School of Information Science and Technology, Yunnan Normal University, Kunming 650500, China.
The Laboratory of Pattern Recognition and Artificial Intelligence, Kunming 650500, China.
Sensors (Basel). 2022 Sep 22;22(19):7195. doi: 10.3390/s22197195.
In order to separate the sub-signals and extract the feature frequency in the signal accurately, we proposed a parameter-adaptive time-varying filtering empirical mode decomposition (TVF-EMD) feature extraction method based on the improved grasshopper optimization algorithm (IGOA). The method not only improved the local optimal problem of GOA, but could also determine the bandwidth threshold and B-spline order of TVF-EMD adaptively. Firstly, a nonlinear decreasing strategy was introduced in this paper to adjust the decreasing coefficient of GOA dynamically. Then, energy entropy mutual information () was introduced to comprehensively consider the energy distribution of the modes and the dependence between the modes and the original signal, and the was used as the objective function. In addition, TVF-EMD was optimized by IGOA and the optimal parameters matching the input signal were obtained. Finally, the feature frequency of the signal was extracted by analyzing the sensitive mode with larger kurtosis. The optimization experiments of 23 sets of benchmark functions showed that IGOA not only enhanced the balance between exploration and development, but also improved the global and local search ability and stability of the algorithm. The analysis of the simulation signal and bearing signal shows that the parameter-adaptive TVF-EMD method can separate the modes with specific physical meanings accurately. Compared with ensemble empirical mode decomposition (EEMD), variational mode decomposition (VMD), TVF-EMD with fixed parameters and GOA-TVF-EMD, the decomposition performance of the proposed method is better. The proposed method not only improved the under-decomposition, over-decomposition and modal aliasing problems of TVF-EMD, but could also accurately separate the frequency components of the signal and extract the included feature information, so it has practical significance in mechanical fault diagnosis.
为了准确地分离子信号并提取特征频率,我们提出了一种基于改进的蚱蜢优化算法(IGOA)的参数自适应时变滤波经验模态分解(TVF-EMD)特征提取方法。该方法不仅改进了 GOA 的局部最优问题,而且还可以自适应地确定 TVF-EMD 的带宽阈值和 B 样条阶数。首先,本文引入了一种非线性递减策略来动态调整 GOA 的递减系数。然后,引入能量熵互信息()来综合考虑模态的能量分布以及模态与原始信号之间的相关性,将作为目标函数。此外,通过 IGOA 对 TVF-EMD 进行优化,获得与输入信号匹配的最佳参数。最后,通过分析具有较大峭度的敏感模态来提取信号的特征频率。23 组基准函数的优化实验表明,IGOA 不仅增强了探索与开发之间的平衡,而且提高了算法的全局和局部搜索能力和稳定性。对仿真信号和轴承信号的分析表明,参数自适应 TVF-EMD 方法能够准确地分离具有特定物理意义的模态。与集合经验模态分解(EEMD)、变分模态分解(VMD)、具有固定参数的 TVF-EMD 和 GOA-TVF-EMD 相比,所提出的方法具有更好的分解性能。该方法不仅改进了 TVF-EMD 的欠分解、过分解和模态混淆问题,而且能够准确地分离信号的频率分量并提取包含的特征信息,因此在机械故障诊断中具有实际意义。