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- 2016
Optimization Algorithms Incorporated Fuzzy Q-Learning for Solving Mobile Robot Control ProblemsKeywords: Mobile Robot, Fuzzy-Qlearning, Ant Colony Optimization-Fuzzy Q Learning, Bee Colony Optimization-Fuzzy-Q Learning, Artificial Bee Colony-Fuzzy Q Learning Abstract: Designing the fuzzy controllers by using evolutionary algorithms and reinforcement learning is an important subject to control the robots. In the present article, some methods to solve reinforcement fuzzy control problems are studied. All these methods have been established by combining Fuzzy-Q Learning with an optimization algorithm. These algorithms include the Ant colony, Bee Colony and Artificial Bee Colony optimization algorithms. Comparing these algorithms on solving Track Backer-Upper problem –a reinforcement fuzzy control problem– shows that Artificial Bee Colony Optimization algorithm has the best efficiency in combining with fuzzy- Q Learning.
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