Custom Simplified Machine Learning Algorithms for Fault Diagnosis in Electrical Machines

H. Raja, B. Asad, T. Vaimann, A. Kallaste, A. Rassõlkin, A. Belahcen
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引用次数: 1

Abstract

With advancements in science, machine learning and artificial intelligence integration with different fields have opened up new horizons. In this paper, some simplified custom machine learning algorithms are defined to train different faults for electrical machines. The industry has been moving towards predictive maintenance of machines rather than scheduled maintenance with the new industry 4.0 revolution. It has also paved the way for researchers to explore more in machine learning and have specific machine learning training algorithms catered to diagnose faults in electrical machines. Here, three different variations of a simplified machine learning algorithm are present for the training of faults of electrical machines. A comparison of the results is presented at the end, along with further studies carried out in this area.
用于电机故障诊断的自定义简化机器学习算法
随着科学的进步,机器学习和人工智能与不同领域的融合开辟了新的视野。本文定义了一些简化的自定义机器学习算法来训练电机的不同故障。随着新的工业4.0革命,该行业已经转向机器的预测性维护,而不是定期维护。它还为研究人员探索更多机器学习领域铺平了道路,并为诊断电机故障提供了特定的机器学习训练算法。在这里,一种简化的机器学习算法的三种不同的变体用于电机故障的训练。最后对结果进行了比较,并在此领域进行了进一步的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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