Fault Diagnosis on Train Brake System Based on Multi-dimensional Feature Fusion and GBDT Enhanced Classification

Meng Zhang, Zhen Liu, X. Dang
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引用次数: 10

Abstract

The condition of train brake system directly affects the performance and safety of the train. In view of the low accuracy and inefficiency of train brake system fault diagnosis, a new fault diagnosis method for train brake system based on multi-dimension feature fusion and GBDT enhanced classification is proposed. Firstly, the initial features of the brake system data are extracted from four dimensions, including time domain, frequency domain, wavelet packet decomposition and correlation. Secondly, features, which have great contributions to the fault diagnosis model, are screened out by the ReliefF algorithm, and the uncorrelated components are eliminated with the KPCA algorithm. So the core feature vectors can be obtained with the help of feature selection and reduction. Finally, a gradient boosting decision tree (GBDT) model for fault diagnosis is trained by the core feature vectors. And the model will be used to identify and diagnose the faults of the brake system. Experimental results show that, the fault diagnosis model proposed in this paper can identify the common fault types of brake system, and has high model train efficiency and excellent fault recognition performance.
基于多维特征融合和GBDT增强分类的列车制动系统故障诊断
列车制动系统的好坏直接影响到列车的性能和安全。针对列车制动系统故障诊断准确率低、效率低的问题,提出了一种基于多维特征融合和GBDT增强分类的列车制动系统故障诊断新方法。首先从时域、频域、小波包分解和相关等四个维度提取制动系统数据的初始特征;其次,利用ReliefF算法筛选出对故障诊断模型贡献较大的特征,利用KPCA算法剔除不相关成分;通过特征选择与约简,可以得到核心特征向量。最后,利用核心特征向量训练出用于故障诊断的梯度增强决策树模型。该模型将用于制动系统故障的识别和诊断。实验结果表明,本文提出的故障诊断模型能够识别制动系统常见的故障类型,具有较高的模型训练效率和优异的故障识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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