2024
DOI: 10.1177/10775463241294127
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Uncertainty-driven dynamic ensemble framework for rotating machinery fault diagnosis under time-varying working conditions

Renjie Zhu,
Enzhe Song,
Chong Yao
et al.

Abstract: Multi-scale ensemble learning combines different scales of feature resolution, thereby improving fault diagnostic accuracy. However, the effectiveness of different information scales in characterizing fault features under time-varying speed conditions varies with speed. It is difficult for existing ensemble strategies to ensure the effectiveness of feature information when ensemble multi-scale feature information is involved. Accordingly, we propose an uncertainty-driven dynamic ensemble Bayesian convolutional… Show more

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