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Real-time incipient fault detection for electrical traction systems of CRH2

机译:CRH2电力牵引系统的实时早期故障检测

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Electrical traction systems in a high-speed train are the core parts to provide traction force for the whole train. Due to performance degradation of electronic components and the prolonged operation under variously complicated operating environments, incipient faults will inevitably happen and will evolve into faults or failures if they are not successfully detected. Currently, the univariate control charts are used to monitor electrical traction systems of high-speed trains. However, this primitive solution is unable to deal with incipient faults with satisfactory performance. In this paper, a Kullback-Leibler divergence (KLD) and independent component analysis (ICA)-based method is proposed to perform incipient fault detection (FD) in electrical traction systems. Compared with the existing ICA-based methods, the proposed strategy is more sensitive to incipient faults; meanwhile it has low computational load because estimating the probability density functions (PDFs) of the derived independent components and the residuals is avoided. On the experimental platform of the traction system for China Railway High-speed 2-type (CRH2) trains, three typical incipient faults are successfully injected, and the proposed method is successful in detecting these incipient faults. (C) 2018 Elsevier B.V. All rights reserved.
机译:高速列车中的电力牵引系统是为整个列车提供牵引力的核心部件。由于电子组件的性能下降以及在各种复杂的操作环境下的长时间运行,不可避免地会发生初期故障,如果未能成功检测到,则会演变成故障或故障。当前,单变量控制图用于监视高速列车的电力牵引系统。但是,这种原始解决方案无法以令人满意的性能处理初期故障。本文提出了一种基于Kullback-Leibler发散(KLD)和独立成分分析(ICA)的方法来执行电力牵引系统的早期故障检测(FD)。与现有的基于ICA的方法相比,所提出的策略对初期故障更加敏感。同时,由于避免了估计导出的独立分量和残差的概率密度函数(PDF),因此计算量较小。在中国铁路高速2型(CRH2)列车牵引系统的实验平台上,成功注入了三个典型的初始故障,并且所提出的方法成功地检测了这些初始故障。 (C)2018 Elsevier B.V.保留所有权利。

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