span style=3D"fon= t-family:'Times New Roman'">Los resultados como se muestra en la </span><sp= an style=3D"font-family:'Times New Roman'; font-weight:bold">Tabla 2</span>= <span style=3D"font-family:'Times New Roman'">, ambos grupos mejoraron sign= ificativamente su desempe=C3=B1o acad=C3=A9mico en la prueba post test en c= omparaci=C3=B3n con el pretest, reflejando avances en la comprensi=C3=B3n d= el tema movimiento de la materia de f=C3=ADsica. Antes de la intervenci=C3= =B3n pedag=C3=B3gica, los promedios de calificaci=C3=B3n del pretest reflej= aban un nivel de comprensi=C3=B3n similar entre ambos grupos, con ligeras v= ariaciones que no resultaban estad=C3=ADsticamente relevantes. Sin embargo,= la mejora fue mayor en el grupo experimental, que utiliz=C3=B3 simuladores= digitales, con un incremento promedio de 1.68 puntos sobre la prueba inici= al, mientras que el grupo control, siguiendo la metodolog=C3=ADa tradiciona= l, mostr=C3=B3 un aumento de 0.80 puntos.</span><span style=3D"font-family:= 'Times New Roman'"> </span></p><p style=3D"margin-bottom:12pt; text-al= ign:justify; line-height:108%; font-size:12pt"><span style=3D"font-family:'= Times New Roman'">Dicha mejora se atribuye a la posibilidad que brindan los= simuladores digitales de experimentar con variables din=C3=A1micas y visua= lizar fen=C3=B3menos f=C3=ADsicos en tiempo real, promoviendo un aprendizaj= e activo y significativo que supera las limitaciones del m=C3=A9todo exposi= tivo tradicional. Adem=C3=A1s, el entorno interactivo facilit=C3=B3 la moti= vaci=C3=B3n, reflexi=C3=B3n y participaci=C3=B3n colaborativa.</span></p><p= style=3D"margin-bottom:12pt; text-align:justify; line-height:108%; font-si= ze:12pt"><span style=3D"font-family:'Times New Roman'">Estos hallazgos cons= olidan la hip=C3=B3tesis de que el uso de los simuladores digitales en la c= omprensi=C3=B3n del tema de Movimiento, entonces se contribuye a perfeccion= ar el proceso de ense=C3=B1anza-aprendizaje de la asignatura de f=C3=ADsica= del primer a=C3=B1o del bachillerato general unificado.</span></p><ol star= t=3D"4" style=3D"margin:0pt; padding-left:0pt"><li class=3D"Normal0" style= =3D"margin-left:32pt; line-height:108%; padding-left:4pt; font-family:'Time= s New Roman'; font-size:12pt; font-weight:bold; color:#767171"><span>Discus= i=C3=B3n </span></li></ol><p class=3D"Normal0" style=3D"text-align:justify;= line-height:108%; font-size:12pt"><span style=3D"font-family:'Times New Ro= man'">Los resultados de esta investigaci=C3=B3n evidencian que la incorpora= ci=C3=B3n de simuladores digitales en el proceso de ense=C3=B1anza-aprendiz= aje del tema movimiento en f=C3=ADsica genera un impacto significativo en l= a comprensi=C3=B3n conceptual y desempe=C3=B1o acad=C3=A9mico de los estudi= antes de bachillerato. Esta afirmaci=C3=B3n se sustenta en el an=C3=A1lisis= cuantitativo de las pruebas pretest y post test, que muestran mejoras esta= d=C3=ADsticamente significativas en el grupo experimental que utiliz=C3=B3 = estas herramientas tecnol=C3=B3gicas, en comparaci=C3=B3n con el grupo cont= rol que sigui=C3=B3 la metodolog=C3=ADa tradicional. </span></p><p class=3D= "Normal0" style=3D"text-align:justify; line-height:108%; font-size:12pt"><s= pan style=3D"font-family:'Times New Roman'">Estos hallazgos coinciden con m= =C3=BAltiples estudios previos que destacan el potencial de los simuladores= digitales para facilitar el aprendizaje significativo a trav=C3=A9s de exp= eriencias visuales, interactivas y experimentales que superan la abstracci= =C3=B3n propia de los conceptos f=C3=ADsicos (</span><span style=3D"font-fa= mily:'Times New Roman'; background-color:#ffff00">Imbert</span><span style= =3D"font-family:'Times New Roman'">, 2022; </span><span style=3D"font-famil= y:'Times New Roman'; background-color:#ffff00">Ch=C3=A1vez</span><span styl= e=3D"font-family:'Times New Roman'"> & Mestres, 2023). </span></p><p cl= ass=3D"Normal0" style=3D"text-align:justify; line-height:108%; font-size:12= pt"><span style=3D"font-family:'Times New Roman'">El incremento del rendimi= ento en el grupo experimental tambi=C3=A9n concuerda con lo expuesto por </= span><span style=3D"font-family:'Times New Roman'; background-color:#ffff00= ">Cumbal</span><span style=3D"font-family:'Times New Roman'"> (2020) y </sp= an><span style=3D"font-family:'Times New Roman'; background-color:#ffff00">= Rosales</span><span style=3D"font-family:'Times New Roman'"> et al. (2023) = quienes sostienen que las experiencias interactivas potencian la comprensi= =C3=B3n conceptual y la motivaci=C3=B3n de los estudiantes, al vincular la = teor=C3=ADa con la pr=C3=A1ctica de manera visual y din=C3=A1mica. En contr= aste, el grupo de control mostr=C3=B3 mejoras limitadas, lo cual refleja la= s limitaciones del enfoque tradicional en la ense=C3=B1anza de la f=C3=ADsi= ca, tal como lo advierten </span><span style=3D"font-family:'Times New Roma= n'; background-color:#ffff00">Cabrera</span><span style=3D"font-family:'Tim= es New Roman'"> & Carri=C3=B3n (2023) quienes sostienen que la ense=C3= =B1anza de la F=C3=ADsica en el sistema educativo ecuatoriano a=C3=BAn enfr= enta dificultades metodol=C3=B3gicas que limitan la comprensi=C3=B3n concep= tual, especialmente cuando se mantiene un enfoque centrado en la transmisi= =C3=B3n de contenidos. </span></p><p class=3D"Normal0" style=3D"text-align:= justify; line-height:108%; font-size:12pt"><span style=3D"font-family:'Time= s New Roman'">Desde una perspectiva metodol=C3=B3gica, el uso de Jamovi (</= span><span style=3D"font-family:'Times New Roman'; background-color:#ffff00= ">The Jamovi project</span><span style=3D"font-family:'Times New Roman'">, = 2024) ,garantiz=C3=B3 el rigor estad=C3=ADstico del an=C3=A1lisis, en conco= rdancia con los planteamientos de </span><span style=3D"font-family:'Times = New Roman'; background-color:#ffff00">Arredondo</span><span style=3D"font-f= amily:'Times New Roman'"> et al. (2020) quienes afirman que el rigor en el = an=C3=A1lisis de datos constituye un componente esencial de la investigaci= =C3=B3n cient=C3=ADfica educativa, pues posibilita interpretar los hallazgo= s con base en evidencias cuantitativas verificables. A nivel pedag=C3=B3gic= o, los resultados se alinean con lo establecido en la </span><span style=3D= "font-family:'Times New Roman'; text-decoration:underline">Ley Org=C3=A1nic= a de Educaci=C3=B3n Intercultural </span><span style=3D"font-family:'Times = New Roman'">(</span><span style=3D"font-family:'Times New Roman'; backgroun= d-color:#ffff00">Presidencia de la Rep=C3=BAblica del Ecuador, 2011)</span>= <span style=3D"font-family:'Times New Roman'"> y el curr=C3=ADculo del bach= illerato general unificado (</span><span style=3D"font-family:'Times New Ro= man'; background-color:#ffff00">Ministerio de Educaci=C3=B3n</span><span st= yle=3D"font-family:'Times New Roman'">, 2021), que promueven la integraci= =C3=B3n de recursos tecnol=C3=B3gicos para mejorar la calidad educativa. </= span></p><p class=3D"Normal0" style=3D"text-align:justify; line-height:108%= ; font-size:12pt"><span style=3D"font-family:'Times New Roman'">Cabe se=C3= =B1alar ciertas limitaciones de la investigaci=C3=B3n, tales como el tama= =C3=B1o reducido de la muestra y la duraci=C3=B3n limitada de la intervenci= =C3=B3n pedag=C3=B3gica, podr=C3=ADan afectar la generalizaci=C3=B3n de los= resultados. Futuras investigaciones podr=C3=ADan ampliar el espectro de ap= licaci=C3=B3n y explorar la integraci=C3=B3n de simuladores con otras metod= olog=C3=ADas activas para maximizar los beneficios. </span></p><p class=3D"= Normal0" style=3D"text-align:justify; line-height:108%; font-size:12pt"><sp= an style=3D"font-family:'Times New Roman'">En resumen, esta investigaci=C3= =B3n aporta evidencia emp=C3=ADrica que respalda el aprovechamiento de recu= rsos digitales interactivos en la ense=C3=B1anza de la F=C3=ADsica, contrib= uyendo al desarrollo de estrategias pedag=C3=B3gicas innovadoras que respon= dan a las necesidades educativas contempor=C3=A1neas y fomenten un aprendiz= aje m=C3=A1s significativo y motivado.</span></p><ol start=3D"5" style=3D"m= argin:0pt; padding-left:0pt"><li class=3D"Normal0" style=3D"margin-left:32p= t; margin-bottom:0pt; line-height:108%; padding-left:4pt; font-family:'Time= s New Roman'; font-size:12pt; font-weight:bold; color:#767171"><span>Conclu= siones</span></li></ol><p class=3D"Normal0" style=3D"margin-bottom:0pt; tex= t-indent:36pt; text-align:justify; line-height:normal"><span style=3D"font-= family:'Times New Roman'"> </span></p><p class=3D"Normal0" style=3D"ma= rgin-bottom:0pt; text-align:justify; line-height:normal; font-size:12pt"><s= pan style=3D"font-family:'Times New Roman'">El uso de simuladores digitales= tiene un impacto positivo y significativo en la comprensi=C3=B3n del tema = de Movimiento en la asignatura de f=C3=ADsica en estudiantes de primer a=C3= =B1o de bachillerato general unificado de la </span><span style=3D"font-fam= ily:'Times New Roman'; text-decoration:underline">Unidad Educativa =E2=80= =9CManuel C=C3=B3rdova Galarza</span><span style=3D"font-family:'Times New = Roman'">=E2=80=9D. </span></p><p class=3D"Normal0" style=3D"margin-bottom:0= pt; text-indent:36pt; text-align:justify; line-height:normal; font-size:12p= t"><span style=3D"font-family:'Times New Roman'"> </span></p><p class= =3D"Normal0" style=3D"margin-bottom:0pt; text-align:justify; line-height:no= rmal; font-size:12pt"><span style=3D"font-family:'Times New Roman'">Se evid= enci=C3=B3 que los m=C3=A9todos tradicionales de ense=C3=B1anza presentan l= imitaciones para favorecer la comprensi=C3=B3n de conceptos y la uni=C3=B3n= entre teor=C3=ADa y pr=C3=A1ctica, lo que se refleja en el desempe=C3=B1o = obtenido en la prueba diagn=C3=B3stica. Ante lo cual, la integraci=C3=B3n d= e simuladores digitales como parte del trabajo experimental constituy=C3=B3= una estrategia eficaz para fortalecer la comprensi=C3=B3n conceptual del t= ema de movimiento. </span></p><p class=3D"Normal0" style=3D"margin-bottom:0= pt; text-indent:36pt; text-align:justify; line-height:normal; font-size:12p= t"><span style=3D"font-family:'Times New Roman'"> </span></p><p class= =3D"Normal0" style=3D"margin-bottom:0pt; text-align:justify; line-height:no= rmal; font-size:12pt"><span style=3D"font-family:'Times New Roman'">Los res= ultados del pretest y post test demostraron una mejora significativa en el = rendimiento acad=C3=A9mico del grupo experimental frente al grupo de contro= l. Asimismo, se observ=C3=B3 una mayor motivaci=C3=B3n, participaci=C3=B3n = y pensamiento cr=C3=ADtico durante el desarrollo de actividades virtuales i= nteractivas. </span></p><p class=3D"Normal0" style=3D"margin-bottom:0pt; te= xt-indent:36pt; text-align:justify; line-height:normal; font-size:12pt"><sp= an style=3D"font-family:'Times New Roman'"> </span></p><p class=3D"Nor= mal0" style=3D"margin-bottom:0pt; text-align:justify; line-height:normal; f= ont-size:12pt"><span style=3D"font-family:'Times New Roman'">De esta forma,= se valida la hip=C3=B3tesis planteada afirmando que, si se determina el im= pacto del uso de los simuladores digitales en la comprensi=C3=B3n del tema = de movimiento, entonces se contribuye a perfeccionar el proceso de ense=C3= =B1anza-aprendizaje de la asignatura de f=C3=ADsica del primer a=C3=B1o del= bachillerato general unificado. </span></p><p class=3D"Normal0" style=3D"m= argin-bottom:0pt; text-indent:36pt; text-align:justify; line-height:normal;= font-size:12pt"><span style=3D"font-family:'Times New Roman'"> </span= ></p><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:justify; l= ine-height:normal; font-size:12pt"><span style=3D"font-family:'Times New Ro= man'">Finalmente, se enfatiza la importancia de que el docente planifique a= ctividades guiadas y alineadas a los objetivos de aprendizaje, ya que el po= tencial formativo de los simuladores depende de su adecuada integraci=C3=B3= n did=C3=A1ctica. El estudio refuerza la recomendaci=C3=B3n de continuar im= pulsando el uso de tecnolog=C3=ADas educativas en la ense=C3=B1anza de las = ciencias, con el prop=C3=B3sito de consolidar aprendizajes significativos y= formar estudiantes con mayor autonom=C3=ADa y competencia cient=C3=ADfica.= </span></p><p class=3D"Normal0" style=3D"margin-bottom:0pt; text-align:just= ify; line-height:normal; font-size:12pt"><span style=3D"font-family:'Times = New Roman'"> </span></p><ol start=3D"6" style=3D"margin:0pt; padding-l= eft:0pt"><li class=3D"Normal0" style=3D"margin-left:32pt; text-align:justif= y; line-height:115%; padding-left:4pt; font-family:'Times New Roman'; font-= size:12pt; font-weight:bold; color:#767171"><span>Conflicto de intereses</s= pan></li></ol><p class=3D"Normal0" style=3D"text-align:justify; line-height= :115%; font-size:12pt"><span style=3D"font-family:'Times New Roman'">Los au= tores declaran que no existe conflicto de intereses en relaci=C3=B3n con el= art=C3=ADculo presentado.</span></p><ol start=3D"7" style=3D"margin:0pt; p= adding-left:0pt"><li class=3D"Normal0" style=3D"margin-left:32pt; text-alig= n:justify; line-height:115%; padding-left:4pt; font-family:'Times New Roman= '; font-size:12pt; font-weight:bold; color:#767171"><span>Declaraci=C3=B3n = de contribuci=C3=B3n de los autores</span></li></ol><p class=3D"Normal0" st= yle=3D"text-align:justify; line-height:115%; font-size:12pt"><span style=3D= "font-family:'Times New Roman'">Todos autores contribuyeron significativame= nte en la elaboraci=C3=B3n del art=C3=ADculo.</span></p><ol start=3D"8" sty= le=3D"margin:0pt; padding-left:0pt"><li class=3D"Normal0" style=3D"margin-l= eft:32pt; text-align:justify; line-height:115%; padding-left:4pt; font-fami= ly:'Times New Roman'; font-size:12pt; font-weight:bold; color:#767171"><spa= n>Costos de financiamiento</span><span style=3D"color:#000000"> </span></li= ></ol><p class=3D"Normal0" style=3D"text-align:justify; line-height:115%; f= ont-size:12pt"><span style=3D"font-family:'Times New Roman'">La presente in= vestigaci=C3=B3n fue financiada en su totalidad con fondos propios de los a= utores.</span></p><ol start=3D"9" style=3D"margin:0pt; padding-left:0pt"><l= i class=3D"Normal0" style=3D"margin-left:32pt; margin-bottom:0pt; text-alig= n:justify; line-height:108%; padding-left:4pt; font-family:'Times New Roman= '; font-size:12pt; font-weight:bold; color:#767171"><span>Referencias Bibli= ogr=C3=A1ficas</span></li></ol><p class=3D"Normal0" style=3D"margin-left:36= pt; margin-bottom:0pt; text-align:justify; line-height:108%; font-size:12pt= "><span style=3D"font-family:'Times New Roman'"> </span></p><p class= =3D"Normal0" style=3D"margin-left:18pt; margin-bottom:0pt; text-indent:-18p= t; line-height:normal; font-size:12pt"><span style=3D"font-family:'Times Ne= w Roman'">Arredondo Dom=C3=ADnguez, E. R., G=C3=B3mez C=C3=A1rdenas, R. E.,= Lalama Flores, R. V., & Ch=C3=B3ez Ch=C3=B3ez, L. O. (2020). Investiga= ci=C3=B3n cient=C3=ADfica y estad=C3=ADstica para el an=C3=A1lisis de datos= . </span><span style=3D"font-family:'Times New Roman'; font-style:italic">R= evista Dilemas Contempor=C3=A1neos: Educaci=C3=B3n, Pol=C3=ADtica y Valores= </span><span style=3D"font-family:'Times New Roman'">, 8(1). </span><a href= =3D"https://www.researchgate.net/publication/345923673_Investigacion_cienti= fica_y_estadistica_para_el_analisis_de_datos" style=3D"text-decoration:none= "><span class=3D"Hyperlink" style=3D"font-family:'Times New Roman'">https:/= /www.researchgate.net/publication/345923673_Investigacion_cientifica_y_esta= distica_para_el_analisis_de_datos</span></a><span style=3D"font-family:'Tim= es New Roman'">  </span></p><p class=3D"Normal0" style=3D"margin-left:= 18pt; margin-bottom:0pt; text-indent:-18pt; line-height:normal; font-size:1= 2pt"><span style=3D"font-family:'Times New Roman'">Cabrera Tituana, R., &am= p; Carri=C3=B3n Herrera, A. (2023). Desempe=C3=B1o en f=C3=ADsica de estudi= antes de bachillerato general unificado en Ecuador: Ser bachiller, 2020-202= 2. </span><span style=3D"font-family:'Times New Roman'; font-style:italic">= Revista Educaci=C3=B3n, Arte y Comunicaci=C3=B3n</span><span style=3D"font-= family:'Times New Roman'">, 12(2), 62=E2=80=9376. </span><a href=3D"https:/= /www.researchgate.net/publication/376664721_Desempeno_en_Fisica_de_estudian= tes_%20de_bachillerato_en_Ecuador_Ser_bachiller_2020-2022" style=3D"text-de= coration:none"><span class=3D"Hyperlink" style=3D"font-family:'Times New Ro= man'">https://www.researchgate.net/publication/376664721_Desempeno_en_Fisic= a_de_estudiantes_ de_bachillerato_en_Ecuador_Ser_bachiller_2020-2022</span>= </a><span style=3D"font-family:'Times New Roman'"> </span></p><p class=3D"N= ormal0" style=3D"margin-left:18pt; margin-bottom:0pt; text-indent:-18pt; li= ne-height:normal; font-size:12pt"><span style=3D"font-family:'Times New Rom= an'">Ch=C3=A1vez Farf=C3=A1n, J. G., & Mestres G=C3=B3mez, U. (2023). S= imuladores Phet: como herramienta did=C3=A1ctica para la ense=C3=B1anza y a= prendizaje experimental de f=C3=ADsica. </span><span style=3D"font-family:'= Times New Roman'; font-style:italic">Polo del Conocimiento</span><span styl= e=3D"font-family:'Times New Roman'">, 8(11), 1303=E2=80=931322. </span><a h= ref=3D"https://dialnet.unirioja.es/descarga/articulo/9254999.pdf" style=3D"= text-decoration:none"><span class=3D"Hyperlink" style=3D"font-family:'Times= New Roman'">https://dialnet.unirioja.es/descarga/articulo/9254999.pdf</spa= n></a><span style=3D"font-family:'Times New Roman'">  </span></p><p cl= ass=3D"Normal0" style=3D"margin-left:18pt; margin-bottom:0pt; text-indent:-= 18pt; line-height:normal; font-size:12pt"><span style=3D"font-family:'Times= New Roman'">Cumbal, P. (2020). </span><span style=3D"font-family:'Times Ne= w Roman'; font-style:italic">Gu=C3=ADa did=C3=A1ctica para la utilizaci=C3= =B3n de simuladores virtuales como recurso did=C3=A1ctico para fortalecer e= l aprendizaje de f=C3=ADsica en los estudiantes de octavo semestre de la ca= rrera de pedagog=C3=ADa de las ciencias experimentales matem=C3=A1tica y f= =C3=ADsica de la Universidad Central del Ecuador en el periodo 2020-2020</s= pan><span style=3D"font-family:'Times New Roman'"> [Tesis de pregrado, Univ= ersidad Central del Ecuador, Quito Ecuador]. </span><a href=3D"https://www.= dspace.uce.edu.ec/entities/publication/ee4451d0-9487-4633-97ca-3728a3b764a6= " style=3D"text-decoration:none"><span class=3D"Hyperlink" style=3D"font-fa= mily:'Times New Roman'">https://www.dspace.uce.edu.ec/entities/publication/= ee4451d0-9487-4633-97ca-3728a3b764a6</span></a><span style=3D"font-family:'= Times New Roman'"> </span></p><p class=3D"Normal0" style=3D"margin-left:18p= t; margin-bottom:0pt; text-indent:-18pt; line-height:normal; font-size:12pt= "><span style=3D"font-family:'Times New Roman'">Gonz=C3=A1lez N=C3=A1poles,= R. R., Ram=C3=ADrez Gonz=C3=A1lez, J. A., & Valc=C3=A1rcel Izquierdo, = N. (2022). Procedimiento did=C3=A1ctico para la comprensi=C3=B3n de la form= ulaci=C3=B3n de problemas en la F=C3=ADsica del preuniversitario. </span><s= pan style=3D"font-family:'Times New Roman'; font-style:italic">Revista Dida= sc@lia: Did=C3=A1ctica y Educaci=C3=B3n</span><span style=3D"font-family:'T= imes New Roman'">, 13(5), 335=E2=80=93362.</span><span style=3D"font-family= :'Times New Roman'">  </span><a href=3D"https://share.google/UendcZEee= Ce9zM60j" style=3D"text-decoration:none"><span class=3D"Hyperlink" style=3D= "font-family:'Times New Roman'">https://share.google/UendcZEeeCe9zM60j</spa= n></a><span style=3D"font-family:'Times New Roman'"> </span></p><p class=3D= "Normal0" style=3D"margin-left:18pt; margin-bottom:0pt; text-indent:-18pt; = line-height:normal; font-size:12pt"><span style=3D"font-family:'Times New R= oman'">Hern=C3=A1ndez Sampieri, R., & Mendoza Torres, C. P. (2018). </s= pan><span style=3D"font-family:'Times New Roman'; font-style:italic">Metodo= log=C3=ADa de la investigaci=C3=B3n: las rutas cuantitativa, cualitativa y = mixta</span><span style=3D"font-family:'Times New Roman'"> (1.=C2=AA ed.). = McGraw-Hill Education. </span><a href=3D"http://www.biblioteca.cij.gob.mx/a= rchivos/materiales_de_consulta/drogas_de_abuso/articulos/sampierilasrutas.p= df" style=3D"text-decoration:none"><span class=3D"Hyperlink" style=3D"font-= family:'Times New Roman'">http://www.biblioteca.cij.gob.mx/archivos/materia= les_de_consulta/drogas_de_abuso/articulos/sampierilasrutas.pdf</span></a><s= pan style=3D"font-family:'Times New Roman'"> </span></p><p class=3D"Normal0= " style=3D"margin-left:18pt; margin-bottom:0pt; text-indent:-18pt; line-hei= ght:normal; font-size:12pt"><span style=3D"font-family:'Times New Roman'">I= mbert, F. E. (2022). Efecto de las simulaciones de fuerza y movimiento en e= l aprendizaje de la f=C3=ADsica b=C3=A1sica. </span><span style=3D"font-fam= ily:'Times New Roman'; font-style:italic">Revista Latinoamericana de Educac= i=C3=B3n en F=C3=ADsica</span><span style=3D"font-family:'Times New Roman'"= >, 16(1), 1312-1 - 1312-6 </span><a href=3D"http://www.lajpe.org/mar22/16_1= _12.pdf" style=3D"text-decoration:none"><span class=3D"Hyperlink" style=3D"= font-family:'Times New Roman'">http://www.lajpe.org/mar22/16_1_12.pdf</span= ></a><span style=3D"font-family:'Times New Roman'">  </span></p><p cla= ss=3D"Normal0" style=3D"margin-left:18pt; margin-bottom:0pt; text-indent:-1= 8pt; line-height:normal; font-size:12pt"><span style=3D"font-family:'Times = New Roman'">Intriago-Alava, C. I., C=C3=B3rdova-Navia, S. B., Guaigua-Guaig= ua, J. M., & Garcia-Hevia, S. (2024). Estrategia did=C3=A1ctica basada = en simuladores virtuales para fortalecer el aprendizaje de la f=C3=ADsica e= n el bachillerato general unificado. </span><span style=3D"font-family:'Tim= es New Roman'; font-style:italic">Revista Cient=C3=ADfica Multidisciplinari= a Arbitrada Yachasun</span><span style=3D"font-family:'Times New Roman'">, = 8(15), 1013-1043. </span><a href=3D"https://editorialibkn.com/index.php/Yac= hasun/article/view/558/922" style=3D"text-decoration:none"><span class=3D"H= yperlink" style=3D"font-family:'Times New Roman'">https://editorialibkn.com= /index.php/Yachasun/article/view/558/922</span></a><span style=3D"font-fami= ly:'Times New Roman'"> </span></p><p class=3D"Normal0" style=3D"margin-left= :18pt; margin-bottom:0pt; text-indent:-18pt; line-height:normal; font-size:= 12pt"><span style=3D"font-family:'Times New Roman'">Ministerio de Educaci= =C3=B3n del Ecuador. (2021). </span><span style=3D"font-family:'Times New R= oman'; font-style:italic">Curr=C3=ADculo Vigente</span><span style=3D"font-= family:'Times New Roman'">.</span><span style=3D"font-family:'Times New Rom= an'">  </span><a href=3D"https://educacion.gob.ec/curriculo-priorizado= /" style=3D"text-decoration:none"><span class=3D"Hyperlink" style=3D"font-f= amily:'Times New Roman'">https://educacion.gob.ec/curriculo-priorizado/</sp= an></a><span style=3D"font-family:'Times New Roman'"> </span></p><p class= =3D"Normal0" style=3D"margin-left:18pt; margin-bottom:0pt; text-indent:-18p= t; line-height:normal; font-size:12pt"><span style=3D"font-family:'Times Ne= w Roman'">Ministerio de Educaci=C3=B3n del Ecuador. (2025). </span><span st= yle=3D"font-family:'Times New Roman'; font-style:italic">Instructivo de eva= luaci=C3=B3n estudiantil</span><span style=3D"font-family:'Times New Roman'= ">.</span><span style=3D"font-family:'Times New Roman'">  </span><a hr= ef=3D"https://educacion.gob.ec/wp-content/uploads/downloads/2025/04/Instruc= tivo-de-Evaluacion-Estudiantil-2025.pdf" style=3D"text-decoration:none"><sp= an class=3D"Hyperlink" style=3D"font-family:'Times New Roman'">https://educ= acion.gob.ec/wp-content/uploads/downloads/2025/04/Instructivo-de-Evaluacion= -Estudiantil-2025.pdf</span></a><span style=3D"font-family:'Times New Roman= '"> </span></p><p class=3D"Normal0" style=3D"margin-left:18pt; margin-botto= m:0pt; text-indent:-18pt; line-height:normal; font-size:12pt"><span style= =3D"font-family:'Times New Roman'">Presidencia de la Rep=C3=BAblica del Ecu= ador. (2011).</span><span style=3D"font-family:'Times New Roman'; font-styl= e:italic"> Ley Org=C3=A1nica de Educaci=C3=B3n Intercultural (LOEI)</span><= span style=3D"font-family:'Times New Roman'">, Tipo norma: Ley, N=C3=BAmero= de Norma: 0, Fecha de publicaci=C3=B3n: 2011-03-31, Tipo publicaci=C3=B3n:= Registro Oficial Suplemento, Estado: Reformado N=C3=BAmero de publicaci=C3= =B3n: 417, Fecha de =C3=BAltima modificaci=C3=B3n: 2023-02-07. </span><a hr= ef=3D"https://www.educacionbilingue.gob.ec/wp-content/uploads/2023/03/LA-LE= Y-ORGANICA-DE-EDUCACION-INTERCULTURAL.pdf" style=3D"text-decoration:none"><= span class=3D"Hyperlink" style=3D"font-family:'Times New Roman'">https://ww= w.educacionbilingue.gob.ec/wp-content/uploads/2023/03/LA-LEY-ORGANICA-DE-ED= UCACION-INTERCULTURAL.pdf</span></a></p><p class=3D"Normal0" style=3D"margi= n-left:18pt; margin-bottom:0pt; text-indent:-18pt; line-height:normal; font= -size:12pt"><span style=3D"font-family:'Times New Roman'">Rosales Guam=C3= =A1n, A. V., Cuenca Cumbicos, K. M., Morocho Palacios, H. F., & Tapia P= eralta, S. R. (2023). El uso de simuladores en l=C3=ADnea para la ense=C3= =B1anza de la f=C3=ADsica: una herramienta educativa efectiva. </span><span= style=3D"font-family:'Times New Roman'; font-style:italic">Ciencia Latina = Revista Cient=C3=ADfica Multidisciplinaria</span><span style=3D"font-family= :'Times New Roman'">, 7(3), 1488-1496. </span><a href=3D"https://ciencialat= ina.org/index.php/cienciala/article/view/6291" style=3D"text-decoration:non= e"><span class=3D"Hyperlink" style=3D"font-family:'Times New Roman'">https:= //ciencialatina.org/index.php/cienciala/article/view/6291</span></a><span s= tyle=3D"font-family:'Times New Roman'">   </span></p><p class=3D"= Normal0" style=3D"margin-left:18pt; margin-bottom:0pt; text-indent:-18pt; l= ine-height:normal; font-size:12pt"><span style=3D"font-family:'Times New Ro= man'">The Jamovi project. (2024). </span><span style=3D"font-family:'Times = New Roman'; font-style:italic">Jamovi</span><span style=3D"font-family:'Tim= es New Roman'">. (Version 2.6) [Computer Software]. </span><a href=3D"https= ://www.jamovi.org" style=3D"text-decoration:none"><span class=3D"Hyperlink"= >https://www.jamovi.org</span></a><a id=3D"_heading_h.12x64omfipk4"></a><sp= an> </span></p><div style=3D"clear:both"><p class=3D"Normal0" style=3D"marg= in-bottom:0pt; line-height:normal; font-size:12pt"><span style=3D"height:0p= t; display:block; position:absolute; z-index:-65535"><img src=3D"data:image= /png;base64,iVBORw0KGgoAAAANSUhEUgAAAAEAAAADCAYAAABS3WWCAAAABHNCSVQICAgIfAh= kiAAAAAlwSFlzAAAOxAAADsQBlSsOGwAAAA9JREFUCJljYGBg+M8ABwALBAEA+haHDAAAAABJRU= 5ErkJggg=3D=3D" width=3D"1" height=3D"3" alt=3D"" style=3D"margin-top:-38.3= 8pt; margin-left:-63.38pt; position:absolute" /></span><span style=3D"color= :#ffffff">           = ;      </span><span style=3D"color:#ffffff">Nombre= </span><span style=3D"width:141.26pt; display:inline-block"> </span><s= pan style=3D"width:63.4pt; display:inline-block"> </span><span style= =3D"width:33.1pt; display:inline-block"> </span><span style=3D"width:3= 6pt; display:inline-block"> </span><span style=3D"color:#ffffff"> </sp= an><span style=3D"width:33.29pt; display:inline-block"> </span><span s= tyle=3D"color:#ffffff"> </span><span style=3D"color:#ffffff; background-col= or:#ffff00">1</span></p><p class=3D"Normal0" style=3D"margin-bottom:0pt; li= ne-height:normal"><span> </span></p></div></div></body></html>