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A multi-sensor fusion framework for detecting small amplitude hunting of high-speed trains

机译:一种多传感器融合框架,用于检测高速列车的小幅度狩猎

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摘要

Hunting monitoring is very important for high-speed trains to achieve safe operation. But all the monitoring systems are designed to detect hunting only after hunting has developed sufficiently. Under these circumstances, some damage may be caused to the railway track and train wheels. The work reported in this paper aims to solve the detection problem of small amplitude hunting before the lateral instability of high-speed trains occurs. But the information from a single sensor can only reflect the local operation state of a train. So, to improve the accuracy and robustness of the monitoring system, a multi-sensor fusion framework for detecting small amplitude hunting of high-speed trains based on an improved Dempster–Shafer (DS) theory is proposed. The framework consists of a series of steps. Firstly, the method of combining empirical mode decomposition and sample entropy is used to extract features of each operation condition. Secondly, the posterior probability support vector machine is used to get the basic probability assignment. Finally, the DS theory improved by the authors is proposed to get a more accurate detection result. This framework developed by the authors is used on high-speed trains with success and experimental findings are provided. This multi-sensor fusion framework can also be used in other condition monitoring systems on high-speed trains, such as the gearbox monitoring system, from which nonstationary signals are acquired too.
机译:蛇行监测对高速列车实现安全运行至关重要。但是,所有的监控系统都是在狩猎充分发展后才被设计用来检测狩猎的。在这种情况下,可能会对铁路轨道和火车车轮造成一些损坏。本文的工作旨在解决高速列车横向失稳前的小振幅振荡检测问题。但单个传感器的信息只能反映列车的局部运行状态。因此,为了提高监控系统的准确性和鲁棒性,基于改进的Dempster-Shafer(DS)理论,提出了一种用于检测高速列车小幅度摆动的多传感器融合框架。该框架由一系列步骤组成。首先,采用经验模态分解和样本熵相结合的方法提取各工况的特征。其次,利用后验概率支持向量机进行基本概率赋值。最后,为了得到更准确的检测结果,提出了作者改进的DS理论。该框架已成功应用于高速列车上,并给出了实验结果。这种多传感器融合框架也可用于高速列车上的其他状态监测系统,例如变速箱监测系统,也可从中获取非平稳信号。

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