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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part E. Journal of Process Mechanical Engineering >Fault diagnosis of various rotating equipment using machine learning approaches - A review
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Fault diagnosis of various rotating equipment using machine learning approaches - A review

机译:使用机器学习方法对各种旋转设备的故障诊断 - 评论

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摘要

Fault diagnosis of various rotating equipment plays a significant role in industries as it guarantees safety, reliability and prevents breakdown and loss of any source of energy. Early identification is a fundamental aspect for diagnosing the faults which saves both time and costs and in fact it avoids perilous conditions. Investigations are being carried out for intelligent fault diagnosis using machine learning approaches. This article analyses various machine learning approaches used for fault diagnosis of rotating equipment. In addition to this, a detailed study of different machine learning strategies which are incorporated on various rotating equipment in the context of fault diagnosis is also carried out. Mainly, the benefits and advance patterns of deep neural network which are applied to multiple components for fault diagnosis are inspected in this study. Finally, different algorithms are proposed to propagate the quality of fault diagnosis and the conceivable research ideas of applying machine learning approaches on various rotating equipment are condensed in this article.
机译:各种旋转设备的故障诊断在工业中发挥着重要作用,因为它可以保证安全性、可靠性,并防止任何能源的故障和损失。早期识别是诊断故障的一个基本方面,它可以节省时间和成本,而且实际上可以避免危险情况。目前正在使用机器学习方法对智能故障诊断进行调查。本文分析了用于旋转设备故障诊断的各种机器学习方法。除此之外,还详细研究了各种旋转设备故障诊断中采用的不同机器学习策略。本研究主要考察了应用于多部件故障诊断的深度神经网络的优点和先进模式。最后,本文提出了不同的算法来提高故障诊断的质量,并总结了在各种旋转设备上应用机器学习方法的研究思路。

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