2023
DOI: 10.1109/tim.2023.3316221
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Unsupervised Discrepancy-Based Domain Adaptation Network to Detect Rail Joint Condition

Gao-Feng Jiang,
Su-Mei Wang,
Yi-Qing Ni
et al.

Abstract: Damage to maglev rail joints, which connect adjacent rail segments, threatens the safety and comfort of railway systems. Machine learning methods have been used in combination with online monitoring data to assess the health conditions of maglev rail joints. However, most of the existing methods rely on the data collected in controlled scenarios, such as those involving constant train operation speeds. Given the diversity of operational conditions, a model learned from one known case (source domain) cannot be … Show more

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