SENSORY METHODS THAT SUPPORT PREDICTIVE MAINTENANCE IN AN IOT OPTICS
SENSORY (Português (Brasil))

Keywords

maintenance, mechanism, hydraulic oil, excavators

How to Cite

Magalhães Viegas Junior, D. . (2024). SENSORY METHODS THAT SUPPORT PREDICTIVE MAINTENANCE IN AN IOT OPTICS. Journal of Interdisciplinary Debates, 5(01), 74–94. https://doi.org/10.51249/jid.v5i01.1919

Abstract

The research seeks to build a device that aims to identify properties of hydraulic oil in hydraulic mining excavators. The need to obtain research data allows us to improve the maintenance processes of this equipment, enabling an improvement in the production process and management of the use of tools.

https://doi.org/10.51249/jid.v5i01.1919
SENSORY (Português (Brasil))

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