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用于高速列车转向架故障识别与性能退化评估的多卷积循环神经网络

Multiple Convolutional Recurrent Neural Networks for Fault Identification and Performance Degradation Evaluation of High-Speed Train Bogie.

作者信息

Qin Na, Liang Kaiwei, Huang Deqing, Ma Lei, Kemp Andrew H

出版信息

IEEE Trans Neural Netw Learn Syst. 2020 Dec;31(12):5363-5376. doi: 10.1109/TNNLS.2020.2966744. Epub 2020 Nov 30.

DOI:10.1109/TNNLS.2020.2966744
PMID:32054588
Abstract

As an important part of high-speed train (HST), the mechanical performance of bogies imposes a direct impact on the safety and reliability of HST. It is a fact that, regardless of the potential mechanical performance degradation status, most existing fault diagnosis methods focus only on the identification of bogie fault types. However, for application scenarios such as auxiliary maintenance, identifying the performance degradation of bogie is critical in determining a particular maintenance strategy. In this article, by considering the intrinsic link between fault type and performance degradation of bogie, a novel multiple convolutional recurrent neural network (M-CRNN) that consists of two CRNN frameworks is proposed for simultaneous diagnosis of fault type and performance degradation state. Specifically, the CRNN framework 1 is designed to detect the fault types of the bogie. Meanwhile, CRNN framework 2, which is formed by CRNN Framework 1 and an RNN module, is adopted to further extract the features of fault performance degradation. It is worth highlighting that M-CRNN extends the structure of traditional neural networks and makes full use of the temporal correlation of performance degradation and model fault types. The effectiveness of the proposed M-CRNN algorithm is tested via the HST model CRH380A at different running speeds, including 160, 200, and 220 km/h. The overall accuracy of M-CRNN, i.e., the product of the accuracies for identifying the fault types and evaluating the fault performance degradation, is beyond 94.6% in all cases. This clearly demonstrates the potential applicability of the proposed method for multiple fault diagnosis tasks of HST bogie system.

摘要

作为高速列车(HST)的重要组成部分,转向架的机械性能直接影响高速列车的安全性和可靠性。事实上,无论转向架潜在的机械性能退化状态如何,大多数现有的故障诊断方法都只专注于转向架故障类型的识别。然而,对于诸如辅助维护等应用场景,识别转向架的性能退化对于确定特定的维护策略至关重要。在本文中,通过考虑转向架故障类型与性能退化之间的内在联系,提出了一种由两个卷积循环神经网络(CRNN)框架组成的新型多重卷积循环神经网络(M-CRNN),用于同时诊断故障类型和性能退化状态。具体而言,CRNN框架1旨在检测转向架的故障类型。同时,采用由CRNN框架1和一个循环神经网络(RNN)模块组成的CRNN框架2,进一步提取故障性能退化的特征。值得强调的是,M-CRNN扩展了传统神经网络的结构,并充分利用了性能退化的时间相关性和模型故障类型。通过高速列车CRH380A模型在160、200和220公里/小时等不同运行速度下对所提出的M-CRNN算法的有效性进行了测试。M-CRNN的总体准确率,即识别故障类型和评估故障性能退化的准确率之积,在所有情况下均超过94.6%。这清楚地证明了所提出的方法在高速列车转向架系统多重故障诊断任务中的潜在适用性。

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