Rolling bearings are the most crucial components of rotating machinery. Identifying defective bearings in a timely manner may prevent the malfunction of an entire machinery system. The mechanical condition monitoring field has entered the big data phase as a result of the fast advancement of machine parts. When working with large amounts of data, the manual feature extraction approach has the drawback of being inefficient and inaccurate. Data-driven methods like the Deep Learning method have been successfully used in recent years for mechanical intelligent fault detection. Convolutional neural networks (CNNs) were mostly used in earlier research to detect and identify bearing faults. The CNN model, however, suffers from the drawback of having trouble managing fault-time information, which results in a lack of classification results. In this study, bearing defects have been classified using a state-of-the-art Vision Transformer (ViT). Bearing defects were classified using Case Western Reserve University (CWRU) bearing failure laboratory experimental data. The research took into account 13 distinct kinds of defects under 0-load situations in addition to normal bearing conditions. Using the short-time Fourier transform (STFT), the vibration signals were converted into 2D time-frequency images. The 2D time-frequency images are used as input parameters for the ViT. The model achieved an overall accuracy of 98.8%.
翻译:滚动轴承是旋转机器的最关键组成部分。 及时识别有缺陷的轴承可以防止整个机械系统的故障。 机械状况监测场由于机器部件的快速进步而进入了大数据阶段。 在使用大量数据时,人工特征提取方法的缺点是低效和不准确。 近年来,在机械智能故障检测方面成功使用了深学习方法等数据驱动方法。 进化神经网络(CNNs)主要用于早期的研究中,以探测和识别承载故障。 然而,CNN模型由于管理错误时间信息有问题而出现缺陷,导致缺乏分类结果。在这项研究中,存在缺陷的分类使用了最先进的视觉变异器(ViT)。 使用Case西部储备大学(CESTRU)对缺陷进行了分类,其中含有失败的实验室实验数据。 研究除了正常的承受条件外,还考虑到在0负荷情况下13种截然不同的缺陷。 使用短期四重变换(STFT), 将振动信号转换为2D时间- 时间频率图像转换为2D 的精确度模型。 使用2- Dsal- massimmaisal images