Evaluación de factores de riesgo ergonómicos en el área de logística de una empresa exportadora de camarón ubicada en la ciudad de Guayaquil

Thesis Subjects > Engineering Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Closed Spanish Esta investigación surge como una necesidad para la organización en estudio, debido a que las labores que realizan los trabajadores vinculados al área logística, se llevan a cabo manipulando cargas pesadas, continuamente durante toda la jornada laboral, por consiguiente, se debe estudiar la exposición al riesgo ergonómico, en procura de cumplir con la legislación estipulada en la Ley 31/1995 de Prevención de Riesgos Laborales, Real Decreto 487/97 de disposiciones mínimas de seguridad y salud relativas a la manipulación manual de cargas y NTP 601 inherente al procedimiento para aplicar el método REBA. Por este motivo, se planteó como objetivo general, evaluar la presencia de factores de riesgo ergonómico en trabajadores del área de logística de una empresa exportadora de camarón, y su relación con afecciones músculo-esqueléticas. Para el efecto, se aplicó la metodología cuantitativa, no experimental, descriptiva y de campo, considerando una población de 50 trabajadores que desarrollan actividades dentro del área logística de la empresa camaronera, cuya muestra se refirió a 3 puestos de trabajo, estibado de sacos de hielo, ayudante de bodega de materiales y conductor de montacargas, que fueron evaluados con el instrumento del método REBA. Los resultados obtenidos evidenciaron una calificación de 10 puntos para los puestos de trabajo que laboran en los puestos de estibado de sacos de hielo y ayudante de bodega de materiales, que evidenció un nivel alto de riesgo ergonómico y manifestó la necesidad de una intervención cuanto antes, para su minimización. Mientras que el puesto de conductor de montacargas obtuvo una calificación de 7 puntos, que indicó un nivel mediano de riesgo ergonómico, requiriendo una intervención necesaria. Se propuso la mecanización del proceso de estibado con ayudas mecánicas, la educación ergonómica de los trabajadores para que adopten posturas correctas en el trabajo y los descansos programados en la jornada laboral, estrategias que pueden minimizar el riesgo ergonómico y reducir la probabilidad de adquisición de lesiones músculo-esqueléticas en los operadores evaluados. En conclusión, se observó un elevado nivel de riesgo ergonómico, según la evaluación con el método REBA, causado porque el peso de la carga generó sobreesfuerzo físico, al ser manipulado durante toda la jornada laboral diaria, sin descanso alguno, así como la postura incómoda adoptado por los trabajadores, factores que pueden ocasionar afecciones músculo-esqueléticas en el corto o mediano plazo, porque la evidencia científica manifiesta relación directa entre este tipo de riesgo y los trastornos músculo-esqueléticos en los trabajadores expuestos. metadata Paz Trujillo, Joselyn Briggitte mail joselyn.paz1996@hotmail.com (2022) Evaluación de factores de riesgo ergonómicos en el área de logística de una empresa exportadora de camarón ubicada en la ciudad de Guayaquil. Master's thesis, UNSPECIFIED.

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Abstract

Esta investigación surge como una necesidad para la organización en estudio, debido a que las labores que realizan los trabajadores vinculados al área logística, se llevan a cabo manipulando cargas pesadas, continuamente durante toda la jornada laboral, por consiguiente, se debe estudiar la exposición al riesgo ergonómico, en procura de cumplir con la legislación estipulada en la Ley 31/1995 de Prevención de Riesgos Laborales, Real Decreto 487/97 de disposiciones mínimas de seguridad y salud relativas a la manipulación manual de cargas y NTP 601 inherente al procedimiento para aplicar el método REBA. Por este motivo, se planteó como objetivo general, evaluar la presencia de factores de riesgo ergonómico en trabajadores del área de logística de una empresa exportadora de camarón, y su relación con afecciones músculo-esqueléticas. Para el efecto, se aplicó la metodología cuantitativa, no experimental, descriptiva y de campo, considerando una población de 50 trabajadores que desarrollan actividades dentro del área logística de la empresa camaronera, cuya muestra se refirió a 3 puestos de trabajo, estibado de sacos de hielo, ayudante de bodega de materiales y conductor de montacargas, que fueron evaluados con el instrumento del método REBA. Los resultados obtenidos evidenciaron una calificación de 10 puntos para los puestos de trabajo que laboran en los puestos de estibado de sacos de hielo y ayudante de bodega de materiales, que evidenció un nivel alto de riesgo ergonómico y manifestó la necesidad de una intervención cuanto antes, para su minimización. Mientras que el puesto de conductor de montacargas obtuvo una calificación de 7 puntos, que indicó un nivel mediano de riesgo ergonómico, requiriendo una intervención necesaria. Se propuso la mecanización del proceso de estibado con ayudas mecánicas, la educación ergonómica de los trabajadores para que adopten posturas correctas en el trabajo y los descansos programados en la jornada laboral, estrategias que pueden minimizar el riesgo ergonómico y reducir la probabilidad de adquisición de lesiones músculo-esqueléticas en los operadores evaluados. En conclusión, se observó un elevado nivel de riesgo ergonómico, según la evaluación con el método REBA, causado porque el peso de la carga generó sobreesfuerzo físico, al ser manipulado durante toda la jornada laboral diaria, sin descanso alguno, así como la postura incómoda adoptado por los trabajadores, factores que pueden ocasionar afecciones músculo-esqueléticas en el corto o mediano plazo, porque la evidencia científica manifiesta relación directa entre este tipo de riesgo y los trastornos músculo-esqueléticos en los trabajadores expuestos.

Document Type: Thesis (Master's)
Keywords: Evaluación, Riesgo, Ergonomía, Lesiones, Músculo-Esqueléticas.
Subject classification: Subjects > Engineering
Divisions: Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Deposited: 15 Nov 2023 23:30
Last Modified: 15 Nov 2023 23:30
URI: https://repositorio.unib.org/id/eprint/2101

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