Unified linear time-invariant model predictive control for strong nonlinear chaotic systems
Articles
Yuan Zhang
Nankai University, China
Mingwei Sun
Nankai University, China
Zengqiang Chen
Nankai University, China
Published 2016-11-25
https://doi.org/10.15388/NA.2016.5.2
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Keywords

chaos
extended state observer
predictive control
synchronization

How to Cite

Zhang, Y., Sun, M. and Chen, Z. (2016) “Unified linear time-invariant model predictive control for strong nonlinear chaotic systems”, Nonlinear Analysis: Modelling and Control, 21(5), pp. 579–599. doi:10.15388/NA.2016.5.2.

Abstract

It is well known that an alone linear controller is difficult to control a chaotic system, because intensive nonlinearities exist in such system. Meanwhile, depending closely on a precise mathematical modeling of the system and high computational complexity, model predictive control has its inherent drawback in controlling nonlinear systems. In this paper, a unified linear time-invariant model predictive control for intensive nonlinear chaotic systems is presented. The presented model predictive control algorithm is based on an extended state observer, and the precise mathematical modeling is not required. Through this method, not only the required coefficient matrix of impulse response can be derived analytically, but also the future output prediction is explicitly calculated by only using the current output sample. Therefore, the computational complexity can be reduced sufficiently. The merits of this method include, the Diophantine equation needing no calculation, and independence of precise mathematical modeling. According to the variation of the cost function, the order of the controller can be reduced, and the system stability is enhanced. Finally, numerical simulations of three kinds of chaotic systems confirm the effectiveness of the proposed method.

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