Propuesta de implementación de un sistema de gestión ambiental, basado en la norma ISO 14001, en una industria de cosméticos de la ciudad de Guayaquil, Ecuador, 2021.

Tesis Materias > Ingeniería Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
Cerrado Español Hoy en día, se ha comprobado en muchos trabajos de investigación que la adopción de un Sistema de Gestión Ambiental (SGA) puede ofrecer a las empresas una serie de beneficios a nivel de desempeño y competitividad a la vez que gestionan de forma integral los riesgos organizacionales que pudieran afectar la continuidad del negocio, pero especialmente los riesgos ambientales originado de sus operaciones. Es bien conocido que la industria cosmética es una de las es una de las más grandes a nivel mundial y en Ecuador no es la excepción. Los hábitos de consumos, estándares de belleza y la variedad de opciones disponibles en el mercado, la hace una de las más contaminantes, así, 98 de cada 100 ecuatorianos tiene al menos cinco productos cosméticos. Dada la necesidad de contribuir con los Objetivos de Desarrollo Sostenible (ODS) mundiales de manera local, reducir los niveles de impactos ambientales actuales, contribuir a una mejora calidad de vida de la comunidad y buscar el busca el uso eficiente de los recursos naturales se propuso una guía práctica para la implementación de un SGA basado en los requisitos de la norma internacional ISO 14001 para el sector cosmético. Basado en los requisitos de norma y experiencia profesional del autor, esta propuesta consideró cuatro fases principales: 1) diagnóstico ambiental de la industria de cosméticos, 2) Identificación de los procesos claves y sus interrelaciones, 3) Evaluación de los impactos ambientales y 4) elaboración de la guía para la implementación de un Sistema de Gestión Ambiental ISO 14001. Una vez llegado a la última fase, la guía de implementación se construye con los requisitos claves y de carácter obligatorio, asegurando que el SGA se realice con éxito y forma sencilla, flexible y en corto tiempo. Cabe indicar esta guía se podría adaptar a otros giros de negocios independientemente del tamaño de estos. Futuros trabajos podrían en práctica esta propuesta y adaptarla a Sistemas de Gestión trinorma o multinorma. metadata Estrella Matamoros, Roberto German mail estrellaroberto-77@hotmail.com (2022) Propuesta de implementación de un sistema de gestión ambiental, basado en la norma ISO 14001, en una industria de cosméticos de la ciudad de Guayaquil, Ecuador, 2021. Masters thesis, SIN ESPECIFICAR.

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Resumen

Hoy en día, se ha comprobado en muchos trabajos de investigación que la adopción de un Sistema de Gestión Ambiental (SGA) puede ofrecer a las empresas una serie de beneficios a nivel de desempeño y competitividad a la vez que gestionan de forma integral los riesgos organizacionales que pudieran afectar la continuidad del negocio, pero especialmente los riesgos ambientales originado de sus operaciones. Es bien conocido que la industria cosmética es una de las es una de las más grandes a nivel mundial y en Ecuador no es la excepción. Los hábitos de consumos, estándares de belleza y la variedad de opciones disponibles en el mercado, la hace una de las más contaminantes, así, 98 de cada 100 ecuatorianos tiene al menos cinco productos cosméticos. Dada la necesidad de contribuir con los Objetivos de Desarrollo Sostenible (ODS) mundiales de manera local, reducir los niveles de impactos ambientales actuales, contribuir a una mejora calidad de vida de la comunidad y buscar el busca el uso eficiente de los recursos naturales se propuso una guía práctica para la implementación de un SGA basado en los requisitos de la norma internacional ISO 14001 para el sector cosmético. Basado en los requisitos de norma y experiencia profesional del autor, esta propuesta consideró cuatro fases principales: 1) diagnóstico ambiental de la industria de cosméticos, 2) Identificación de los procesos claves y sus interrelaciones, 3) Evaluación de los impactos ambientales y 4) elaboración de la guía para la implementación de un Sistema de Gestión Ambiental ISO 14001. Una vez llegado a la última fase, la guía de implementación se construye con los requisitos claves y de carácter obligatorio, asegurando que el SGA se realice con éxito y forma sencilla, flexible y en corto tiempo. Cabe indicar esta guía se podría adaptar a otros giros de negocios independientemente del tamaño de estos. Futuros trabajos podrían en práctica esta propuesta y adaptarla a Sistemas de Gestión trinorma o multinorma.

Tipo de Documento: Tesis (Masters)
Palabras Clave: Sistema de Gestión Ambiental, norma ISO 14001, industria cosmética, gestión ambiental en la industria cosmética, certificación ambiental
Clasificación temática: Materias > Ingeniería
Divisiones: Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
Depositado: 02 Nov 2023 23:30
Ultima Modificación: 02 Nov 2023 23:30
URI: https://repositorio.uneatlantico.es/id/eprint/1546

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