The Edge Application of Machine Learning Techniques for Fault Diagnosis in Electrical Machines

Author:

de las Morenas Javier1ORCID,Moya-Fernández Francisco2ORCID,López-Gómez Julio Alberto1

Affiliation:

1. Mining and Industrial Engineering School of Almadén, University of Castilla-La Mancha, 13400 Almadén, Spain

2. Mantis Research Group, EIIA Toledo, University of Castilla-La Mancha, 45005 Toledo, Spain

Abstract

The advent of digitization has brought about new technologies that enable advanced condition monitoring and fault diagnosis under the Industry 4.0 paradigm. While vibration signal analysis is a commonly used method for fault detection in literature, it often involves the use of expensive equipment in difficult-to-reach locations. This paper presents a solution for fault diagnosis of electrical machines by utilizing machine learning techniques on the edge, classifying information coming from motor current signature analysis (MCSA) for broken rotor bar detection. The paper covers the process of feature extraction, classification, and model training and testing for three different machine learning methods using a public dataset to then export the results to diagnose a different machine. An edge computing approach is adopted for the data acquisition, signal processing and model implementation on an affordable platform, the Arduino. This makes it accessible for small and medium-sized companies, albeit with the limitations of a resource-constrained platform. The proposed solution has been tested on electrical machines in the Mining and Industrial Engineering School of Almadén (UCLM) with positive results.

Funder

the 2022 Departmental Research Funds of the Department of Electrical, Electronic, Automatic and Communications Engineering at UCLM

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference57 articles.

1. Marcu, I., Suciu, G., Bălăceanu, C., Vulpe, A., and Drăgulinescu, A.-M. (2020). Arrowhead technology for digitalization and automation solution: Smart cities and smart agriculture. Sensors, 20.

2. Singh, R., Akram, S.V., Gehlot, A., Buddhi, D., Priyadarshi, N., and Twala, B. (2022). Energy System 4.0: Digitalization of the energy sector with inclination towards sustainability. Sensors, 22.

3. Wang, J., and Xu, Y. (2022). How Does Digitalization Affect Haze Pollution? The Mediating Role of Energy Consumption. Int. J. Environ. Res. Public Health, 19.

4. A review of the role of digitalization in health risk management in extractive industries—A study motivated by COVID-19;Nguyen;J. Eng. Des. Technol.,2022

5. The Internet of Things Applied to the Automotive Sector: A Unified Intelligent Transport System Approach;Blanco;Service Orientation in Holonic and Multi-Agent Manufacturing. Studies in Computational Intelligence,2016

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