E Xuezhuang, Wang Wenbo
Hubei Province Key Laboratory of System Science in Metallurgical Process, Wuhan University of Science and Technology, Wuhan 430081, China.
Sensors (Basel). 2023 Jul 30;23(15):6801. doi: 10.3390/s23156801.
An escalator is an essential large-scale public transport equipment; once it fails, this inevitably affects the operation of the escalator and even leads to safety concerns, or perhaps accidents. As an important structural part of the escalator, the foundation of the main engine can cause the operation of the escalator to become abnormal when its fixing bolts become loose. Aiming to reduce the difficulty of extracting the fault features of the footing bolt when it loosens, a fault feature extraction method is proposed in this paper based on empirical wavelet transform (EWT) and the gray-gradient co-occurrence matrix (GGCM). Firstly, the Teager energy operator and multi-scale peak determination are used to improve the spectral partitioning ability of EWT, and the improved EWT is used to decompose the original foundation vibration signal into a series of empirical mode functions (EMFs). Then, the gray-gradient co-occurrence matrix of each EMF is constructed, and six texture features of the gray-gradient co-occurrence matrix are calculated as the fault feature vectors of this EMF. Finally, the fault features of all EMFs are fused, and the degree of the loosening of the escalator foundation bolt is identified using the fused multi-scale feature vector and BiLSTM. The experimental results show that the proposed method based on EWT and GGCM feature extraction can diagnose the loosening degree of foundation bolts more effectively and has a certain engineering application value.
自动扶梯是重要的大型公共交通设备;一旦发生故障,必然会影响自动扶梯的运行,甚至引发安全隐患,甚至可能导致事故。作为自动扶梯的重要结构部件,主机基础的固定螺栓松动时会导致自动扶梯运行异常。为降低地脚螺栓松动时故障特征提取的难度,本文提出一种基于经验小波变换(EWT)和灰度共生矩阵(GGCM)的故障特征提取方法。首先,利用Teager能量算子和多尺度峰值确定来提高EWT的频谱划分能力,并用改进后的EWT将原始基础振动信号分解为一系列经验模态函数(EMF)。然后,构建每个EMF的灰度共生矩阵,并计算灰度共生矩阵的六个纹理特征作为该EMF的故障特征向量。最后,融合所有EMF的故障特征,利用融合后的多尺度特征向量和双向长短期记忆网络(BiLSTM)识别自动扶梯基础螺栓的松动程度。实验结果表明,所提出的基于EWT和GGCM特征提取的方法能更有效地诊断基础螺栓的松动程度,具有一定的工程应用价值。