Condition monitoring for fault diagnosis of railway wheels using recurrence plots and convolutional neural networks (RP-CNN) models

IF 1.3 4区 计算机科学 Q4 AUTOMATION & CONTROL SYSTEMS Measurement & Control Pub Date : 2023-10-09 DOI:10.1177/00202940231201376
Kuan-Jung Chung, Chia-Wei Lin
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Abstract

RPThe wheel condition monitoring when the train in operation is significant task to prevent the occurrence of unexpected event. In this study, the piezoelectric sensors were installed on the railway track to collect the dynamic voltage-and-strain signals when the train wheels pressed them. These one-dimensional time series signals were transformed to the two-dimensional Recurrence Plots (RP) images as an input data sets for two deep learning models, Xception and EfficientNet-B7. The binary classification, Normal or Faulty as the diagnostical output to indicate the health state of the train wheels in that time. Five metrics were selected to evaluate the performance of two models, namely Accuracy, Precision, Recall, Miss Rate, and AUC. The results show that both models perform the high accuracy of 91.1% to the wheel condition classification. Furthermore, EfficientNet-B7 shows better performance in Recall, Miss-rate, and AUC metrics than those of Xception to express the premium ability in defective wheel identification, which is crucial for this application. Therefore, the efficientNet-B7 is selected as a favorable machine learning classifier for the fault diagnosis of rolling stock wheels. It is significant contribution to train wheel condition monitoring and health management since it provides the effective diagnostic information for maintenance decision to decrease the occurrence of unexpected event.
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基于递归图和卷积神经网络(RP-CNN)模型的铁路车轮故障状态监测
列车运行时的车轮状态监测是防止突发事件发生的重要任务。在本研究中,压电传感器被安装在铁路轨道上,以收集火车车轮压在轨道上时的动态电压和应变信号。这些一维时间序列信号被转换成二维递归图(RP)图像,作为两个深度学习模型Xception和EfficientNet-B7的输入数据集。二进制分类,正常或故障作为诊断输出,以指示列车车轮在该时间内的健康状态。选择五个指标来评估两个模型的性能,即准确性,精度,召回率,失分率和AUC。结果表明,两种模型对车轮状态的分类准确率均达到91.1%。此外,EfficientNet-B7在召回率(Recall)、缺货率(miss rate)和AUC指标方面表现出比Xception更好的性能,以表达在缺陷车轮识别方面的卓越能力,这对该应用程序至关重要。因此,选择efficientNet-B7作为机车车辆车轮故障诊断的一种较好的机器学习分类器。为维护决策提供有效的诊断信息,减少意外事件的发生,对列车车轮状态监测和健康管理有重要贡献。
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来源期刊
Measurement & Control
Measurement & Control 工程技术-仪器仪表
自引率
10.00%
发文量
164
审稿时长
>12 weeks
期刊介绍: Measurement and Control publishes peer-reviewed practical and technical research and news pieces from both the science and engineering industry and academia. Whilst focusing more broadly on topics of relevance for practitioners in instrumentation and control, the journal also includes updates on both product and business announcements and information on technical advances.
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