仿真与真实四足机器人神经控制器的演化

S. Farooq, Kyung-Joong Kim
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引用次数: 3

摘要

进化机器人是一种利用进化计算来开发自主机器人系统控制器的方法。进化计算通常依赖于候选控制器的总体,最初是从随机分布中选择的。根据适应度函数对总体进行迭代修改。本文采用进化神经网络(Evolutionary Neural Network, ENN)设计了四足机器人的自动控制系统,并以机器人从原点移动的距离来衡量其性能。在仿真环境下对进化神经控制器进行了分析,并在实际四足机器人中实现了结果。仿真机器人与真实机器人的比较显示了四足机器人在期望方向上覆盖距离的迭代次数。开发的新神经网络帮助机器人选择最佳可能的解决方案,以实现最大的距离。
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Evolution of Neural Controllers for Simulated and Real Quadruped Robots
Evolutionary robotics is an approach that employs evolutionary computation to develop a controller for an autonomous robotic system. Evolutionary computing usually operates depending on a population of candidate controllers, initially selected from a random distribution. The population is iteratively modified according to the fitness function. In this paper, an automatic control system is designed for quadruped robots using an Evolutionary Neural Network (ENN) and the performance is measured in terms of the distance travelled by the robot from its origin. The evolved neural controllers are analyzed in the simulation environment and the results are implemented in a real quadruped robot. The comparison between the simulated and real robot shows the performance of the quadruped robot in terms of number of iterations over the distance covered in the desired direction. The developed ENN helps the robot to choose the best possible solution to achieve the maximum distance.
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