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Intelligent Fault Diagnosis of the High-Speed Train With Big Data Based on Deep Neural Networks

机译:基于深度神经网络的大数据高速列车智能故障诊断

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摘要

Bogies are an important component of high-speed trains. The level of mechanical performance of bogies has a major influence on the safety and reliability of high-speed train. Therefore, conducting fault diagnoses on bogies with big data is very important. Fault mechanisms of bogies are very complex, and feature signals are nonobvious. For these reasons, fault information of bogies cannot be effectively extracted using the traditional signal processing method. Therefore, this paper adopted the deep neural network to recognize faults in bogies. The deep neural network offers numerous benefits in this context. Using deep neural networks, fault information in a signal spectrum can be extracted in a selfadaptive method. This technique is free of dependence on extensive signal processing knowledge and diagnostic experience. Compared with the traditional intelligent diagnosis method, the deep neural network can obtain a higher diagnostic accuracy. Additionally, the deep neural network does not depend on the sample size, and it can obtain high diagnostic accuracy even when the sample size is relatively small. It also achieves very high diagnostic accuracy applied to high-speed trains with different speeds and different faults, which shows that the method is extensively applicable. Furthermore, the recognition accuracy rate of the deep neural network under normal conditions can reach 100%. This method provides a new paradigm for fault diagnosis of the high-speed train with big data and plays an important role in this field.
机译:转向架是高速列车的重要组成部分。转向架的机械性能水平对高速列车的安全性和可靠性有重要影响。因此,对具有大数据的转向架进行故障诊断非常重要。转向架的故障机制非常复杂,特征信号也不明显。由于这些原因,使用传统的信号处理方法无法有效地提取转向架的故障信息。因此,本文采用深度神经网络来识别转向架中的故障。在这种情况下,深度神经网络提供了许多好处。使用深度神经网络,可以采用自适应方法提取信号频谱中的故障信息。该技术不依赖于广泛的信号处理知识和诊断经验。与传统的智能诊断方法相比,深度神经网络可以获得更高的诊断精度。此外,深度神经网络不依赖于样本量,即使样本量相对较小,它也可以获得很高的诊断准确性。它还适用于具有不同速度和故障的高速列车,具有非常高的诊断准确性,这表明该方法具有广泛的适用性。此外,在正常条件下,深度神经网络的识别准确率可以达到100%。该方法为大数据高速列车的故障诊断提供了新的范例,在该领域具有重要作用。

著录项

  • 来源
    《IEEE transactions on industrial informatics》 |2017年第4期|2106-2116|共11页
  • 作者单位

    College of Computer and Information, and also with the Department of Electrical Engineering, Hohai University, Tibet Agricultural and Animal Husbandry College, Nanjing, Linzhi, ChinaChina;

    College of Computer and Information, and also with the Department of Electrical Engineering, Hohai University, Tibet Agricultural and Animal Husbandry College, Nanjing, Linzhi, ChinaChina;

    College of Computer and Information, and also with the Department of Electrical Engineering, Hohai University, Tibet Agricultural and Animal Husbandry College, Nanjing, Linzhi, ChinaChina;

    School of Computer Science and Engineering, Xi'an University of Technology, Xi'an, China;

    Department of Engineering, Jacksonville University, Jacksonville, FL, USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Feature extraction; Fault diagnosis; Big Data; Monitoring; Biological neural networks; Data mining;

    机译:特征提取;故障诊断;大数据;监测;生物神经网络;数据挖掘;

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