We analyze the permutation entropy of deterministic chaotic signals affected by a weak observational noise. We investigate the scaling dependence of the entropy increase on both the noise amplitude and the window length used to encode the time series. In order to shed light on the scenario, we perform a multifractal analysis, which allows highlighting the emergence of many poorly populated symbolic sequences generated by the stochastic fluctuations. We finally make use of this information to reconstruct the noiseless permutation entropy. While this approach works quite well for Hénon and tent maps, it is much less effective in the case of hyperchaos. We argue about the underlying motivations.

Permutation Entropy of Weakly Noise-Affected Signals / Ricci, Leonardo; Politi, Antonio. - In: ENTROPY. - ISSN 1099-4300. - 24:1(2022), pp. 54.1-54.10. [10.3390/e24010054]

Permutation Entropy of Weakly Noise-Affected Signals

Ricci, Leonardo;
2022-01-01

Abstract

We analyze the permutation entropy of deterministic chaotic signals affected by a weak observational noise. We investigate the scaling dependence of the entropy increase on both the noise amplitude and the window length used to encode the time series. In order to shed light on the scenario, we perform a multifractal analysis, which allows highlighting the emergence of many poorly populated symbolic sequences generated by the stochastic fluctuations. We finally make use of this information to reconstruct the noiseless permutation entropy. While this approach works quite well for Hénon and tent maps, it is much less effective in the case of hyperchaos. We argue about the underlying motivations.
2022
1
Ricci, Leonardo; Politi, Antonio
Permutation Entropy of Weakly Noise-Affected Signals / Ricci, Leonardo; Politi, Antonio. - In: ENTROPY. - ISSN 1099-4300. - 24:1(2022), pp. 54.1-54.10. [10.3390/e24010054]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/326479
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