Análisis de viabilidad y selección del terreno para la disposición final de residuos sólidos en el Distrito de Ocoruro, Provincia de Espinar-Cusco

Thesis Subjects > Engineering Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Final Master Projects
Cerrado Español El presente estudio analizó la viabilidad y la selección de un terreno para el depósito final de residuos urbanos en el Distrito de Ocoruro, provincia de Espinar – Cusco. Se revisó los terrenos disponibles dentro de la delimitación, realizando mapas que permitan un examen espacial mediante el sistema de información geográfica ArcGIS 10.4, además se efectuó una prueba en un laboratorio certificado para medir la permeabilidad, granulometría y napa freática. Luego de estos pasos se asignó puntajes a cada sitio para escoger el que cumpla con los criterios técnicos, legales, sociales, económicos y ambientales. Los resultados indican que, los sitios valorados en la matriz de calificación con base en las 21 variables son los siguientes: 368 - Chila, 354 - Chillaje y 272 - Huanaco. Se concluye que la aptitud propicia es para la Familia Chila siendo la primera opción para instalar un relleno sanitario, porque cumple con los requisitos establecidos. Es así que, para su elección se elaboraron en total 12 mapas temáticos. metadata Huamani Huaspa, Ernesto mail ernestohhuaspa@gmail.com (2022) Análisis de viabilidad y selección del terreno para la disposición final de residuos sólidos en el Distrito de Ocoruro, Provincia de Espinar-Cusco. Masters thesis, UNSPECIFIED.

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Abstract

El presente estudio analizó la viabilidad y la selección de un terreno para el depósito final de residuos urbanos en el Distrito de Ocoruro, provincia de Espinar – Cusco. Se revisó los terrenos disponibles dentro de la delimitación, realizando mapas que permitan un examen espacial mediante el sistema de información geográfica ArcGIS 10.4, además se efectuó una prueba en un laboratorio certificado para medir la permeabilidad, granulometría y napa freática. Luego de estos pasos se asignó puntajes a cada sitio para escoger el que cumpla con los criterios técnicos, legales, sociales, económicos y ambientales. Los resultados indican que, los sitios valorados en la matriz de calificación con base en las 21 variables son los siguientes: 368 - Chila, 354 - Chillaje y 272 - Huanaco. Se concluye que la aptitud propicia es para la Familia Chila siendo la primera opción para instalar un relleno sanitario, porque cumple con los requisitos establecidos. Es así que, para su elección se elaboraron en total 12 mapas temáticos.

Item Type: Thesis (Masters)
Uncontrolled Keywords: Gestión de Residuos Sólidos, Selección de Terreno, Relleno Sanitario, Disposición final, Infraestructura para la Gestión de Residuos de Solidos.
Subjects: Subjects > Engineering
Divisions: Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Final Master Projects
Date Deposited: 03 Nov 2023 23:30
Last Modified: 03 Nov 2023 23:30
URI: https://repositorio.unib.org/id/eprint/1616

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