Abstract

As the “heart” of high-speed train, traction systems play an important role in the safe operation of trains, of which the operation and maintenance level is still unable to meet the needs of modern railway transportation. Fortunately, multifarious advanced fault prognosis methods have been developed to deal with the dilemma. Among them, deep learning ones have received special attention due to their unique advantages. This paper first reveals the structural characteristics of traction systems in high-speed trains. Then, various representative deep learning based prognosis methods are compared and summarized, focusing on the analysis of their pros and cons. Finally, we point out the challenges and speculate the future trends in this field. This paper may serve as a referee for the interested researchers in fault prognosis and high-speed train traction systems fields, along with the potential directions.

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