Dual disentanglement domain generalization method for rotating Machinery fault diagnosis

IF 7.9 1区 工程技术 Q1 ENGINEERING, MECHANICAL
Guowei Zhang , Xianguang Kong , Hongbo Ma , Qibin Wang , Jingli Du , Jinrui Wang
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引用次数: 0

Abstract

The objective of domain generalization fault diagnosis is to develop a robust model that can generalize to unseen domains. This makes it a highly ambitious and challenging task. However, most current methods rely on domain labels to extract domain-invariant features and do not consider the negative impact of the presence of class-irrelevant features in domain-invariant features on generalization. Therefore, this paper proposes a dual disentanglement domain generalization method for rotating machinery fault diagnosis that does not depend on domain labels. Based on the analysis of the potential features between domains and class labels, a dual contrastive disentanglement module and an adversarial mask disentanglement module are proposed to disentangle the domain-invariant and class-relevant features, respectively. Specifically, in the dual contrastive disentanglement module, the concept of contrasting is employed to train the network shallow features of the source data and the style-enhanced data to produce domain-aware mask decoupled domain-specific and domain-invariant representations. The adversarial mask disentanglement module uses an adversarial classifier to update the class-aware mask and further accurately separate class-relevant and class-irrelevant features. Concurrently, the KLD loss is devised to guarantee that the class-relevant features encompass sufficient labeling information. Finally, the efficacy of the method is substantiated by comprehensive experimental findings on both public and private datasets. The code will be available at: https://github.com/GuoweiaaZhang/DDDG.
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来源期刊
Mechanical Systems and Signal Processing
Mechanical Systems and Signal Processing 工程技术-工程:机械
CiteScore
14.80
自引率
13.10%
发文量
1183
审稿时长
5.4 months
期刊介绍: Journal Name: Mechanical Systems and Signal Processing (MSSP) Interdisciplinary Focus: Mechanical, Aerospace, and Civil Engineering Purpose:Reporting scientific advancements of the highest quality Arising from new techniques in sensing, instrumentation, signal processing, modelling, and control of dynamic systems
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