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dc.contributor.advisorGonzález Rodríguez, Leonardo José
dc.contributor.authorBohórquez Gutiérrez, Lina Marcela
dc.date.accessioned2013-07-31T16:39:08Z
dc.date.available2013-07-31T16:39:08Z
dc.date.created2013-07-31
dc.date.issued2012
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dc.identifier.urihttp://hdl.handle.net/10818/8194
dc.description101 páginas
dc.description.abstractActualmente el sistema nacional de atención y prevención de desastres de Colombia no ha realizado estudios previos con respecto a los tiempos de respuesta del sistema de distribución de ayudas a la población afectada por los desastres, la distribución es inmediata pero las características del sistema no se tienen en cuenta en su totalidad. El presente trabajo propone un modelo que representará la distribución de alimentos para población afectada. El método de solución del modelo será Programación Entera Mixta. El modelo determinará el menor tiempo de respuesta, la cantidad de alimento, el tipo de transporte a ser usado y la ruta adecuada para la distribución. Una vez se realizó la prueba del modelo, se hizo la comparación con datos históricos y se observó una reducción de tiempo de respuesta entre el 15% y el 24%. Nota: Para consultar la carta de autorización de publicación de este documento por favor copie y pegue el siguiente enlace en su navegador de internet: http://hdl.handle.net/10818/8664es_CO
dc.language.isospaes_CO
dc.publisherUniversidad de La Sabana
dc.sourceUniversidad de La Sabana
dc.sourceIntellectum Repositorio Universidad de La Sabana
dc.subjectPrevención de desastres -- Investigacioneses_CO
dc.subjectTransporte - Planificación -- Investigacioneses_CO
dc.subjectAbastecimiento y distribución -- Investigacioneses_CO
dc.subjectModelos matemáticos -- Investigacioneses_CO
dc.titleAnálisis del tiempo de respuesta en la distribución de alimentos en la etapa mediata del desastre para la zona norte establecida por la cruz roja colombiana.es_CO
dc.typemasterThesis
dc.publisher.programMaestría en Diseño y Gestión de Procesos
dc.publisher.departmentFacultad de Ingeniería
dc.identifier.local254653
dc.identifier.localTE05944
dc.type.localTesis de maestría
dc.type.hasVersionpublishedVersion
dc.rights.accessRightsopenAccess
dc.creator.degreeMagíster en Diseño y Gestión de Procesos


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