Valoración de riesgos laborales para el establecimiento de medidas de intervención y control de los peligros en un taller de Ebanistería de la ciudad de Sincelejo, Sucre
Thesis
Subjects > Biomedicine
Subjects > Engineering
Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Closed
Spanish
De acuerdo con el Decreto 1072 de 2015 el empleador o contratante debe aplicar una metodología para identificar los peligros y evaluar los riesgos en seguridad y salud en el trabajo, con la finalidad de que puedan priorizar y establecer los controles necesarios. Esta metodología debe ser sistemática, que tenga alcance sobre todos los procesos, actividades y centros de trabajo de la empresa, así como de los trabajadores independientemente de su forma de contratación o vinculación. El presente proyecto de investigación es un estudio de caso enfocado a un taller de Ebanistería en la ciudad de Sincelejo Sucre, debido a que existen muchos talleres de ebanistería de carácter familiar en los hogares, siendo estos la principal fuente económica de ingresos, sin embargo, estos talleres no cuentan con formación y entrenamiento en materia de prevención de riesgos laborales. El objetivo general del estudio es valorar los riesgos laborales para el establecimiento de medidas de intervención y control de los peligros presentes en un taller de Ebanistería de la ciudad de Sincelejo, Sucre. La metodología utilizada fue cualitativa con diseño de investigación descriptivo de tipo investigación acción y de corte transversal. Los peligros identificados fueron: físicos, químicos, biológicos, biomecánicos, psicosociales, de seguridad, tales como eléctricos, mecánicos, locativos en niveles de riesgo alto y muy alto con criterios no aceptables o aceptables con control especifico. De acuerdo con los resultados, se establecieron medidas de intervención como sustitución, controles de ingeniería, administrativos y elementos de protección personal. En las actividades de ebanistería y carpintería, las medidas preventivas frente a los riesgos son bajas o nulas, conllevando a que los trabajadores sean vulnerables y mayormente expuestos a los peligros, debido a que, por ser talleres informales en casa desconocen los riesgos y consecuencias que trae consigo las tareas propias de la transformación de la madera, la utilización de herramientas, máquinas y equipos con alta peligrosidad. Por tal razón es importante que se implementen medidas de prevención y control de los peligros a los cuales están expuestos los trabajadores, así como la capacitación y entrenamiento en la promoción de conductas de autocuidado.
metadata
Gonzalez Monterrosa, Ana Isabel
mail
ana-isa-26@hotmail.com
(2022)
Valoración de riesgos laborales para el establecimiento de medidas de intervención y control de los peligros en un taller de Ebanistería de la ciudad de Sincelejo, Sucre.
Master's thesis, UNSPECIFIED.
Abstract
De acuerdo con el Decreto 1072 de 2015 el empleador o contratante debe aplicar una metodología para identificar los peligros y evaluar los riesgos en seguridad y salud en el trabajo, con la finalidad de que puedan priorizar y establecer los controles necesarios. Esta metodología debe ser sistemática, que tenga alcance sobre todos los procesos, actividades y centros de trabajo de la empresa, así como de los trabajadores independientemente de su forma de contratación o vinculación. El presente proyecto de investigación es un estudio de caso enfocado a un taller de Ebanistería en la ciudad de Sincelejo Sucre, debido a que existen muchos talleres de ebanistería de carácter familiar en los hogares, siendo estos la principal fuente económica de ingresos, sin embargo, estos talleres no cuentan con formación y entrenamiento en materia de prevención de riesgos laborales. El objetivo general del estudio es valorar los riesgos laborales para el establecimiento de medidas de intervención y control de los peligros presentes en un taller de Ebanistería de la ciudad de Sincelejo, Sucre. La metodología utilizada fue cualitativa con diseño de investigación descriptivo de tipo investigación acción y de corte transversal. Los peligros identificados fueron: físicos, químicos, biológicos, biomecánicos, psicosociales, de seguridad, tales como eléctricos, mecánicos, locativos en niveles de riesgo alto y muy alto con criterios no aceptables o aceptables con control especifico. De acuerdo con los resultados, se establecieron medidas de intervención como sustitución, controles de ingeniería, administrativos y elementos de protección personal. En las actividades de ebanistería y carpintería, las medidas preventivas frente a los riesgos son bajas o nulas, conllevando a que los trabajadores sean vulnerables y mayormente expuestos a los peligros, debido a que, por ser talleres informales en casa desconocen los riesgos y consecuencias que trae consigo las tareas propias de la transformación de la madera, la utilización de herramientas, máquinas y equipos con alta peligrosidad. Por tal razón es importante que se implementen medidas de prevención y control de los peligros a los cuales están expuestos los trabajadores, así como la capacitación y entrenamiento en la promoción de conductas de autocuidado.
| Document Type: | Thesis (Master's) |
|---|---|
| Keywords: | Peligro,Riesgo, Evaluación del riesgo,Valoración de los riesgos,Ebanistería |
| Subject classification: | Subjects > Biomedicine Subjects > Engineering |
| Divisions: | Europe University of Atlantic > Teaching > Final Master Projects Ibero-american International University > Teaching > Master's Final Projects |
| Deposited: | 19 Oct 2023 23:30 |
| Last Modified: | 19 Oct 2023 23:30 |
| URI: | https://repositorio.unib.org/id/eprint/860 |
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