计算机科学
稳健性(进化)
人工智能
学习迁移
模式识别(心理学)
机器学习
数据挖掘
生物化学
化学
基因
作者
L. Liu,Weihua Zhang,Fengshou Gu,Dongli Song,Guiting Tang,Yao Cheng
标识
DOI:10.1177/14759217241261926
摘要
The field of bearing fault diagnosis has witnessed remarkable advancements with cross-domain fault diagnosis techniques. Nonetheless, these existing methods suffer from two main drawbacks. First, the input length of these methods is fixed, such as 2048 sample points, irrespective of the diverse sampling frequencies, bearing structure parameters, and rotational speeds observed among transfer objects. Additionally, the transfer learning methods currently employed are not robust to noise, rendering them incapable of functioning optimally in contaminated target domains. To address the aforementioned challenges, this study presents an unsupervised transfer network for train axle bearing fault diagnosis. First, an adaptive input module is proposed, which enables the input length of the proposed network to be adaptively selected based on parameters such as sampling frequency and bearing structure. Then, an enhanced feature learning block with sharing parameters is designed to enhance the transfer learning feature extraction capability under noise condition. Next, a dynamic channel pruning module is proposed to optimize of the proposed network. Finally, the transferability of the proposed network is demonstrated through experiments involving two types of transfer learning tasks. The proposed network exhibits robustness to noise and outperforms existing methods by achieving higher diagnostic accuracy and stability.
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