首页> 外文会议>Evolutionary Computation, 2000. Proceedings of the 2000 Congress on >A general learning co-evolution method to generalize autonomous robot navigation behavior
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A general learning co-evolution method to generalize autonomous robot navigation behavior

机译:一种通用的学习协同进化方法来概括自主机器人的导航行为

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A new coevolutive method, called Uniform Coevolution, is introduced, to learn weights for a neural network controller in autonomous robots. An evolutionary strategy is used to learn high-performance reactive behavior for navigation and collision avoidance. The coevolutive method allows the evolution of the environment, to learn a general behavior able to solve the problem in different environments. Using a traditional evolutionary strategy method without coevolution, the learning process obtains a specialized behavior. All the behaviors obtained, with or without coevolution have been tested in a set of environments and the capability for generalization has been shown for each learned behavior. A simulator based on the mini-robot Khepera has been used to learn each behavior. The results show that Uniform Coevolution obtains better generalized solutions to example-based problems.
机译:引入了一种新的协同进化方法,称为统一协同进化,以学习自主机器人中神经网络控制器的权重。进化策略用于学习导航和避免碰撞的高性能反应行为。协同进化方法允许环境的演变,学习能够解决不同环境中问题的一般行为。使用没有协进化的传统进化策略方法,学习过程将获得专门的行为。在一组环境中测试了获得的所有行为(有或没有协同进化),并且已针对每种学习的行为展示了泛化能力。基于微型机器人Khepera的模拟器已用于学习每种行为。结果表明,统一协同进化可以更好地解决基于示例的问题。

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