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A Comparative Study of Fault Diagnosis for Train Door System: Traditional versus Deep Learning Approaches

机译:传统与深度学习方法对火车门系统故障诊断的比较研究

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摘要

A fault diagnosis of a train door system is carried out using the motor current signal that operates the door. A test rig is prepared, in which various fault modes are examined by applying extreme conditions, as well as the natural and artificial wears of critical components. Two approaches are undertaken toward the fault classification for comparative purposes: one is the traditional feature-based method that requires several steps for the processing features such as signal segmentation, the extraction of time-domain features, selection by Fisher’s discrimination, and K-nearest neighbor. The other is the deep learning approach by employing the convolutional neural network (CNN) to skip the hand-crafted features extraction process. In the traditional approach, good accuracy is found only after the current signal is segmented into the three velocity regimes, which enhances the discrimination capability. In the CNN, superior accuracy is obtained even by the original raw signal, which is more convenient in terms of implementation. However, in view of practical applications, the traditional approach is more useful in that the features processing can be easily applied to assess the health state of each fault and monitor the progression over time in the real operation, which is not enabled by the deep learning approach.
机译:火车门系统的故障诊断是通过操作门的电动机电流信号进行的。准备了一个测试设备,其中通过应用极端条件以及关键组件的自然磨损和人工磨损来检查各种故障模式。出于比较目的,针对故障分类采取了两种方法:一种是基于特征的传统方法,该方法需要几个步骤来处理特征,例如信号分割,时域特征的提取,费舍尔判别选择和K近邻法。邻居。另一种是通过使用卷积神经网络(CNN)跳过手工特征提取过程的深度学习方法。在传统方法中,只有在将电流信号分割为三个速度范围后才能获得良好的精度,这增强了识别能力。在CNN中,即使是原始的原始信号也可以获得较高的精度,这在实现方面更加方便。但是,考虑到实际应用,传统方法更有用,因为在实际操作中可以轻松地应用特征处理来评估每个故障的健康状态并监视随时间的进展,而深度学习则无法实现。方法。

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