2024
DOI: 10.1177/14759217241230129
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Gradient-based domain-augmented meta-learning single-domain generalization for fault diagnosis under variable operating conditions

Chuanxia Jian,
Heen Chen,
Chaobin Zhong
et al.

Abstract: Equipment operating conditions, referred to as domains, can induce domain drift in monitoring data, affecting data-driven fault diagnosis. Researchers have explored multi-domain generalization methods to tackle this issue. However, in actual industrial scenarios, the availability of fault data may be limited to a specific condition due to the cost or feasibility constraints associated with collecting extensive monitoring data. This limitation hampers the generalization ability of these methods, posing a major … Show more

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