Abstract
Abstract
Detecting faults in bearings is essential for the maintenance and operation of rotating machinery. However, achieving high accuracy and noise immunity is challenging due to the involvement of intricate and noisy signals. To address this issue, this paper introduces a multi-scale separable gated convolutional neural network (GCK-MSSC). In the GCK-MSSC model, the gate convolutional kernel replaces the conventional convolutional kernel. It is designed to dynamically adjust the convolution kernel’s weights based on the input features. Additionally, the one-dimensional global attention mechanism is incorporated, enhancing the model’s global awareness within the MSSC framework. The experimental results on two public bearing datasets confirm the performance of the proposed method. It demonstrates improved performance over current leading-edge methods, especially in terms of accuracy, and proves to be significantly robust against various levels of noise. Specifically, it achieves accuracies of 99.45% and 99.78% on the two datasets. Furthermore, even after the addition of noise with a signal-to-noise ratio of 0, it still maintains an accuracy as high as 85.65% (on the Politecnico di Torino dataset).
Funder
National Natural Science Foundation of China
Natural Science Foundation of Sichuan Province
Sichuan Agricultural University National College Student Innovation Training Program Project Funding