2024
DOI: 10.1155/2024/3715605
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An Intelligent Two‐Stage Fault Classification Model for Railway Turnout Systems Based on FastDTW

Huasheng Sun,
Yingguo Fu,
Sizhong Zhang
et al.

Abstract: The identification and classification of railway turnout faults are essential for guaranteeing train safety. Traditional diagnostic methods for these faults face challenges due to limited accuracy, stemming from the scarcity of fault samples, and often fail to provide detailed fault classification. In response to these issues, we introduce an advanced two‐stage model for the classification of railway turnout faults, utilizing the FastDTW algorithm, known for its efficient approximation of DTW (dynamic time war… Show more

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