Affiliation:
1. Research Center for Mathematics and Interdisciplinary Sciences Shandong University Qingdao China
2. Key Laboratory of Systems and Control, Institute of Systems Science, Academy of Mathematics and Systems Science Chinese Academy of Sciences Beijing China
3. School of Mathematics Sciences University of Chinese Academy of Sciences Beijing China
Abstract
AbstractIn this paper, we present a matrix‐type adaptive tracking control scheme for a stochastic regression system with multi‐threshold quantized observations and observation uncertainty. This observation uncertainty is described by an additive random noise, whose variance could be a polynomial‐type rate of increase and tends to infinity. Our method, first, to handle simultaneously parameter uncertainty, quantized observation, and observation uncertainty, incorporates an online stochastic approximation‐type parameter identification algorithm. Second, based on the above identification algorithm, we construct a matrix‐type adaptive tracking control law by the certainty equivalence principle. In addition, under suitable conditions, the above identification algorithm and matrix‐type adaptive tracking control law in the mean square sense can ensure that the estimations of the unknown parameters converge to the true values and achieve asymptotically optimal tracking of the periodic reference signal, respectively. To characterize the effect of observation uncertainty on the convergence speed of the identification algorithm in the mean square sense, a quantitative relationship between observation uncertainty and the convergence speed is proposed. Finally, the effectiveness of the proposed matrix‐type adaptive tracking control scheme is verified through a simulation.
Funder
National Key Research and Development Program of China
China Postdoctoral Science Foundation
National Natural Science Foundation of China
Natural Science Foundation of Shandong Province
Subject
Control and Systems Engineering,Electrical and Electronic Engineering,Mathematics (miscellaneous)
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