Li Yang, Gu Xiaojiao, Wei Yonghe
College of Mechanical Engineering, Shenyang Ligong University, Nanping Middle Road 6, Shenyang 110159, China.
Sensors (Basel). 2024 Nov 25;24(23):7516. doi: 10.3390/s24237516.
To tackle the issue of limited sample data in small sample fault diagnosis for rolling bearings using deep learning, we propose a fault diagnosis method that integrates a KANs-CNN network. Initially, the raw vibration signals are converted into two-dimensional time-frequency images via a continuous wavelet transform. Next, Using CNN combined with KANs for feature extraction, the nonlinear activation of KANs helps extract deep and complex features from the data. After the output of CNN-KANs, an FAN network module is added. The FAN module can employ various feature aggregation strategies, such as weighted averaging, max pooling, addition aggregation, etc., to combine information from multiple feature levels. To further tackle the small sample issue, data generation is performed on the original data through diffusion networks under conditions of fewer samples for bearings and tools, thereby increasing the sample size of the dataset and enhancing fault diagnosis accuracy. Experimental results demonstrate that, under small sample conditions, this method achieves higher accuracy compared to other approaches.
为了解决深度学习在滚动轴承小样本故障诊断中样本数据有限的问题,我们提出了一种集成KANs-CNN网络的故障诊断方法。首先,通过连续小波变换将原始振动信号转换为二维时频图像。接下来,利用CNN结合KANs进行特征提取,KANs的非线性激活有助于从数据中提取深层和复杂的特征。在CNN-KANs输出后,添加一个FAN网络模块。FAN模块可以采用各种特征聚合策略,如加权平均、最大池化、加法聚合等,来组合来自多个特征层的信息。为了进一步解决小样本问题,在轴承和工具样本较少的情况下,通过扩散网络对原始数据进行数据生成,从而增加数据集的样本大小并提高故障诊断精度。实验结果表明,在小样本条件下,该方法比其他方法具有更高的准确率。