首页|A gear fault diagnosis method based on improved accommodative random weighting algorithm and BB-1D-TP

A gear fault diagnosis method based on improved accommodative random weighting algorithm and BB-1D-TP

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As an essential component of a gearbox, gears can damage a structure or even an entire gear transmission system in case of failures. As a result, advanced fault diagnosis methods are crucial to system's operation. Currently, single-signal-driven gear fault diagnosis techniques have been applied in many fields, but multipath noise and single-sensor sampling errors inevitably affected the accuracy of diagnosis. This paper proposes a gear fault diagnosis method based on a novel accommodative random weighting theory and a balanced binary one dimension ternary pattern (BB-1D-TP) model. It can accurately diagnose the types of gear failures under the circumstances of multiple channels and strong background noise. The novel accommodative random weighting algorithm reduces the total mean-square error (MSE) by adaptively adjusting the proportional connection between a measured value at a present state and a historical state. Then the balanced binary algorithm extracts texture features of fault signals for signal enhancement. In the end, the classification is done by using Support Vector Machine (SVM) method. The result of experiments demonstrated that the method in this article effectively improves accuracy and efficiency of gear fault identification.

GearFault diagnosisMulti-sensorFeature extractionFault classificationFEATURE-EXTRACTIONFUSION

Meng, Zong、Huo, Hanbing、Pan, Zuozhou、Cao, Lixiao、Li, Jimeng、Fan, Fengjie

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Yanshan Univ

2022

Measurement

Measurement

SCI
ISSN:0263-2241
年,卷(期):2022.195
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