Applying Genetic Algorithms to Control Gait of Simulated Robots
Milton Roberto Heinen, Fernando Santos Osório
- 发表年份
- 2007
- 引用次数
- 9
摘要
This paper describes the LegGen simulator, used to automatically create and control stable gaits for legged robots into a physically based simulation environment. In our approach, the gait is defined using two different methods: a finite state machine based on robot's leg joint angles sequences; and a recurrent neural network. The parameters for both methods are optimized using genetic algorithms. The model validation was performed by several experiments realized with a robot simulated using the ODE physical simulation engine. The results showed that it is possible to generate stable gaits using genetic algorithms in an efficient manner, using these two different methods.
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