RUL prediction of railway PCCS based on wiener process model with unequal interval wear data

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Abstract

The railway pantograph carbon contact strip (PCCS) plays a critical role in collecting the electric current from the catenary to guarantee the steady power supply for the train. The catenary contacts with the PCCS and slides from one side to another side when the train runs on the track, which generates the wear on the surface of the PCCS.The thickness of the PCCScannot be smaller than a lower limit for the sake of safety. Therefore, the remaining useful life (RUL) prediction of the PCCS is beneficial for the pantograph maintenance and inventory management. In this paper, the wear data from Guangzhou Metro are analyzed in the first place. After that, the challenge of predicting the RUL for PCCS from the unequal interval wear data is addressed. A Wiener-process-based wear model and the unequal interval weighted grey linear regression combined model (UIWGLRCM) are proposed for the RUL prediction of the PCCS. The case studies demonstrate the effectiveness of the proposed method via a comparison of RUL prediction with another available method.

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Guan, Q., Wei, X., Jia, L., He, Y., & Zhang, H. (2020). RUL prediction of railway PCCS based on wiener process model with unequal interval wear data. Applied Sciences (Switzerland), 10(5). https://doi.org/10.3390/app10051616

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