Li Xiaoyu, Jia Baozhu, Liao Zhiqiang, Wang Xin
Naval Architecture and Shipping College, Guangdong Ocean University, Zhanjiang 524088, China.
Technical Research Center for Ship Intelligence and Safety Engineering of Guangdong Province, Zhanjiang 524088, China.
Sensors (Basel). 2024 May 30;24(11):3540. doi: 10.3390/s24113540.
In view of the frequent failures occurring in rolling bearings, the strong background noise present in signals, weak features, and difficulties associated with extracting fault characteristics, a method of enhancing and diagnosing rolling bearing faults based on coarse-grained lattice features (CGLFs) is proposed. First, the vibrational signals of bearings are subjected to adaptive filtering to eliminate background noise. Second, frequency-domain transformation is performed, and a coarse-grained approach is used to continuously segment the spectrum. Within each segment, amplitude-enhancement operations are executed, transforming the data into a CGLF graph that enhances fault characteristics. This graph is then fed into a Swin Transformer-based pattern-recognition network. Third and finally, a high-precision fault diagnosis model is constructed using fully connected layers and Softmax, enabling the diagnosis of bearing faults. The fault recognition accuracy reaches 98.30% and 98.50% with public datasets and laboratory data, respectively, thereby validating the feasibility and effectiveness of the proposed method. This research offers an efficient and feasible fault diagnosis approach for rolling bearings.
鉴于滚动轴承频繁出现故障、信号中存在强烈背景噪声、特征微弱以及提取故障特征存在困难,提出了一种基于粗粒度格特征(CGLF)的滚动轴承故障增强与诊断方法。首先,对轴承的振动信号进行自适应滤波以消除背景噪声。其次,进行频域变换,并采用粗粒度方法对频谱进行连续分割。在每个分割段内,执行幅度增强操作,将数据转换为增强故障特征的粗粒度格特征图。然后将该图输入基于Swin Transformer的模式识别网络。第三也是最后,使用全连接层和Softmax构建高精度故障诊断模型,实现对轴承故障的诊断。使用公共数据集和实验室数据时,故障识别准确率分别达到98.30%和98.50%,从而验证了所提方法的可行性和有效性。本研究为滚动轴承提供了一种高效可行的故障诊断方法。