Composite interpolated hierarchical dispersion entropy: A novel and robust algorithm for mechanical fault diagnosis

IEEE Sensors Journal(2024)

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摘要
The Hierarchical Dispersion Entropy (HDE) algorithm, which combines hierarchical decomposition and dispersion entropy, can extract multi-frequency features from bearing signals. However, the data compression phenomenon caused by the non-overlapped average and difference operators filters a large amount of dynamic information hidden in hierarchical nodes. In addition, relying on a fixed mapping function i.e., Normal Cumulative Distribution Function (NCDF), the node components cannot be accurately mapped to the proper categories. These deficiencies negatively affect the characterization performance of HDE on bearing damages. Therefore, the Composite Interpolated Hierarchical Dispersion Entropy with Generalized Gaussian Distribution (CIHDE GGD ) algorithm is developed in this paper to eliminate the limitations of HDE. In this algorithm, an interpolated hierarchical decomposition scheme is designed to supplement the intrinsic dynamic information and weaken the influence of data compression. Meanwhile, based on the generalized Gaussian distribution, an optimization strategy for mapping function is further developed to dynamically fit the distributions of node components. The simulation experiments prove that benefited by the improvements, the CIHDE GGD can better extract the frequency features from different types of nonlinear signals in comparison with HDE. Afterwards, the Iterative Davies-Bouldin Index (iDBI) feature selection method is developed to filter the redundant information and refine the features. The experimental results demonstrate that the diagnostic vector obtained by CIHDE GGD and iDBI is more sensitive than those of traditional methods. Consequently, based on the combination of CIHDE GGD and iDBI, the satisfactory identification results for different types of rolling bearing damages can be obtained.
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关键词
Dispersion entropy,hierarchical dispersion entropy,feature extraction,rolling bearing,fault diagnosis
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