论文标题

基于Hilbert Transform和小波数据包分解的铁路轮公寓的缺陷预测

Defect Prediction of Railway Wheel Flats based on Hilbert Transform and Wavelet Packet Decomposition

论文作者

Kim, Euiyoul, Jayaprakasam, Nithya, Cui, Yong, Martin, Ullrich

论文摘要

为了高效的铁路运营和维护,随着高速火车的技术进步,对车载监控系统的需求正在增加。可以通过安装在每个轴盒上的加速度计实时监测的常见缺陷之一,以便不超过相关标准的标准。这项研究旨在根据非平稳轴盒加速度(ABA)信号确定单轮平坦的位置和高度,这些信号是通过具有柔性轮毂的火车动力学模型生成的。提出的特征提取方法用于使用Hilbert Transform和小波数据包分解来提取平衡二元树上分解ABA信号的根平方分布。创建基于神经网络的缺陷预测模型,以定义输入特征和输出标签之间的关系。对于输入功能不足,通过现有功能的线性插值执行数据增强。根据检测和定位的准确性评估缺陷预测的性能,并通过增强的输入特征和高度分解的ABA信号改善。结果表明,受过训练的神经网络可以以高精度从正交能量特征中预测单轮平坦的高度和位置。

For efficient railway operation and maintenance, the demand for onboard monitoring systems is increasing with technological advances in high-speed trains. Wheel flats, one of the common defects, can be monitored in real-time through accelerometers mounted on each axle box so that the criteria of relevant standards are not exceeded. This study aims to identify the location and height of a single wheel flat based on non-stationary axle box acceleration (ABA) signals, which are generated through a train dynamics model with flexible wheelsets. The proposed feature extraction method is applied to extract the root mean square distribution of decomposed ABA signals on a balanced binary tree as orthogonal energy features using the Hilbert transform and wavelet packet decomposition. The neural network-based defect prediction model is created to define the relationship between input features and output labels. For insufficient input features, data augmentation is performed by the linear interpolation of existing features. The performance of defect prediction is evaluated in terms of the accuracy of detection and localization and improved by augmented input features and highly decomposed ABA signals. The results show that the trained neural network can predict the height and location of a single wheel flat from orthogonal energy features with high accuracy.

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