Convergence of Recursive Identification for ARMAX Process with Increasing Variances |
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Authors: | JIN Ya LUO Guiming |
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Affiliation: | School of Software, Tsinghua University, Beijing 100084, China |
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Abstract: | The autoregressive moving average exogenous (ARMAX) model is commonly adopted for describing linear stochastic systems driven by colored noise. The model is a finite mixture with the ARMA component and external inputs. In this paper we focus on a parameter estimate of the ARMAX model. Classical modeling methods are usually based on the assumption that the driven noise in the moving average (MA) part has bounded variances, while in the model considered here the variances of noise may increase by a power of log n. The plant parameters are identified by the recursive stochastic gradient algorithm. The diminishing excitation technique and some results of martingale difference theory are adopted in order to prove the convergence of the identification. Finally, some simulations are given to show the reliability of the theoretical results. |
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Keywords: | multidimensional autoregressive moving average exogenous (ARMAX) process increasing variance stochastic gradient algorithm convergence |
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