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Fault diagnosis of various rotating equipment using machine learning approaches - A review

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SAGE PUBLICATIONS LTD
DOI: 10.1177/0954408920971976

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Fault diagnosis; artificial intelligence; machine learning; deep learning; deep neural networks

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This article analyzes various machine learning approaches used for fault diagnosis of rotating equipment, focusing on the benefits and advanced patterns of deep neural networks applied to multiple components. By studying intelligent fault diagnosis of rotating equipment, valuable insights are provided for improving the quality of diagnosis.
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.

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