A support tensor machine-based fault diagnosis method for railway turnout

Cheng Chen, Meng Mei, Haidong Shao, Pei Liang
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Abstract

Turnouts play a crucial role in the safety and efficiency of trains. Traditionally, the railway turnout fault diagnosis method relied on vectorized data from time series monitoring. However, such data format fails to fully capture the signals' spatial structure and profile information, which are crucial for inspectors to analyze and make judgments. In this study, a novel fault diagnosis method for the railway is developed with the hyperdisk-based supervised tensor machine (HDSTM) and monitoring signal images, which solves the limitations of the existing method. Besides, a novel tensor-form multi-class classifier called HDSTM is proposed to address the limitation of the convex-hull-based support tensor machine (CHSTM) in the underestimation problem. First, the time series monitoring signals are preprocessed and transformed into two-dimensional images. Next, CANDECOMP/PARAFAC decomposition is used to calculate the feature tensor. Then, the HDSTM model is built with the extracted feature tensor to implement the fault diagnosis. The proposed method's performance is evaluated using real-world operational current and power datasets. Experiment results indicate that the proposed method achieved higher average accuracy and precision than existing methods.
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基于支持张量机的铁路道岔故障诊断方法
出站率对列车的安全性和效率起着至关重要的作用。传统的铁路道岔故障诊断方法依赖于时间序列监测的矢量化数据。然而,这种数据格式并不能充分捕捉信号的空间结构和剖面信息,而这些信息是检查人员分析和判断的关键。本文提出了一种基于hyperdisk的监督张量机(HDSTM)和监测信号图像的铁路故障诊断方法,解决了现有方法的局限性。此外,针对基于凸壳的支持张量机(CHSTM)在低估问题上的不足,提出了一种新的张量形式的多类分类器HDSTM。首先,对时间序列监测信号进行预处理并转换成二维图像。接下来,使用CANDECOMP/PARAFAC分解计算特征张量。然后,利用提取的特征张量构建HDSTM模型,实现故障诊断。利用实际工作电流和功率数据集对该方法的性能进行了评估。实验结果表明,该方法比现有方法具有更高的平均准确度和精密度。
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