Elaboración y aplicación de una secuencia didáctica para la enseñanza-aprendizaje de algunos fenómenos termodinámicos usando un enfoque CTSA

Tesis Materias > Educación Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Cerrado Español La presente investigación que se muestra es un aporte para el desarrollo de trabajo mediante un enfoque Ciencia, Tecnología, Sociedad y ambiente (CTSA), en el cual se relacionan aspectos como la elaboración de una secuencia didáctica y el análisis de una evaluación cuantitativa y cualitativa de respuestas. Las anteriores son obtenidas de los estudiantes de la institución educativa Paula Montal en Itagüí Antioquia- Colombia, sobre cuestiones controversiales de la ciencia y tecnología, las cuales se articularon con contenidos del área de física de ciencias naturales para el grado once.Dicho enfoque se aplicó apoyado en los conceptos de algunos fenómenos termodinámicos, los cuales se organizaron en una secuencia didáctica que contenía preguntas y situaciones controversiales, experimentos demostrativos, discusiones mediante foros de noticias controversiales y un juego de roles con el fin de desarrollar habilidades CTSA en los estudiantes como la capacidad de argumentar y de tomar decisiones.La aplicación de la secuencia fue pertinente porque los estudiantes se motivaron a conocer los fenómenos termodinámicos de una forma menos abstracta, así como sus implicaciones para la sociedad y el medio ambiente. Además, lograron desarrollar habilidades de argumentación, reflexión, postura crítica y visión holística que tienen gran importancia a la hora de tomar una decisión sobre aspectos tecno-científicos pertinentes a la actualidad y al contexto que los rodea. Sin embargo, la mayoría de ellos siguen teniendo dificultades para discutir argumentos referentes a la educación al momento de relacionarlos con alguna situación controversial. metadata Bautista Medina, Cristhian Mauricio mail cristhianmbm@gmail.com (2022) Elaboración y aplicación de una secuencia didáctica para la enseñanza-aprendizaje de algunos fenómenos termodinámicos usando un enfoque CTSA. Masters thesis, SIN ESPECIFICAR.

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Resumen

La presente investigación que se muestra es un aporte para el desarrollo de trabajo mediante un enfoque Ciencia, Tecnología, Sociedad y ambiente (CTSA), en el cual se relacionan aspectos como la elaboración de una secuencia didáctica y el análisis de una evaluación cuantitativa y cualitativa de respuestas. Las anteriores son obtenidas de los estudiantes de la institución educativa Paula Montal en Itagüí Antioquia- Colombia, sobre cuestiones controversiales de la ciencia y tecnología, las cuales se articularon con contenidos del área de física de ciencias naturales para el grado once.Dicho enfoque se aplicó apoyado en los conceptos de algunos fenómenos termodinámicos, los cuales se organizaron en una secuencia didáctica que contenía preguntas y situaciones controversiales, experimentos demostrativos, discusiones mediante foros de noticias controversiales y un juego de roles con el fin de desarrollar habilidades CTSA en los estudiantes como la capacidad de argumentar y de tomar decisiones.La aplicación de la secuencia fue pertinente porque los estudiantes se motivaron a conocer los fenómenos termodinámicos de una forma menos abstracta, así como sus implicaciones para la sociedad y el medio ambiente. Además, lograron desarrollar habilidades de argumentación, reflexión, postura crítica y visión holística que tienen gran importancia a la hora de tomar una decisión sobre aspectos tecno-científicos pertinentes a la actualidad y al contexto que los rodea. Sin embargo, la mayoría de ellos siguen teniendo dificultades para discutir argumentos referentes a la educación al momento de relacionarlos con alguna situación controversial.

Tipo de Documento: Tesis (Masters)
Palabras Clave: Calor, Temperatura, termodinámica, equilibrio térmico y maquinas térmicas.
Clasificación temática: Materias > Educación
Divisiones: Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Depositado: 15 Nov 2023 23:30
Ultima Modificación: 15 Nov 2023 23:30
URI: https://repositorio.unini.edu.mx/id/eprint/1441

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