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Transformer Based on Multi-Scale Local Perception and Contrastive Learning for Train Axle Fatigue Crack Acoustic Emission Detection

  • 01-09-2025
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Abstract

The article delves into the critical role of axle condition monitoring in ensuring the safety and performance of rail transit systems. It highlights the challenges posed by mechanical loads that can lead to surface damages and fatigue cracks in train axles, emphasizing the need for effective non-destructive testing methods. The focus is on acoustic emission (AE) technology, which offers real-time monitoring and accurate detection of crack damage. The article introduces a groundbreaking model architecture called Multi-Scale CoTrans, which integrates multi-scale local perception and contrastive learning to enhance the identification and classification of AE signals. This innovative approach addresses the limitations of traditional methods, such as sensitivity to environmental interference and the inability to fully utilize AE signals. The model's unique design, which includes a local-global coupling architecture and multi-task learning, significantly improves the ability to capture both short-range and long-range features, making it highly effective for detecting fatigue cracks in train axles. The article provides a comprehensive overview of the model's development, experimental setup, and performance evaluation, demonstrating its superior accuracy and robustness compared to existing methods. The detailed analysis and experimental results underscore the potential of this advanced deep learning technique in revolutionizing structural health monitoring and ensuring the safety of rail transit systems.

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Title
Transformer Based on Multi-Scale Local Perception and Contrastive Learning for Train Axle Fatigue Crack Acoustic Emission Detection
Authors
Li Lin
Liwen Ding
Qingwei Peng
Publication date
01-09-2025
Publisher
Springer US
Published in
Journal of Nondestructive Evaluation / Issue 3/2025
Print ISSN: 0195-9298
Electronic ISSN: 1573-4862
DOI
https://doi.org/10.1007/s10921-025-01199-5
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