A self-adaptive phase-segmentation and health assessment framework for point machines

IET Intelligent Transport Systems(2023)

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摘要
Health assessment for point machines is crucial to the safety of rail systems. The operation of the point machine is a typical multi-stage process, each with its own characteristic features that allow a health assessment. Therefore, to segment various phases self-adaptively is quite essential to assess the health state of the point machine. Besides, the degradation of the point machine is characterized as non-linear. However, these issues are barely discussed when assessing the degradation degree. By converting it into a multi-classification problem, this paper proposes a novel phase segmentation method based on dimensionless time-domain features and characteristics of time series by utilizing the adaptive Multiclass Mahalanobis Taguchi System (aMMTS) to segment the signal self-adaptively. Furthermore, this paper proposes a novel algorithm named Non-linear Dynamic Time Warping (NLDTW), which modifies the conventional Dynamic Time Warping (DTW) by using a non-linear distance to overcome the lack of global consistency in the non-linear degradation assessment. Finally, a modified formula of confidence value is presented to assess the actual degradation degree. The efficiency and feasibility of the proposed framework have been verified by the actual data collected from the point machines of Guangzhou Metro.
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关键词
aMMTS,confidence value,degradation degree,health assessment,non-linear dynamic time warping,phase segmentation,point machine
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