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基于去噪特征与时间序列信息相结合的铁路轴箱轴承性能退化评估

Performance Degradation Assessment of Railway Axle Box Bearing Based on Combination of Denoising Features and Time Series Information.

作者信息

Liu Zhigang, Zhang Long, Xiao Qian, Huang Hao, Xiong Guoliang

机构信息

Key Laboratory of Modern Transportation and Logistics of Jiangxi Province, Jiangxi Vocational and Technical College of Communications, Nanchang 330013, China.

State Key Laboratory of Performance Monitoring Protecting of Rail Transit Infrastructure, East China Jiaotong University, Nanchang 330013, China.

出版信息

Sensors (Basel). 2023 Jun 26;23(13):5910. doi: 10.3390/s23135910.

Abstract

In the existing rolling bearing performance degradation assessment methods, the input signal is usually mixed with a large amount of noise and is easily disturbed by the transfer path. The time information is usually ignored when the model processes the input signal, which affects the effect of bearing performance degradation assessment. To solve the above problems, an end-to-end performance degradation assessment model of railway axle box bearing based on a deep residual shrinkage network and a deep long short-term memory network (DRSN-LSTM) is proposed. The proposed model uses DRSN to extract local abstract features from the signal and denoises the signal to obtain the denoised feature vector, then uses deep LSTM to extract the time-series information of the signal. The healthy time-series signal of the rolling bearing is input into the DRSN-LSTM reconstruction model for training. Time-domain, frequency-domain, and time-frequency-domain features are extracted from the signal both before and after reconstruction to form a multi-domain features vector. The mean square error of the two feature vectors is used as the degradation indicator to implement the performance degradation assessment. Artificially induced defects and rolling bearings life accelerated fatigue test data verify that the proposed model is more sensitive to early failures than mathematical models, shallow networks or other deep learning models. The result is similar to the development trend of bearing failures.

摘要

在现有的滚动轴承性能退化评估方法中,输入信号通常混有大量噪声,且容易受到传输路径的干扰。在模型处理输入信号时,时间信息通常被忽略,这影响了轴承性能退化评估的效果。为解决上述问题,提出了一种基于深度残差收缩网络和深度长短期记忆网络(DRSN-LSTM)的铁路轴箱轴承端到端性能退化评估模型。所提模型利用DRSN从信号中提取局部抽象特征并对信号进行去噪,以获得去噪后的特征向量,然后利用深度LSTM提取信号的时间序列信息。将滚动轴承的健康时间序列信号输入到DRSN-LSTM重构模型中进行训练。从重构前后的信号中提取时域、频域和时频域特征,形成多域特征向量。以两个特征向量的均方误差作为退化指标,实现性能退化评估。人工诱导缺陷和滚动轴承寿命加速疲劳试验数据验证了所提模型比数学模型、浅层网络或其他深度学习模型对早期故障更敏感。结果与轴承故障的发展趋势相似。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/853c/10346339/9ebd96a30a7b/sensors-23-05910-g001.jpg

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