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Analysis of Non-stationary Signals Based on Nonlinear Chaotic Theories

Analysis of Non-stationary Signals Based on Nonlinear Chaotic Theories
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摘要 In the paper, two nonlinear parameter estimation methods based on chaotic theory, surrogate data method and Lyapunov exponents, are used to distinguish the difference of non-stationary signals. After brief introducting of the corresponding algorithms, two typical different non-stationary signals with different nonlinear constraining boundaries are taken to be compared by using the above two methods respectively. The obtained results demonstrate that the apparently similar signals are distinguished effectively in a quantitative way by applying above nonlinear chaotic analyses. In the paper, two nonlinear parameter estimation methods based on chaotic theory, surrogate data method and Lyapunov exponents, are used to distinguish the difference of non-stationary signals. After brief introducting of the corresponding algorithms, two typical different non-stationary signals with different nonlinear constraining boundaries are taken to be compared by using the above two methods respectively. The obtained results demonstrate that the apparently similar signals are distinguished effectively in a quantitative way by applying above nonlinear chaotic analyses.
作者 HAN Qing-peng
出处 《International Journal of Plant Engineering and Management》 2011年第4期249-254,共6页 国际设备工程与管理(英文版)
基金 supported by the National Natural Science Foundation of China NSFC under Grant No.10972192
关键词 non-stationary signals surrogate data method Lyapunov exponents non-stationary signals surrogate data method Lyapunov exponents
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