Tang Meng, Liao Yaxuan, Luo Fan, Li Xiangshun
School of Automation, Wuhan University of Technology, Wuhan 430070, China.
Entropy (Basel). 2022 May 12;24(5):681. doi: 10.3390/e24050681.
When rotating machinery fails, the consequent vibration signal contains rich fault feature information. However, the vibration signal bears the characteristics of nonlinearity and nonstationarity, and is easily disturbed by noise, thus it may be difficult to accurately extract hidden fault features. To extract effective fault features from the collected vibration signals and improve the diagnostic accuracy of weak faults, a novel method for fault diagnosis of rotating machinery is proposed. The new method is based on Fast Iterative Filtering (FIF) and Parameter Adaptive Refined Composite Multiscale Fluctuation-based Dispersion Entropy (PARCMFDE). Firstly, the collected original vibration signal is decomposed by FIF to obtain a series of intrinsic mode functions (IMFs), and the IMFs with a large correlation coefficient are selected for reconstruction. Then, a PARCMFDE is proposed for fault feature extraction, where its embedding dimension and class number are determined by Genetic Algorithm (GA). Finally, the extracted fault features are input into Fuzzy C-Means (FCM) to classify different states of rotating machinery. The experimental results show that the proposed method can accurately extract weak fault features and realize reliable fault diagnosis of rotating machinery.
旋转机械发生故障时,随之产生的振动信号包含丰富的故障特征信息。然而,振动信号具有非线性和非平稳性的特点,且容易受到噪声干扰,因此可能难以准确提取隐藏的故障特征。为了从采集到的振动信号中提取有效的故障特征,提高微弱故障的诊断准确率,提出了一种旋转机械故障诊断的新方法。该新方法基于快速迭代滤波(FIF)和基于参数自适应细化复合多尺度波动的散度熵(PARCMFDE)。首先,利用FIF对采集到的原始振动信号进行分解,得到一系列固有模态函数(IMF),并选择相关系数较大的IMF进行重构。然后,提出了一种PARCMFDE用于故障特征提取,其嵌入维数和类别数由遗传算法(GA)确定。最后,将提取的故障特征输入模糊C均值(FCM)对旋转机械的不同状态进行分类。实验结果表明,该方法能够准确提取微弱故障特征,实现旋转机械可靠的故障诊断。