Rethinking the Role of Operating Conditions for Learning-based Multi-condition Fault Diagnosis
Pengyu Han, Zeyi Liu, Shijin Chen, Dongliang Zou, Xiao He

TL;DR
This paper examines how operating conditions influence fault diagnosis in industrial systems, evaluates existing domain generalization methods, and proposes a two-stage framework to improve diagnosis accuracy under varying conditions.
Contribution
It provides a detailed analysis of operating condition effects on fault features and introduces a novel two-stage diagnostic framework with a domain-generalized encoder and retraining strategy.
Findings
Existing methods struggle under significant operating condition variations.
The proposed framework improves fault diagnosis accuracy in variable conditions.
Experimental results validate the effectiveness of the new approach.
Abstract
Multi-condition fault diagnosis is prevalent in industrial systems and presents substantial challenges for conventional diagnostic approaches. The discrepancy in data distributions across different operating conditions degrades model performance when a model trained under one condition is applied to others. With the recent advancements in deep learning, transfer learning has been introduced to the fault diagnosis field as a paradigm for addressing multi-condition fault diagnosis. Among these methods, domain generalization approaches can handle complex scenarios by extracting condition-invariant fault features. Although many studies have considered fault diagnosis in specific multi-condition scenarios, the extent to which operating conditions affect fault information has been scarcely studied, which is crucial. However, the extent to which operating conditions affect fault information…
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