Tools 4.0 and their implementation to improve performance in maintenance management

Authors

DOI:

https://doi.org/10.15649/2346030X.4541

Keywords:

total productive maintenance, industry 4.0, overall equipment effectiveness, productivity

Abstract

Technological progress and the application of increasingly more precise tools in manufacturing companies have generated a notable change in the development of their activities, seeking to make them more efficient. This literature review aimed to identify Industry 4.0 tools and how their application improves the monitoring and control of maintenance management. For this purpose, 57 scientific articles were analyzed, obtained from the Scopus and ScienceDirect databases, which met the inclusion criteria. The results obtained from the analysis allowed the identification of four challenges that affect OEE, as well as the seven Industry 4.0 tools that contribute to improving maintenance. Likewise, the five differences between conventional methods and 4.0 tools were recognized, highlighting remote inspection, failure prediction, digital recording, greater availability of technologies, and improved decision-making. It was concluded that incorporating these tools has shown improvements, either in isolation or in the monitoring and diagnosis of machines.

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2025-09-01

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[1]
G. A. Regalado-Carhuapoma, R. A. Chavez-Sempertegui, Z. B. Chavez-Romero, and J. L. Leiva-Piedra, “Tools 4.0 and their implementation to improve performance in maintenance management”, AiBi Revista de Investigación, Administración e Ingeniería, vol. 13, no. 3, pp. 1–10, Sep. 2025, doi: 10.15649/2346030X.4541.

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