Future Vehicle Engineering Department, Inha University, 100 Inharo, Mitchuholgu, Incheon 22212, Korea.
Mechanical Engineering Department, Inha University, 100 Inharo, Mitchuholgu, Incheon 22212, Korea.
Sensors (Basel). 2022 Feb 5;22(3):1210. doi: 10.3390/s22031210.
Since artificial intelligence (AI) was introduced into engineering fields, it has made many breakthroughs. Machine learning (ML) algorithms have been very commonly used in structural health monitoring (SHM) systems in the last decade. In this study, a vibration-based early stage of bolt loosening detection and identification technique is proposed using ML algorithms, for a motor fastened with four bolts (M8 × 1.5) to a stationary support. First, several cases with fastened and loosened bolts were established, and the motor was operated in three different types of working condition (800 rpm, 1000 rpm, and 1200 rpm), in order to obtain enough vibration data. Second, for feature extraction of the dataset, the short-time Fourier transform (STFT) method was performed. Third, different types of classifier of ML were trained, and a new test dataset was applied to evaluate the performance of the classifiers. Finally, the classifier with the greatest accuracy was identified. The test results showed that the capability of the classifier was satisfactory for detecting bolt loosening and identifying which bolt or bolts started to lose their preload in each working condition. The identified classifier will be implemented for online monitoring of the early stage of bolt loosening of a multi-bolt structure in future works.
自从人工智能(AI)被引入工程领域以来,它已经取得了许多突破。在过去的十年中,机器学习(ML)算法在结构健康监测(SHM)系统中得到了非常广泛的应用。在本研究中,提出了一种基于振动的早期螺栓松动检测和识别技术,使用 ML 算法,用于将一个带有四个螺栓(M8×1.5)的电机固定在一个固定支架上。首先,建立了几个紧固和松动螺栓的情况,并在三种不同的工作状态(800rpm、1000rpm 和 1200rpm)下操作电机,以获得足够的振动数据。其次,为了对数据集进行特征提取,采用了短时傅里叶变换(STFT)方法。第三,训练了不同类型的 ML 分类器,并应用新的测试数据集来评估分类器的性能。最后,确定了具有最高精度的分类器。测试结果表明,该分类器具有检测螺栓松动的能力,并能够识别在每种工作状态下哪个螺栓或哪些螺栓开始失去预紧力。在未来的工作中,将实现所识别的分类器,用于多螺栓结构螺栓松动的早期在线监测。