2024
DOI: 10.1177/14759217241256690
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Long-tailed multi-domain generalization for fault diagnosis of rotating machinery under variable operating conditions

Chuanxia Jian,
Guopeng Mo,
Yonghe Peng
et al.

Abstract: As the operating conditions (also known as domains) of rotating machinery become increasingly diverse, fault diagnosis has garnered growing attention. However, fault diagnosis frequently encounters challenges such as long-tailed data distributions, domain shifts in monitoring data, and the unavailability of target-domain data. Existing approaches can only address some of these challenges, limiting their applications. To address these challenges concurrently, we introduce a novel learning paradigm called long-t… Show more

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