Data-driven prognostic method based on self-supervised learning approaches for fault detection

被引:0
作者
Tian Wang
Meina Qiao
Mengyi Zhang
Yi Yang
Hichem Snoussi
机构
[1] Beihang University,School of Automation Science and Electrical Engineering
[2] Nanjing Tech University,College of Electrical Engineering and Control Science
[3] Henan Polytechnic University,School of Electrical Engineering and Automation
[4] University of Technology of Troyes,Institute Charles Delaunay
来源
Journal of Intelligent Manufacturing | 2020年 / 31卷
关键词
Fault detection; Self-supervised; Kernel PCA; Prognostics and health management;
D O I
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中图分类号
学科分类号
摘要
As a part of prognostics and health management (PHM), fault detection has been used in many fields to improve the reliability of the system and reduce the manufacturing costs. Due to the complexity of the system and the richness of the sensors, fault detection still faces some challenges. In this paper, we propose a data-driven method in a self-supervised manner, which is different from previous prognostic methods. In our algorithm, we first extract feature indices of each batch and concatenate them into one feature vector. Then the principal components are extracted by Kernel PCA. Finally, the fault is detected by the reconstruction error in the feature space. Samples with high reconstruction error are identified as faulty. To demonstrate the effectiveness of the proposed algorithm, we evaluate our algorithm on a benchmark dataset for fault detection, and the results show that our algorithm outperforms other fault detection methods.
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页码:1611 / 1619
页数:8
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