联营
计算机科学
火车
人工智能
变压器
断层(地质)
卷积(计算机科学)
计算机视觉
工程类
电气工程
电压
地质学
地图学
地理
人工神经网络
地震学
作者
Suchao Xie,Peng Xie,Jiacheng Wang,Lingzhi Yang
标识
DOI:10.1177/14759217251355472
摘要
To address the susceptibility of sensor signals to strong noise interference, this study proposes a high-precision fault diagnosis method based on multi-sensor information fusion. The proposed approach integrates depthwise separable convolution (DSConv) with a multi-pooling attention (MPA) mechanism and an improved Vision Transformer (IVIT). First, continuous wavelet transform is employed to convert raw time-series signals collected from multiple sensors into two-dimensional feature representations, which are then fed into the model using a multi-sensor data-layer feature fusion strategy. Subsequently, channel shuffle and DSConv are utilized to effectively extract local features, while the MPA mechanism enhances the model’s capability to perceive critical features in noisy environments. Finally, the IVIT further strengthens feature extraction and representation capabilities, producing fault diagnosis results. Experimental evaluations on three datasets demonstrate that even under a signal-to-noise ratio of −2, MPAIT-Net outperforms other models, achieving average accuracies of 96.83, 95.00, and 98.92%, respectively. Moreover, the performance of the model on datasets with complex faults and faults of different degrees is studied. The results show that the model exhibits stable performance under different noise levels, showing excellent robustness and generalization ability. The corresponding source code is publicly available at https://github.com/xieph001/MPAIT-Net .
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