Analysis of electrical losses in machine-tools by using predictive maintenance thermography

Autores

DOI:

https://doi.org/10.71112/nchv3d08

Palavras-chave:

energy efficiency, predictive maintenance, thermography, electrical losses, machine-tool

Resumo

This study examines electrical losses in a machine tool workshop using thermography as a predictive maintenance tool. The methodology involved a detailed thermographic inspection of the electrical systems of a compressor, milling machine, and lathe machine, identifying overheating and critical areas during operation. Findings revealed multiple faults, including air leaks, contractor overheating, and faulty electrical connections, all of which contributed to elevated energy consumption. Implementing corrective and preventive measures based on these thermographic insights led to notable energy savings, with estimated reductions of 0.363 kW·h for the milling machine, 0.341 kW·h for the compressor, and 0.322 kW·h for the lathe machine. These results highlight thermography's value in optimizing energy efficiency and emphasize predictive maintenance's role in enhancing operational efficiency and sustainability in industrial settings.

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Biografia do Autor

  • Angel Isaac Simbaña Gallardo, Instituto Superior Universitario Sucre

    Nació en Quito, Ecuador, en 1990. Recibió su título de Ingeniero Mecánico, de la Universidad Politécnica Salesiana, en 2018; de Magíster en Métodos Matemáticos y Simulación Numérica en Ingeniería, de la Universidad Politécnica Salesiana, en 2022; de Magíster en Educación, Mención Desarrollo del Pensamiento, de la Universidad Politécnica Salesiana, en 2024. Actualmente está en proceso de titulación en la Maestría en Administración y Dirección de Empresas, en la Universidad Bolivariana del Ecuador. Además, continúa su proceso formativo cursando una Maestría en Industria 4.0, en la Escuela de Posgrados Newman, desde noviembre del 2024, y en agosto del 2024, inició sus estudios de Doctorado en Ciencias. Trabaja como Docente en el Instituto Superior Universitario Sucre y es el Coordinador del Grupo de Investigación en Ingeniería Mecánica y Pedagogía de la Carrera de Electromecánica (GIIMPCEM). Tiene más de 7 años de experiencia en investigación científica, participando como autor y coautor en varios artículos publicados en revistas indexadas de alto impacto. Sus campos de investigación están relacionados al Análisis Numérico Computacional y Estadístico, así como a la Termodinámica, Eficiencia Energética, Procesos de Manufactura, Ciencia de Materiales y Educación enfatizando en innovación, pedagogía, didáctica e integración de TICs.

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Publicado

2025-06-16

Edição

Seção

Ciências Aplicadas

Como Citar

Simbaña Gallardo, A. I. ., Intriago Ponce, E. W. ., Guilcaso Molina, C. O. ., & Saquinga Daquilema, J. D. . (2025). Analysis of electrical losses in machine-tools by using predictive maintenance thermography. Revista Multidisciplinar Epistemologia Das Ciências, 2(2), 1026-1050. https://doi.org/10.71112/nchv3d08

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