DocumentCode :
1302473
Title :
Reinforcement Learning and Feedback Control: Using Natural Decision Methods to Design Optimal Adaptive Controllers
Author :
Lewis, Frank L. ; Vrabie, Draguna ; Vamvoudakis, Kyriakos G.
Author_Institution :
Autom. & Robot. Res. Inst., Univ. of Texas at Arlington, Worth, TX, USA
Volume :
32
Issue :
6
fYear :
2012
Firstpage :
76
Lastpage :
105
Abstract :
This article describes the use of principles of reinforcement learning to design feedback controllers for discrete- and continuous-time dynamical systems that combine features of adaptive control and optimal control. Adaptive control [1], [2] and optimal control [3] represent different philosophies for designing feedback controllers. Optimal controllers are normally designed of ine by solving Hamilton JacobiBellman (HJB) equations, for example, the Riccati equation, using complete knowledge of the system dynamics. Determining optimal control policies for nonlinear systems requires the offline solution of nonlinear HJB equations, which are often difficult or impossible to solve. By contrast, adaptive controllers learn online to control unknown systems using data measured in real time along the system trajectories. Adaptive controllers are not usually designed to be optimal in the sense of minimizing user-prescribed performance functions. Indirect adaptive controllers use system identification techniques to first identify the system parameters and then use the obtained model to solve optimal design equations [1]. Adaptive controllers may satisfy certain inverse optimality conditions [4].
Keywords :
adaptive control; continuous time systems; control system synthesis; discrete time systems; feedback; learning (artificial intelligence); nonlinear control systems; nonlinear differential equations; optimal control; parameter estimation; partial differential equations; Hamilton Jacobi Bellman equation; continuous-time dynamical systems; discrete-time dynamical systems; feedback controller design; indirect adaptive controllers; natural decision methods; nonlinear HJB equations; nonlinear systems; optimal adaptive controller design; optimal design equations; reinforcement learning; system identification techniques; system parameter identification; Adaptive control; Decision making; Design methodology; Feedback control; Learning systems; Optimal control; Reinforcement learning;
fLanguage :
English
Journal_Title :
Control Systems, IEEE
Publisher :
ieee
ISSN :
1066-033X
Type :
jour
DOI :
10.1109/MCS.2012.2214134
Filename :
6315769
Link To Document :
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