Zhang Yi, Lv Yong, Ge Mao
Key Laboratory of Metallurgical Equipment and Control Technology, Wuhan University of Science and Technology, Ministry of Education, Wuhan 430081, China.
Hubei Key Laboratory of Mechanical Transmission and Manufacturing Engineering, Wuhan University of Science and Technology, Wuhan 430081, China.
Entropy (Basel). 2021 Feb 5;23(2):191. doi: 10.3390/e23020191.
The health condition of the rolling bearing seriously affects the operation of the whole mechanical system. When the rolling bearing parts fail, the time series collected in the field generally shows strong nonlinearity and non-stationarity. To obtain the faulty characteristics of mechanical equipment accurately, a rolling bearing fault detection technique based on k-optimized adaptive local iterative filtering (ALIF), improved multiscale permutation entropy (improved MPE), and BP neural network was proposed. In the ALIF algorithm, a k-optimized ALIF method based on permutation entropy (PE) is presented to select the number of ALIF decomposition layers adaptively. The completely average coarse-graining method was proposed to excavate more hidden information. The performance analysis of the simulation signal shows that the improved MPE can more accurately dig out the depth information of the time series, and the entropy value obtained is more consistent and stable. In the research application, rolling bearing time series are decomposed by k-optimized ALIF to obtain a certain number of intrinsic mode functions (IMFs). Then the improved MPE value of effective IMF is calculated and input into backpropagation (BP) neural network as the feature vector for automatic fault identification. The comparative analysis of simulation signals shows that this method can extract fault information effectively. At the same time, the experimental part shows that this scheme not only effectively extracts the fault features, but also realizes the classification and identification of different fault modes and faults of different degrees, which has a certain application prospect in the research and application direction of rolling bearing fault identification.
滚动轴承的健康状况严重影响整个机械系统的运行。当滚动轴承部件发生故障时,现场采集的时间序列通常呈现出很强的非线性和非平稳性。为了准确获取机械设备的故障特征,提出了一种基于k优化自适应局部迭代滤波(ALIF)、改进多尺度排列熵(改进MPE)和BP神经网络的滚动轴承故障检测技术。在ALIF算法中,提出了一种基于排列熵(PE)的k优化ALIF方法,以自适应选择ALIF分解层数。提出了完全平均粗粒化方法来挖掘更多隐藏信息。仿真信号的性能分析表明,改进的MPE能够更准确地挖掘时间序列的深度信息,得到的熵值更加一致和稳定。在研究应用中,通过k优化ALIF对滚动轴承时间序列进行分解,得到一定数量的本征模态函数(IMF)。然后计算有效IMF的改进MPE值,并将其作为特征向量输入到反向传播(BP)神经网络中进行自动故障识别。仿真信号的对比分析表明,该方法能够有效提取故障信息。同时,实验部分表明,该方案不仅能有效提取故障特征,还能实现不同故障模式和不同程度故障的分类识别,在滚动轴承故障识别的研究和应用方向上具有一定的应用前景。