Blind Extraction of Chaotic Signals by Using the Fast Independent Component Analysis Algorithm

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2008 Chinese Physical Society and IOP Publishing Ltd
, , Citation Chen Hong-Bin et al 2008 Chinese Phys. Lett. 25 405 DOI 10.1088/0256-307X/25/2/015

0256-307X/25/2/405

Abstract

We report the results of using the fast independent component analysis (FastICA) algorithm to realize blind extraction of chaotic signals. Two cases are taken into consideration: namely, the mixture is noiseless or contaminated by noise. Pre-whitening is employed to reduce the effect of noise before using the FastICA algorithm. The correlation coefficient criterion is adopted to evaluate the performance, and the success rate is defined as a new criterion to indicate the performance with respect to noise or different mixing matrices. Simulation results show that the FastICA algorithm can extract the chaotic signals effectively. The impact of noise, the length of a signal frame, the number of sources and the number of observed mixtures on the performance is investigated in detail. It is also shown that regarding a noise as an independent source is not always correct.

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10.1088/0256-307X/25/2/015