2023
DOI: 10.1177/01423312231185702
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Lightweight and intelligent model based on enhanced sparse filtering for rotating machine fault diagnosis

Abstract: Rotating machine fault diagnosis plays a vital role in reducing maintenance costs and preventing accidents. Machine learning (ML) methods and Internet of things (IoT) technologies have been recently introduced into machine fault diagnosis and have generated inspiring results. An ML model with more trainable parameters can typically generate a higher fault diagnostic accuracy. However, the IoT nodes have limited computation and storage resources. How to design an ML model with high accuracy and computational ef… Show more

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