4.8 Article

Cross-Machine Transfer Fault Diagnosis by Ensemble Weighting Subdomain Adaptation Network

Journal

IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS
Volume 70, Issue 12, Pages 12773-12783

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIE.2023.3234142

Keywords

Distribution discrepancy metric; fault transfer diagnosis; joint distribution alignment (JDA); sub-domain adaptation

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In this article, a new ensemble weighting subdomain adaptation network (EWSAN) diagnostic model is proposed to improve the degree of domain confusion. The model utilizes an enhanced joint distribution alignment (EJDA) mechanism with a multiscale top classifier and ensemble voting to obtain reliable pseudolabels. An ensemble weighting maximum mean discrepancy is constructed to enhance fine-grained domain confusion. The effectiveness and superiority of the EWSAN model are validated through multiple experiments.
Many domain adaptation models have been explored for fault transfer diagnosis. However, most of them only consider the global domain adaptation of two domains while neglecting the fine-grained class-wise distribution alignment between the source and target domains. Thus, these models cannot satisfy the diagnostic requirement in some cases. In this article, a new ensemble weighting subdomain adaptation network (EWSAN) diagnostic model is established to improve the degree of domain confusion. In EWSAN, an enhanced joint distribution alignment (EJDA) mechanism is proposed. A multiscale top classifier with multiple diverse branches is designed based on ensemble learning to better achieve EJDA. Ensemble voting with the multiscale top classifier can obtain more reliable pseudolabels in the EJDA mechanism. An ensemble weighting maximum mean discrepancy with the class weight is constructed to enhance the fine-grained domain confusion. Moreover, the closed and partial transfer diagnostic tasks are made available. Furthermore, the information entropy is introduced to increase the confidence coefficient of the pseudo label. The proposed EWSAN diagnostic model is evaluated via multiple closed and partial fault transfer diagnosis experiments cross machines. The experimental results validate its effectiveness and superiority.

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