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一种基于深度迁移学习的滚动轴承早期故障在线检测方法
引用本文:毛文涛,田思雨,窦智,张迪,丁玲.一种基于深度迁移学习的滚动轴承早期故障在线检测方法[J].自动化学报,2022,48(1):302-314.
作者姓名:毛文涛  田思雨  窦智  张迪  丁玲
作者单位:1.河南师范大学计算机与信息工程学院 新乡 453007
基金项目:国家重点研发计划重点专项项目(2018YFB1701400);国家自然科学基金(U1704158)资助~。
摘    要:近年来,深度学习技术已在滚动轴承故障检测和诊断领域取得了成功应用,但面对不停机情况下的早期故障在线检测问题,仍存在着早期故障特征表示不充分、误报警率高等不足.为解决上述问题,本文从时序异常检测的角度出发,提出了一种基于深度迁移学习的早期故障在线检测方法.首先,提出一种面向多域迁移的深度自编码网络,通过构建具有改进的最大...

关 键 词:早期故障检测  在线检测  迁移学习  异常检测  深度自编码网络
收稿时间:2019-08-18

A New Deep Transfer Learning-based Online Detection Method of Rolling Bearing Early Fault
MAO Wen-Tao,TIAN Si-Yu,DOU Zhi,ZHANG Di,DING Ling.A New Deep Transfer Learning-based Online Detection Method of Rolling Bearing Early Fault[J].Acta Automatica Sinica,2022,48(1):302-314.
Authors:MAO Wen-Tao  TIAN Si-Yu  DOU Zhi  ZHANG Di  DING Ling
Affiliation:1.School of Computer and Information Engineering, Henan Normal University, Xinxiang 4530072.Engineering Laboratory of Intelligence Business & Internet of Things, Xinxiang 453007
Abstract:In recent years, deep learning techniques have been successfully applied to fault detection and diagnosis for rolling bearings. However, for online detection of incipient fault without system halt, these techniques still have some shortcomings such as insufficient feature representation of incipient fault and high false alarm rate. To solve such problems, this paper presents a new deep transfer learning-based online detection approach on the perspective of temporal anomaly detection. First, a new deep auto-encoder network with multi-domain transferring is proposed by constructing a new loss function with the maximum mean discrepancy regularizer and Laplace regularizer. This model can adaptively extract the common feature representation among the data of different domains, and effectively improve the feature difference between normal state and early fault state as well. Second, with the obtained feature representation, a new online detection model based on temporal anomaly pattern is proposed. By utilizing the permutation entropy of normal state of offline bearings to build an alarm threshold, this model can match quickly anomaly sequence of the online monitoring data, and then improve the detection reliability. The experimental results on the XJTU-SY bearings dataset demonstrates that the proposed approach obtains better real-time detection performance and lower false alarm rate compared to some state-of-the-art methods of incipient fault detection.
Keywords:Incipient fault detection  online detection  transfer learning  anomaly detection  deep auto-encoder network
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