Algoritmos de Machine Learning usados en mantenimiento predictivo: un mapeo sistemático de literatura

Autores/as

  • Jorge Luis Paredes Carrillo Escuela Superior Politécnica de Chimborazo
  • Carlos Romero Barreno Escuela Superior Politécnica de Chimborazo

DOI:

https://doi.org/10.47187/perspectivas.7.1.227

Palabras clave:

Machine Learning, Mantenimiento Predictivo, Mapeo Sistemático de Literatura, PdM

Resumen

El mantenimiento predictivo es una práctica que gracias a tecnologías como la inteligencia artificial e internet de las cosas permiten que las empresas industriales lo puedan aplicar en sus procesos. Los algoritmos de Machine Learning son utilizados en muchos campos y sirven para realizar tareas de predicción o clasificación. El mantenimiento predictivo es un campo de Investigación que aporta con nuevas prácticas, estrategias o metodologías. Al ser un campo relativamente nuevo las metodologías aún se encuentran dispersas y existe poca información sobre la madurez de los algoritmos. Para proporcionar una base sólida, se presenta un mapeo sistemático de literatura con el objetivo de ofrecer a ingenieros e investigadores una visión general de los algoritmos de Machine Learning usados en mantenimiento predictivo. Los resultados obtenidos muestran un crecimiento en los últimos años demostrando un interés en este campo de investigación. Sin embargo, la mayoría de las contribuciones en este campo se pueden resumir como pruebas concepto y aún resulta difícil obtener un prototipo para que sea validado como un sistema completo y certificado. En este artículo se describen los principales algoritmos de Machine Learning usados en mantenimiento predictivo de acuerdo con el tipo de uso y su supervisión, además, se analizan los parámetros de entrada y las salidas de los mismos y por último se determina su nivel de madurez.

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Publicado

2025-01-31

Cómo citar

[1]
J. Paredes Carrillo y C. Romero Barreno, «Algoritmos de Machine Learning usados en mantenimiento predictivo: un mapeo sistemático de literatura», Perspectivas, vol. 7, n.º 1, pp. 31–47, ene. 2025.

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