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Applying Evolution Strategies to Neural Networks Robot Controller

机译:将演化策略应用于神经网络机器人控制器

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In this paper an evolution strategy (ES) is introduced, to learn weights of a neural network controller in autonomous robots. An ES is used to learn high-performance reactive behavior for navigation and collisions avoidance. The learned behavior is able to solve the problem in different environments; so, the learning process has proven the ability to obtain a specialized behavior. All the behaviors obtained have been tested in a set of environment and the capability of generalization is showed for each learned behavior. No subjective information about "how to accomplish the task" has been included in the fitness function. A simulator based on mini-robot Khepera has been used to learn each behavior.
机译:本文介绍了一种演化策略,以学习自治机器人中神经网络控制器的重量。 es用于学习用于导航和碰撞的高性能反应行为。学习行为能够解决不同环境中的问题;因此,学习过程已经证明了获得专业行为的能力。已经在一组环境中测试了所获得的所有行为,针对每个学习行为展示了泛化的能力。没有关于“如何完成任务”的主观信息已包含在健身功能中。基于Mini-Robot Khepera的模拟器已被用来了解每个行为。

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