Adaptive learning: robust stabilization of two-player games with unmodeled dynamics

Jinna Li, Z. Ding, Jiangtao Cao, Ping Li
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引用次数: 0

Abstract

Consider the inherent existence of unmodeled dynamics when identifying system models, it is worth investigating control to guarantee the robust stability of the systems. This paper focuses on robust control for two-player time-invariant difference game with uncertain unmodeled dynamics by using adaptive learning way. To this end, the optimization control problem for two-player linear difference games with bounded unmodeled dynamics is formulated first. Then, dynamic programming combined with game theory and adaptive critic learning are employed for the purpose of finding the stabilizing control polices, such that an adaptive learning method is developed for stabilizing the closed-loop two-player dynamics with unmodeled dynamics. The robust stabilization of the uncertain two-player game systems is rigorously proved. Simulations are given to show the effectiveness of the proposed method.
自适应学习:具有未建模动力学的二人博弈的鲁棒稳定化
在辨识系统模型时,考虑到未建模动力学的固有存在性,研究控制以保证系统的鲁棒稳定性是值得的。采用自适应学习方法研究了具有不确定未建模动力学的二人定常差分对策的鲁棒控制问题。为此,首先提出了具有有界未建模动力学的二人线性差分对策的优化控制问题。然后,将动态规划与博弈论和自适应批评学习相结合,寻找稳定控制策略,从而开发出一种具有未建模动态的闭环双参与者动态的自适应学习方法。严格证明了不确定二人对策系统的鲁棒镇定性。仿真结果表明了该方法的有效性。
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