Diagnóstico y propuesta para la gestión de los residuos de construcción y demolición en San Francisco de Macorís, República Dominicana

Tesis Materias > Ingeniería Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Cerrado Español La construcción de las diferentes obras civiles que se adelantan hoy en día tiene como unos de sus tantos objetivos satisfacer las necesidades básicas de la población, mejorando notablemente el entorno y la calidad de vida. Sin embargo, todos estos objetivos se ven afectados notoriamente por el impacto ambiental negativo generado por el mal manejo residuos de construcción y demolición resultantes. El gran volumen de RCD generados por esta actividad, ha venido afectando de alguna forma, áreas de importancia ecológica en el ambiente como el agua, el suelo, el aire; deteriorando así la calidad de estos recursos naturales y la calidad de vida de la población. (Zapata, 2016).En la ciudad de San Francisco de Macorís no se aplica una política de manejo de dichos residuos, ni existen escombreras o centros de acopio donde poder tratarlos y se puede observar en diversos solares baldíos y otros puntos de la ciudad donde estos desechos son depositados sin ningún manejo ambiental, por lo que se propuso Realizar el diagnostico y propuesta para la gestión de los residuos de construcción y demolición en San Francisco de Macorís, República Dominicana, para lo que cual se realizaron dos encuestas a los principales generadores de residuos que son las casas constructoras. Se identificaron tres puntos estratégicos donde establecer los centros de acopio que se proponen, los cuales se determinaron siguiendo algunos criterios básicos ambientales y sociales.A través de la aplicación de las encuestas se determinó que los principales residuos generados en la ciudad son los de Madera y Hormigón, de manera que estos están presentes en el 100% de las obras de la ciudad. La generación de residuos de construcción y demolición oscila en una media entre 204 y 417 m3 por mes. En base a la falta de normativas que regulen el manejo de los RCD lo cual expresaron las casas constructoras en en las encuestas se propuso la elaboración e implementación de una política municipal para la buena gestión de estos metadata Infante Balbi, Amaury José mail amaury17111994@gmail.com (2022) Diagnóstico y propuesta para la gestión de los residuos de construcción y demolición en San Francisco de Macorís, República Dominicana. Masters thesis, SIN ESPECIFICAR.

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Resumen

La construcción de las diferentes obras civiles que se adelantan hoy en día tiene como unos de sus tantos objetivos satisfacer las necesidades básicas de la población, mejorando notablemente el entorno y la calidad de vida. Sin embargo, todos estos objetivos se ven afectados notoriamente por el impacto ambiental negativo generado por el mal manejo residuos de construcción y demolición resultantes. El gran volumen de RCD generados por esta actividad, ha venido afectando de alguna forma, áreas de importancia ecológica en el ambiente como el agua, el suelo, el aire; deteriorando así la calidad de estos recursos naturales y la calidad de vida de la población. (Zapata, 2016).En la ciudad de San Francisco de Macorís no se aplica una política de manejo de dichos residuos, ni existen escombreras o centros de acopio donde poder tratarlos y se puede observar en diversos solares baldíos y otros puntos de la ciudad donde estos desechos son depositados sin ningún manejo ambiental, por lo que se propuso Realizar el diagnostico y propuesta para la gestión de los residuos de construcción y demolición en San Francisco de Macorís, República Dominicana, para lo que cual se realizaron dos encuestas a los principales generadores de residuos que son las casas constructoras. Se identificaron tres puntos estratégicos donde establecer los centros de acopio que se proponen, los cuales se determinaron siguiendo algunos criterios básicos ambientales y sociales.A través de la aplicación de las encuestas se determinó que los principales residuos generados en la ciudad son los de Madera y Hormigón, de manera que estos están presentes en el 100% de las obras de la ciudad. La generación de residuos de construcción y demolición oscila en una media entre 204 y 417 m3 por mes. En base a la falta de normativas que regulen el manejo de los RCD lo cual expresaron las casas constructoras en en las encuestas se propuso la elaboración e implementación de una política municipal para la buena gestión de estos

Tipo de Documento: Tesis (Masters)
Palabras Clave: Residuos, construcción, Demolición, centros de acopio, gestión
Clasificación temática: Materias > Ingeniería
Divisiones: Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Depositado: 14 Mar 2024 23:30
Ultima Modificación: 14 Mar 2024 23:30
URI: https://repositorio.uneatlantico.es/id/eprint/2672

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