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Learning Autonomous Helicopter Flight with Evolutionary Reinforcement Learning

机译:通过进化强化学习来学习自主直升机飞行

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In this paper we present a method to obtain a near optimal neuro-controller for the autonomous helicopter flight by means of an ad hoc evolutionary reinforcement learning method. The method presented here was developed for the Second Annual Reinforcement Learning Competition (RL2008) held in Helsinki-Finland. The present work uses a Helicopter Hovering simulator created in the Stanford University that simulates a Radio Control XCell Tempest helicopter in the flight regime close to hover. The objective of the controller is to hover the helicopter by manipulating four continuous control actions based on a 12-dimensional state space.
机译:在本文中,我们提出了一种通过自组织进化强化学习方法获得用于直升机自动驾驶的近最佳神经控制器的方法。本文介绍的方法是为在赫尔辛基-芬兰举行的第二届年度强化学习竞赛(RL2008)开发的。本工作使用由斯坦福大学创建的直升机悬停模拟器,该模拟器在接近悬停的飞行状态下模拟无线电控制XCell Tempest直升机。控制器的目的是通过基于12维状态空间操纵四个连续的控制动作来使直升机悬停。

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