A Tensor Solution for Health Indicator Construction of Metro Wheelset Degradation with Irregular Noise

Yu Wang, Wentao Mao, Linlin Kou, Keying Liu
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Abstract

During the operation of metro vehicles, wheel flange and wheel diameter continue to be abrased, so wheel degradation is inevitable. Influenced by the states of welded rail, subgrade and turnout, applied load, speed of running and other components, the degradation process of wheelset is vulnerable to irregular noise interference, which leads to abnormal fluctuation of vibration signal. As a result, the degradation process is hard to be accurately described. To address this problem, this paper proposes a new health indicator construction method for metro wheelset based on tensor reconstruction. First, tensor Tucker decomposition is utilized to obtain the core tensor of original signal, and then tensor reconstruction is applied to transform the signal into a new degradation sequence with noise reduction. Second, the Savitzky-Golay filter is employed to remove the irregular trend from the obtained degradation sequence. Finally, deep autoencoder network is used to extract deep degradation features, and after dimension reduction, a health indicator of wheelset degradation process can be obtained. The effectiveness of the proposed method is verified with Beijing subway wheelset degradation dataset in 2020. The results show that the constructed health indicator can accurately describe the whole degradation process with good trendability and monotonicity. More importantly, the proposed method possess good practicability since the key changing parts in the health indicator can correspond well to the actual maintenance records.
含不规则噪声地铁轮对退化健康指标构建的张量解
地铁车辆在运行过程中,车轮轮缘和车轮直径不断受到磨损,车轮老化是不可避免的。受焊轨、路基、道岔状态、外加载荷、运行速度等因素的影响,轮对退化过程容易受到不规则的噪声干扰,导致振动信号的异常波动。因此,降解过程很难被准确描述。针对这一问题,提出了一种基于张量重构的地铁轮对健康指标构建方法。首先利用张量Tucker分解得到原始信号的核心张量,然后利用张量重构将信号转化为新的降噪退化序列。其次,采用Savitzky-Golay滤波去除得到的退化序列中的不规则趋势;最后利用深度自编码器网络提取深度退化特征,经降维后得到轮对退化过程的健康度指标。利用2020年北京地铁轮对退化数据验证了该方法的有效性。结果表明,所构建的健康指标能准确描述整个退化过程,具有良好的趋势性和单调性。更重要的是,该方法具有良好的实用性,因为健康指标中的关键变化部分与实际维修记录相对应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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