Li Siyu, Liu Zichang, Yan Yunbin, Wang Rongcai, Dong Enzhi, Cheng Zhonghua
Shijiazhuang Campus of Army Engineering University of PLA, Shijiazhuang 050003, China.
Sensors (Basel). 2023 Jul 16;23(14):6447. doi: 10.3390/s23146447.
The reliability and safety of diesel engines gradually decrease with the increase in running time, leading to frequent failures. To address the problem that it is difficult for the traditional fault status identification methods to identify diesel engine faults accurately, a diesel engine fault status identification method based on synchro squeezing S-transform (SSST) and vision transformer (ViT) is proposed. This method can effectively combine the advantages of the SSST method in processing non-linear and non-smooth signals with the powerful image classification capability of ViT. The vibration signals reflecting the diesel engine status are collected by sensors. To solve the problems of low time-frequency resolution and weak energy aggregation in traditional signal time-frequency analysis methods, the SSST method is used to convert the vibration signals into two-dimensional time-frequency maps; the ViT model is used to extract time-frequency image features for training to achieve diesel engine status assessment. Pre-set fault experiments are carried out using the diesel engine condition monitoring experimental bench, and the proposed method is compared with three traditional methods, namely, ST-ViT, SSST-2DCNN and FFT spectrum-1DCNN. The experimental results show that the overall fault status identification accuracy in the public dataset and the actual laboratory data reaches 98.31% and 95.67%, respectively, providing a new idea for diesel engine fault status identification.
随着运行时间的增加,柴油机的可靠性和安全性逐渐降低,导致故障频发。为了解决传统故障状态识别方法难以准确识别柴油机故障的问题,提出了一种基于同步挤压S变换(SSST)和视觉Transformer(ViT)的柴油机故障状态识别方法。该方法能够有效结合SSST方法在处理非线性和非平稳信号方面的优势以及ViT强大的图像分类能力。通过传感器采集反映柴油机状态的振动信号。为解决传统信号时频分析方法中时频分辨率低和能量聚集性弱的问题,采用SSST方法将振动信号转换为二维时频图;利用ViT模型提取时频图像特征进行训练,以实现柴油机状态评估。利用柴油机状态监测实验台进行预设故障实验,并将所提方法与三种传统方法,即ST-ViT、SSST-2DCNN和FFT频谱-1DCNN进行比较。实验结果表明,在公共数据集和实际实验室数据中,总体故障状态识别准确率分别达到98.31%和95.67%,为柴油机故障状态识别提供了新思路。