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Deep PCA Based Real-Time Incipient Fault Detection and Diagnosis Methodology for Electrical Drive in High-Speed Trains

机译:基于深层PCA的实时初期故障检测与诊断方法,用于高速列车的电气驱动

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摘要

Incipient fault detection and diagnosis (FDD) is a key technology for enhancing safety and reliability of high-speed trains. This paper develops a real-time incipient FDD method named deep principal component analysis (DPCA) for electrical drive in highspeed trains. This method can effectively detect incipient faults in electrical drive before they develop into faults or failures. This scheme adopting multivariate statistics is composed of multiple data processing layers to extract more accurate signal features of electrical drive, which exhibits several salient advantages: 1) It can establish precise data models containing both systematic and noise information of electrical drive, which are helpful for incipient fault detection; 2) the incipient faults are described by multicharacteristics which can improve the fault diagnosis ability; 3) it can be easily implemented even if the system models and parameters of electrical drive are unknown. The effectiveness and feasibility of the proposed FDD scheme are authenticated via a mathematical analysis and validated via two experiments. Results of two experiments show that the missing alarm rate and detection delay by using the proposed DPCA-based FDD method are less than 10% and 0.68 s, respectively. In comparison with the standard PCA-based FDD method, the proposed DPCA-based FDD method can show its superiorities by the detailed performance comparisons.
机译:初始故障检测和诊断(FDD)是一种用于提高高速列车安全性和可靠性的关键技术。本文开发了一个名为深度主成分分析(DPCA)的实时初期FDD方法,用于高速列车的电气驱动器。该方法可以在开发故障或故障之前有效地检测电动驱动器中的初始故障。该方案采用多变量统计数据由多个数据处理层组成,以提取电气驱动器的更准确的信号特征,这表现出几种显着的优点:1)它可以建立具有电气驱动器系统和噪声信息的精确数据模型,这是有帮助的初期故障检测; 2)初期的故障描述了可以改善故障诊断能力的多曲线; 3)即使电气驱动器的系统模型和参数未知,也可以轻松实现。所提出的FDD方案的有效性和可行性通过数学分析认证并通过两个实验验证。两个实验的结果表明,通过使用所提出的基于DPCA的FDD方法缺失的报警速率和检测延迟分别小于10%和0.68秒。与基于标准PCA的FDD方法相比,所提出的基于DPCA的FDD方法可以通过详细的性能比较显示其优越性。

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