Shi Yuxin, Wang Hongwei, Sun Wenlei, Bai Ruoyang
School of Mechanical Engineering, Xinjiang University, Urumqi 830046, China.
Entropy (Basel). 2024 Aug 9;26(8):675. doi: 10.3390/e26080675.
To tackle the issue of the traditional intelligent diagnostic algorithm's insufficient utilization of correlation characteristics within the time series of fault signals and to meet the challenges of accuracy and computational complexity in rotating machinery fault diagnosis, a novel approach based on a recurrence binary plot (RBP) and a lightweight, deep, separable, dilated convolutional neural network (DSD-CNN) is proposed. Firstly, a recursive encoding method is used to convert the fault vibration signals of rotating machinery into two-dimensional texture images, extracting feature information from the internal structure of the fault signals as the input for the model. Subsequently, leveraging the excellent feature extraction capabilities of a lightweight convolutional neural network embedded with attention modules, the fault diagnosis of rotating machinery is carried out. The experimental results using different datasets demonstrate that the proposed model achieves excellent diagnostic accuracy and computational efficiency. Additionally, compared with other representative fault diagnosis methods, this model shows better anti-noise performance under different noise test data, and it provides a reliable and efficient reference solution for rotating machinery fault-classification tasks.
为了解决传统智能诊断算法对故障信号时间序列中相关特征利用不足的问题,并应对旋转机械故障诊断中准确性和计算复杂性的挑战,提出了一种基于递归二值图(RBP)和轻量级深度可分离扩张卷积神经网络(DSD-CNN)的新方法。首先,采用递归编码方法将旋转机械的故障振动信号转换为二维纹理图像,从故障信号的内部结构中提取特征信息作为模型的输入。随后,利用嵌入注意力模块的轻量级卷积神经网络的优异特征提取能力,对旋转机械进行故障诊断。使用不同数据集的实验结果表明,所提出的模型具有优异的诊断准确性和计算效率。此外,与其他代表性故障诊断方法相比,该模型在不同噪声测试数据下表现出更好的抗噪声性能,为旋转机械故障分类任务提供了可靠且高效的参考解决方案。