计算机科学
断层(地质)
子空间拓扑
数据挖掘
离群值
人工智能
熵(时间箭头)
模式识别(心理学)
物理
量子力学
地震学
地质学
作者
Jun Zhu,Yuanfan Wang,Min Xia,Darren L. Williams,Clarence W. de Silva
标识
DOI:10.1109/tim.2023.3318679
摘要
Cross-domain fault diagnosis methods based on domain adaptation (DA) have been developed for single-sensor monitoring scenarios, in which the source and target domain fall into the same categories. However, in real-world situations, faults are usually mixed with each other, and the target health category is a subspace of the source health category, posing challenges to the current cross-domain fault diagnosis approaches. Additionally, with the increasing complexity of modern industrial systems, less attention has been paid to multisensor cross-domain diagnosis. To address this research gap, this paper proposes a new method of the multisensor partial DA fault diagnosis. First, the frequency information of multisensor measurements is obtained to fully utilize the fault information. Then, an improved partial DA method based on weighted domain adversarial network is used to distinguish the label space of the data samples. Finally, a joint optimization objective is constructed under the framework of partial transfer fault diagnosis, where two terms, namely, conditional entropy and adaptive uncertainty suppression, are further added to regularize the optimization objective. Through the proposed method, the positive transfer between shared common classes is guaranteed, and additionally, the passive influence resulted by outlier classes is prevented. Experimental results show that the proposed approach surpasses other popular methods for partial transfer fault diagnosis.
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