Neural Networks Applied to Gait Control of Physically Based Simulated Robots
Milton Roberto Heinen, Fernando Santos Osório
- 发表年份
- 2006
- 引用次数
- 14
摘要
This paper describes our experiments with autonomous robots, in which we use neural networks to generate and control stable gaits of simulated legged robots into a physically based simulation environment. In our approach, the gait is accomplished using an Elman network trained using a gradient descend method, more specifically, the RPROP algorithm, a improvement of the traditional Back-propagation. The model validation was performed by several experiments realized with a simulated four legged robot using the ODE physical simulation engine. The results showed that it is possible to generate stable gaits using neural networks in an efficient manner.
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