Wang Yaping, Zhang Sheng, Cao Ruofan, Xu Di, Fan Yuqi
Key Laboratory of Advanced Manufacturing and Intelligent Technology, Harbin University of Science and Technology, Harbin 150080, China.
School of Mechanical and Power Engineering, Harbin University of Science and Technology, Harbin 150080, China.
Entropy (Basel). 2023 Jun 1;25(6):889. doi: 10.3390/e25060889.
In complex industrial environments, the vibration signal of the rolling bearing is covered by noise, which makes fault diagnosis inaccurate. In order to overcome the effect of noise on the signal, a rolling bearing fault diagnosis method based on the WOA-VMD (Whale Optimization Algorithm-Variational Mode Decomposition) and the GAT (Graph Attention network) is proposed to deal with end effect and mode mixing issues in signal decomposition. Firstly, the WOA is used to adaptively determine the penalty factor and decomposition layers in the VMD algorithm. Meanwhile, the optimal combination is determined and input into the VMD, which is used to decompose the original signal. Then, the Pearson correlation coefficient method is used to select IMF (Intrinsic Mode Function) components that have a high correlation with the original signal, and selected IMF components are reconstructed to remove the noise in the original signal. Finally, the KNN (K-Nearest Neighbor) method is used to construct the graph structure data. The multi-headed attention mechanism is used to construct the fault diagnosis model of the GAT rolling bearing in order to classify the signal. The results show an obvious noise reduction effect in the high-frequency part of the signal after the application of the proposed method, where a large amount of noise was removed. In the diagnosis of rolling bearing faults, the accuracy of the test set diagnosis in this study was 100%, which is higher than that of the four other compared methods, and the diagnosis accuracy rate of various faults reached 100%.
在复杂的工业环境中,滚动轴承的振动信号被噪声所掩盖,这使得故障诊断不准确。为了克服噪声对信号的影响,提出了一种基于鲸鱼优化算法-变分模态分解(WOA-VMD)和图注意力网络(GAT)的滚动轴承故障诊断方法,以解决信号分解中的端点效应和模态混叠问题。首先,利用鲸鱼优化算法自适应地确定变分模态分解算法中的惩罚因子和分解层数。同时,确定最优组合并输入到变分模态分解中,用于分解原始信号。然后,采用皮尔逊相关系数法选择与原始信号相关性高的本征模态函数(IMF)分量,并对所选的IMF分量进行重构以去除原始信号中的噪声。最后,使用K近邻(KNN)方法构建图结构数据。利用多头注意力机制构建图注意力网络滚动轴承故障诊断模型,对信号进行分类。结果表明,应用该方法后,信号高频部分有明显的降噪效果,去除了大量噪声。在滚动轴承故障诊断中,本研究中测试集诊断的准确率为100%,高于其他四种对比方法,各种故障的诊断准确率均达到100%。