计算机科学
方位(导航)
公制(单位)
领域(数学分析)
断层(地质)
机制(生物学)
弹丸
人工智能
算法
地质学
数学
材料科学
物理
工程类
数学分析
运营管理
地震学
量子力学
冶金
作者
Hao Zhong,Deqiang He,Zhenpeng Lao,Zhenzhen Jin,Guoqiang Shen,Yanjun Chen
标识
DOI:10.1088/1361-6501/ad30b6
摘要
Abstract Traction motor bearings, as a crucial component of subway trains, play a pivotal role in ensuring the safety of train operations. Therefore, intelligent diagnosis of train bearings holds significant importance. However, due to the complex and dynamic nature of bearing conditions coupled with limited fault data availability, traditional diagnostic methods fail to yield satisfactory results. To address this issue, we propose an improved metrics-based meta-learning approach for accurate few-shot cross-domain fault diagnosis of train bearings. Firstly, we introduce a 1D-signal channel attention mechanism that effectively extracts latent features and enhances recognition accuracy. Secondly, by incorporating the Adabound algorithm into our model framework, we further enhance its classification performance. Finally, through several case studies, we demonstrate the effectiveness of our proposed method in comparison to other approaches within similar settings.
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