Parameter Estimation of a Known Chaotic Time Series Corrupted by White Gaussian Noise
نویسنده
چکیده
The subject of parameter estimation in linear signals embedded in white Gaussian noise has been extensively studied. The subject of nonlinear choatic signals, however, has received much less attention. This paper will examine some of the known techniques for estimating the parameters of chaotic signals such as iterative maps, including the tent map and the logistic map.
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