Proyecto de Gestión del riesgo en planes de emergencia a conjuntos de propiedad horizontal. Caso: Conjunto Bosque de Tibanica, sector San Mateo–Soacha, Colombia
Thesis
Subjects > Engineering
Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Closed
Spanish
He tomado esta temática con el objeto de que este proyecto revele las necesidades apremiantes que tiene el Conjunto Bosque de Tibanica- Soacha Colombia, en el tema de la gestión del riesgo para toda la comunidad y principalmente al área administrativa que toma las decisiones referentes. Para ello se indagará sobre las necesidades de conocimiento y capacitación que ha recibido la comunidad y como el conjunto en general ha actuado en el momento de presentarse eventos naturales o antrópicos. En primer Lugar, se indagará como ha sido la respuesta por parte del área administrativa del Conjunto, para ello se ha consultado al Presidente del Consejo de Copropietarios, que manifiesta la necesidad de conocer e implementar formas que reduzcan los riesgos a través del plan de emergencias. Por lo cual se propone dar a conocer las amenazas y vulnerabilidad en la gestión del riesgo en la cual se halla en conjunto, como afecta este a la comunidad y de qué forma se hará la promoción y gestión del riesgo. Como acto seguido estructurar el número de etapas en las cuales se desarrollará el plan de emergencia, llevando a feliz término la sensibilización y capacitación de los voluntarios y comunidad en general.La metodología se hará a través de la investigación proyectiva, no experimental y su enfoque será Mixto tanto cualitativo como cuantitativo por medio de la observación de los resultados de la encuesta y entrevistas realizadas a la parte Administrativa y a residentes del Conjunto.Luego se validará por medio de las normas establecidas a nivel Nacional sobre Gestión de Riesgo de Desastres Ley 1523 de 2012 y demás leyes estatutarias.Por consiguiente, se realizará una serie de matrices de diagnóstico que revelaran el estado actual del Conjunto. Con los recursos de las entrevistas y la encuesta virtual se pretende hacer un análisis de la información, con el fin de hallar las necesidades puntuales y urgentes que enfrenta la población del Conjunto. A causa de la investigación se propondrá el plan de emergencias con concertación del Consejo de Administración para luego ser divulgado a la comunidad residente; se propone capacitar a los voluntarios e involucrados, facilitando la retroalimentación, realizando el seguimiento y evaluación de las acciones de todos los involucrados. En conclusión, se entregará la propuesta sobre la gestión del riesgo y el modelo del plan de emergencias en la asamblea general con el fin de que se creen los grupos de brigadas de apoyo con los residentes y copropietarios del conjunto, y como resultado mejorar el conocimiento, responsabilidad y participación de toda la comunidad en el conjunto para la consecución del logro en la implementación del plan de emergencias
metadata
García Forero, Sandra Mílena
mail
sagarciafo@unal.edu.co
(2022)
Proyecto de Gestión del riesgo en planes de emergencia a conjuntos de propiedad horizontal. Caso: Conjunto Bosque de Tibanica, sector San Mateo–Soacha, Colombia.
Master's thesis, Universidad Europea del Atlántico.
Abstract
He tomado esta temática con el objeto de que este proyecto revele las necesidades apremiantes que tiene el Conjunto Bosque de Tibanica- Soacha Colombia, en el tema de la gestión del riesgo para toda la comunidad y principalmente al área administrativa que toma las decisiones referentes. Para ello se indagará sobre las necesidades de conocimiento y capacitación que ha recibido la comunidad y como el conjunto en general ha actuado en el momento de presentarse eventos naturales o antrópicos. En primer Lugar, se indagará como ha sido la respuesta por parte del área administrativa del Conjunto, para ello se ha consultado al Presidente del Consejo de Copropietarios, que manifiesta la necesidad de conocer e implementar formas que reduzcan los riesgos a través del plan de emergencias. Por lo cual se propone dar a conocer las amenazas y vulnerabilidad en la gestión del riesgo en la cual se halla en conjunto, como afecta este a la comunidad y de qué forma se hará la promoción y gestión del riesgo. Como acto seguido estructurar el número de etapas en las cuales se desarrollará el plan de emergencia, llevando a feliz término la sensibilización y capacitación de los voluntarios y comunidad en general.La metodología se hará a través de la investigación proyectiva, no experimental y su enfoque será Mixto tanto cualitativo como cuantitativo por medio de la observación de los resultados de la encuesta y entrevistas realizadas a la parte Administrativa y a residentes del Conjunto.Luego se validará por medio de las normas establecidas a nivel Nacional sobre Gestión de Riesgo de Desastres Ley 1523 de 2012 y demás leyes estatutarias.Por consiguiente, se realizará una serie de matrices de diagnóstico que revelaran el estado actual del Conjunto. Con los recursos de las entrevistas y la encuesta virtual se pretende hacer un análisis de la información, con el fin de hallar las necesidades puntuales y urgentes que enfrenta la población del Conjunto. A causa de la investigación se propondrá el plan de emergencias con concertación del Consejo de Administración para luego ser divulgado a la comunidad residente; se propone capacitar a los voluntarios e involucrados, facilitando la retroalimentación, realizando el seguimiento y evaluación de las acciones de todos los involucrados. En conclusión, se entregará la propuesta sobre la gestión del riesgo y el modelo del plan de emergencias en la asamblea general con el fin de que se creen los grupos de brigadas de apoyo con los residentes y copropietarios del conjunto, y como resultado mejorar el conocimiento, responsabilidad y participación de toda la comunidad en el conjunto para la consecución del logro en la implementación del plan de emergencias
| Document Type: | Thesis (Master's) |
|---|---|
| Keywords: | Plan de emergencias; Amenaza, Gestión del Riesgo, Probabilidad, Vulnerabilidad |
| Subject classification: | Subjects > Engineering |
| Divisions: | Europe University of Atlantic > Teaching > Final Master Projects Ibero-american International University > Teaching > Master's Final Projects |
| Deposited: | 31 Oct 2023 23:30 |
| Last Modified: | 31 Oct 2023 23:30 |
| URI: | https://repositorio.unib.org/id/eprint/1392 |
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