Publication | Closed Access
An experimental adaptive fuzzy controller for differential games
12
Citations
15
References
2009
Year
Unknown Venue
Artificial IntelligenceGame AiFuzzy SystemsEngineeringDifferential GamesGame TheoryIntelligent SystemsLearning ControlFuzzy Control SystemDifferential GameSystems EngineeringRobot LearningGame DesignFuzzy LogicIntelligent ControlMarkov Decision ProcessReinforcement FuzzyRobot ControlAutomationBusinessAdaptive ControlRobotics
In this paper a reinforcement fuzzy learning scheme for robots playing a differential game is derived. A differential game may be considered a Markov decision process in continuous time, with continuous states and actions. The robots receive reinforcements from the environment after they take an action; and this reinforcement is then used to adapt a fuzzy controller that stores the experience accumulated by the robot. Every calculation is done in a physical system based on microcontrollers to control the movement of the robots and sensors to measure their position and angle in a 2D-plane. Filters are also implemented to approximate the derivatives of the states. Experiments of a pursuer-evader game are provided in order to show the feasibility of the technique. It should be noted, though, that the technique may also be used in a multi-game environment.
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