Title :
Online Adaptive Critic Flight Control using Approximated Plant Dynamics
Author :
Kampen, E. Van ; Chu, Q.P. ; Mulder, J.A.
Author_Institution :
Control & Simulation Div., Delft Univ. of Technol.
Abstract :
A relatively new approach to adaptive flight control is the use of reinforcement learning methods such as the adaptive critic designs. Controllers that apply reinforcement learning methods learn by interaction with the environment and their ability to adapt themselves online makes them especially useful in adaptive and reconfigurable flight control systems. This paper is focused on two types of adaptive critic design, one is action dependent and the other uses an approximation of the plant dynamics. The goal of this paper is to gain insight into the theoretical and practical differences between these two controllers, when applied in an online environment with changing plant dynamics. To investigate the practical differences the controllers are implemented for a model of the general dynamics F-16 and the characteristics of the controllers are investigated and compared to each other by conducting several experiments in two phases. First the controllers are trained offline to control the baseline F-16 model, next the dynamics of the F-16 model are changed online and the controllers will have to adapt to the new plant dynamics. The result from the offline experiments show that the controller with the approximated plant dynamics has a higher success ratio for learning to control the baseline F-16 model. The online experiments further show that this controller outperforms the action dependent controller in adapting to changed plant dynamics
Keywords :
adaptive control; aerospace control; learning (artificial intelligence); adaptive critic design; approximated plant dynamics; general dynamics F-16 model; online adaptive critic flight control; reinforcement learning; Adaptive control; Aerodynamics; Aerospace control; Aerospace engineering; Aerospace simulation; Control systems; Cybernetics; Humans; Machine learning; Programmable control; Testing; Adaptive critic designs; Adaptive flight control; Reinforcement learning;
Conference_Titel :
Machine Learning and Cybernetics, 2006 International Conference on
Conference_Location :
Dalian, China
Print_ISBN :
1-4244-0061-9
DOI :
10.1109/ICMLC.2006.258964