IEEE Trans Neural Netw Learn Syst. 2014 May;25(5):882-93. doi: 10.1109/TNNLS.2013.2294968.
This paper studies the robust optimal control design for a class of uncertain nonlinear systems from a perspective of robust adaptive dynamic programming (RADP). The objective is to fill up a gap in the past literature of adaptive dynamic programming (ADP) where dynamic uncertainties or unmodeled dynamics are not addressed. A key strategy is to integrate tools from modern nonlinear control theory, such as the robust redesign and the backstepping techniques as well as the nonlinear small-gain theorem, with the theory of ADP. The proposed RADP methodology can be viewed as an extension of ADP to uncertain nonlinear systems. Practical learning algorithms are developed in this paper, and have been applied to the controller design problems for a jet engine and a one-machine power system.
本文从鲁棒自适应动态规划(RADP)的角度研究了一类不确定非线性系统的鲁棒最优控制设计。目的是填补自适应动态规划(ADP)文献中未涉及动态不确定性或未建模动态的空白。一个关键策略是将现代非线性控制理论的工具,如鲁棒再设计和反推技术以及非线性小增益定理,与 ADP 理论相结合。所提出的 RADP 方法可以看作是 ADP 对不确定非线性系统的扩展。本文还开发了实用的学习算法,并将其应用于喷气发动机和单机电力系统的控制器设计问题。