Mao Wentao, Ding Ling, Liu Yamin, Afshari Sajad Saraygord, Liang Xihui
School of Computer and Information Engineering, Henan Normal University, Xinxiang 453007, China; Engineering Lab of Intelligence Business & Internet of Things, Henan Province 453007, China.
School of Computer and Information Engineering, Henan Normal University, Xinxiang 453007, China.
ISA Trans. 2022 Mar;122:444-458. doi: 10.1016/j.isatra.2021.04.026. Epub 2021 Apr 28.
For online early fault detection of rolling bearings in non-stop scenarios, one of the main concerns is the model bias caused by the distribution shift between offline and online working conditions. Under such concern, how to improve the feature sensitivity to early faults and the robustness of detection model has become a key challenge of improving the effectiveness of online detection. To solve this problem, a new online early fault detection method is proposed in this paper based on a strategy of deep transfer learning. First, a new robust state assessment method is presented. By introducing priori degradation information in the anomaly detection process of the isolated forest algorithm, this method can accurately assess the normal state and early fault state under noise interference. Second, a new deep domain adaptation algorithm is proposed. The algorithm uses the results of state assessment as output labels, and designs a deep domain adaptation neural network for joint adversarial training at feature level and model level simultaneously. Then a domain-invariant feature representation can be extracted from the data of different working conditions, and an online detection model can then be constructed. Comparative experiments are run on two bearing datasets IEEE PHM Challenge 2012 and XJTU-SY, and the results verifies the effectiveness of the proposed method in false alarm number and detection location.
对于在不停机场景下滚动轴承的在线早期故障检测,主要关注点之一是离线和在线工作条件之间的分布偏移所导致的模型偏差。在这种情况下,如何提高对早期故障的特征敏感性以及检测模型的鲁棒性已成为提高在线检测有效性的关键挑战。为了解决这个问题,本文基于深度迁移学习策略提出了一种新的在线早期故障检测方法。首先,提出了一种新的鲁棒状态评估方法。通过在孤立森林算法的异常检测过程中引入先验退化信息,该方法能够在噪声干扰下准确评估正常状态和早期故障状态。其次,提出了一种新的深度域自适应算法。该算法将状态评估结果用作输出标签,并设计了一个深度域自适应神经网络,用于在特征层面和模型层面同时进行联合对抗训练。然后,可以从不同工作条件的数据中提取出域不变特征表示,进而构建在线检测模型。在两个轴承数据集IEEE PHM Challenge 2012和XJTU - SY上进行了对比实验,结果验证了所提方法在误报数量和检测位置方面的有效性。