Chaotic AR(1) model estimation
نویسندگان
چکیده
Chaotic signals generated by iterating nonlinear difference equations may be useful models for many natural phenomena. In this paper we propose a family of chaotic models for signal processing applications. The chaotic signals generated by this family of first order difference equations have autocorrelations identical to stochastic first-order autoregressive (AR) processes. After considering the huge computational cost and the inconsistency of the optimal model estimator in the maximum-likelihood (ML) sense we propose low cost, suboptimal estimation approaches. Computer simulations show the good performance of the proposed modeling approach.
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