Ji Guanni, Wang Yu, Wang Fei
School of Zhongxing Communication, Xi'an Traffic Engineering Institute, Xi'an 710300, China.
Entropy (Basel). 2023 May 25;25(6):845. doi: 10.3390/e25060845.
Marine background noise (MBN) is the background noise of the marine environment, which can be used to invert the parameters of the marine environment. However, due to the complexity of the marine environment, it is difficult to extract the features of the MBN. In this paper, we study the feature extraction method of MBN based on nonlinear dynamics features, where the nonlinear dynamical features include two main categories: entropy and Lempel-Ziv complexity (LZC). We have performed single feature and multiple feature comparative experiments on feature extraction based on entropy and LZC, respectively: for entropy-based feature extraction experiments, we compared feature extraction methods based on dispersion entropy (DE), permutation entropy (PE), fuzzy entropy (FE), and sample entropy (SE); for LZC-based feature extraction experiments, we compared feature extraction methods based on LZC, dispersion LZC (DLZC) and permutation LZC (PLZC), and dispersion entropy-based LZC (DELZC). The simulation experiments prove that all kinds of nonlinear dynamics features can effectively detect the change of time series complexity, and the actual experimental results show that regardless of the entropy-based feature extraction method or LZC-based feature extraction method, they both present better feature extraction performance for MBN.
海洋背景噪声(MBN)是海洋环境的背景噪声,可用于反演海洋环境参数。然而,由于海洋环境的复杂性,难以提取MBN的特征。本文研究基于非线性动力学特征的MBN特征提取方法,其中非线性动力学特征主要包括两类:熵和莱姆普尔-齐夫复杂度(LZC)。我们分别基于熵和LZC进行了特征提取的单特征和多特征对比实验:对于基于熵的特征提取实验,我们比较了基于散布熵(DE)、排列熵(PE)、模糊熵(FE)和样本熵(SE)的特征提取方法;对于基于LZC的特征提取实验,我们比较了基于LZC、散布LZC(DLZC)、排列LZC(PLZC)以及基于散布熵的LZC(DELZC)的特征提取方法。仿真实验证明,各类非线性动力学特征均可有效检测时间序列复杂度的变化,实际实验结果表明,无论是基于熵的特征提取方法还是基于LZC的特征提取方法,对MBN均呈现出较好的特征提取性能。