4.8 Article

Intelligent Fault Identification Based on Multisource Domain Generalization Towards Actual Diagnosis Scenario

期刊

IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS
卷 67, 期 2, 页码 1293-1304

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIE.2019.2898619

关键词

Actual diagnosis scenario; data-driven fault diagnosis; multisource domain generalization

资金

  1. Key Laboratory Opening Funding of Harbin Institute of Technology [HIT.KLOF.2018.076]

向作者/读者索取更多资源

The data-driven diagnosis methods based on conventional machine-learning techniques have been widely developed in recent years. However, the assumption of conventional methods that the training and test data should be identically distributed is usually unsatisfied in actual diagnosis scenario. While there are several existing works that have been studied to construct diagnosis models by transfer learning methods, most of them are only focused on learning from a single source. Actually, how to discover effective and general diagnosis knowledge from multiple related source domains and further generalize the learned knowledge to new target tasks is crucial to data-driven fault diagnosis. To this end, this paper proposes a novel intelligent fault identification method based on multiple source domains. First, the method describes the discriminant structure of each source domain as a point of Grassmann manifold using local Fisher discriminant analysis. Through preserving the within-class local structure, local Fisher discriminant analysis can learn effective discriminant directions from multimodal fault data. Second, the mean subspace of source domains is computed on the Grassmann manifold through Karcher mean. The mean subspace can be viewed as a representation of the general diagnosis structure that can facilitate the construction of the diagnosis model for the target domain. Experiments on bearing fault diagnosis tasks verify the effectiveness of the proposed method.

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