2023
DOI: 10.1088/1361-6501/ad11c9
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Rapid learning of bearing signal pattern using CfCs promoted by a self-attention mechanism

Yanli Yang,
Weisheng Pan,
Huimin Zhou

Abstract: Deep learning is helpful for improving the fault recognition ability of bearings, but this kind of model relies on a large number of training samples and computing resources. In this paper, an algorithm termed a closed-form continuous-depth neural network (CfC) assisted by an information compression-interaction (ICI) module and spatial conjunction attention (SCA) module (CfC-ISCA) is proposed. The ICI module extracts the main features of input signals, the SCA module is designed for positioning target features… Show more

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