TL;DR
This paper introduces a novel fault diagnosis model combining multi-scale quaternion CNN, BiGRU, and cross self-attention feature fusion, achieving high accuracy and robustness in bearing fault detection across multiple datasets.
Contribution
It is the first to apply quaternion convolution in a multi-scale architecture for fault diagnosis and integrates cross self-attention for enhanced feature discrimination.
Findings
Achieves up to 99.99% accuracy on CWRU dataset
Demonstrates robustness and superior performance over existing methods
Validates effectiveness through ablation and practical tests
Abstract
In recent years, deep learning has led to significant advances in bearing fault diagnosis (FD). Most techniques aim to achieve greater accuracy. However, they are sensitive to noise and lack robustness, resulting in insufficient domain adaptation and anti-noise ability. The comparison of studies reveals that giving equal attention to all features does not differentiate their significance. In this work, we propose a novel FD model by integrating multi-scale quaternion convolutional neural network (MQCNN), bidirectional gated recurrent unit (BiGRU), and cross self-attention feature fusion (CSAFF). We have developed innovative designs in two modules, namely MQCNN and CSAFF. Firstly, MQCNN applies quaternion convolution to multi-scale architecture for the first time, aiming to extract the rich hidden features of the original signal from multiple scales. Then, the extracted multi-scale…
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Taxonomy
MethodsSoftmax · Bidirectional GRU · Convolution
