2024
DOI: 10.1111/mice.13235
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Wear diagnosis for rail profile data using a novel multidimensional scaling clustering method

D. Shang,
Shuai Su,
Y. K. Sun
et al.

Abstract: The diagnosis of railway system faults is significant for its comfort, efficiency, and safety. The rail surface wear is the key impact factor when considering the health conditions of rails. This paper accomplishes contactless rail wear diagnosis by using multidimensional scaling based on a novel informational dissimilarity measure (IDM) to cluster intact and different worn rail profile data. The IDM uses weighted‐probability distribution of dispersion patterns to extract accurate time domain features from rai… Show more

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