Distinguish between Stochastic and Chaotic Signals by a Local Structure-Based Entropy

Author:

Zhang ZelinORCID,Wu Jun,Chen Yufeng,Wang Ji,Xu JinyuORCID

Abstract

As a measure of complexity, information entropy is frequently used to categorize time series, such as machinery failure diagnostics, biological signal identification, etc., and is thought of as a characteristic of dynamic systems. Many entropies, however, are ineffective for multivariate scenarios due to correlations. In this paper, we propose a local structure entropy (LSE) based on the idea of a recurrence network. Given certain tolerance and scales, LSE values can distinguish multivariate chaotic sequences between stochastic signals. Three financial market indices are used to evaluate the proposed LSE. The results show that the LSEFSTE100 and LSES&P500 are higher than LSESZI, which indicates that the European and American stock markets are more sophisticated than the Chinese stock market. Additionally, using decision trees as the classifiers, LSE is employed to detect bearing faults. LSE performs higher on recognition accuracy when compared to permutation entropy.

Funder

Doctoral Fund of Hubei University of Automotive Technology

Hubei Key Laboratory of Applied Mathematics

Publisher

MDPI AG

Subject

General Physics and Astronomy

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