DocumentCode :
592341
Title :
Model learning actor-critic algorithms: Performance evaluation in a motion control task
Author :
Grondman, Ivo ; Busoniu, L. ; Babuska, Robert
Author_Institution :
Delft Center for Syst. & Control, Delft Univ. of Technol., Delft, Netherlands
fYear :
2012
fDate :
10-13 Dec. 2012
Firstpage :
5272
Lastpage :
5277
Abstract :
Reinforcement learning (RL) control provides a means to deal with uncertainty and nonlinearity associated with control tasks in an optimal way. The class of actor-critic RL algorithms proved useful for control systems with continuous state and input variables. In the literature, model-based actor-critic algorithms have recently been introduced to considerably speed up the the learning by constructing online a model through local linear regression (LLR). It has not been analyzed yet whether the speed-up is due to the model learning structure or the LLR approximator. Therefore, in this paper we generalize the model learning actor-critic algorithms to make them suitable for use with an arbitrary function approximator. Furthermore, we present the results of an extensive analysis through numerical simulations of a typical nonlinear motion control problem. The LLR approximator is compared with radial basis functions (RBFs) in terms of the initial convergence rate and in terms of the final performance obtained. The results show that LLR-based actor-critic RL outperforms the RBF counterpart: it gives quick initial learning and comparable or even superior final control performance.
Keywords :
approximation theory; control nonlinearities; function approximation; learning (artificial intelligence); motion control; nonlinear control systems; regression analysis; uncertain systems; arbitrary function approximator; continuous state; local linear regression approximator; model learning actor-critic algorithm; model learning structure; nonlinear motion control problem; nonlinearity; numerical simulation; performance evaluation; reinforcement learning control; uncertainty; Approximation algorithms; Function approximation; Learning; Linear regression; Mathematical model; Tuning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Decision and Control (CDC), 2012 IEEE 51st Annual Conference on
Conference_Location :
Maui, HI
ISSN :
0743-1546
Print_ISBN :
978-1-4673-2065-8
Electronic_ISBN :
0743-1546
Type :
conf
DOI :
10.1109/CDC.2012.6426427
Filename :
6426427
Link To Document :
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