Neuroevolutionary reinforcement learning for generalized helicopter control

Rogier Koppejan, Shimon Whiteson
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引用次数: 44

Abstract

Helicopter hovering is an important challenge problem in the field of reinforcement learning. This paper considers several neuroevolutionary approaches to discovering robust controllers for a generalized version of the problem used in the 2008 Reinforcement Learning Competition, in which wind in the helicopter's environment varies from run to run. We present the simple model-free strategy that won first place in the competition and also describe several more complex model-based approaches. Our empirical results demonstrate that neuroevolution is effective at optimizing the weights of multi-layer perceptrons, that linear regression is faster and more effective than evolution for learning models, and that model-based approaches can outperform the simple model-free strategy, especially if prior knowledge is used to aid model learning.
广义直升机控制的神经进化强化学习
直升机悬停是强化学习领域的一个重要挑战问题。本文考虑了几种神经进化方法来发现鲁棒控制器,用于2008年强化学习竞赛中使用的问题的广义版本,其中直升机环境中的风因运行而异。我们提出了在竞赛中获得第一名的简单的无模型策略,并描述了几种更复杂的基于模型的方法。我们的实证结果表明,神经进化在优化多层感知器的权重方面是有效的,线性回归在学习模型方面比进化更快更有效,基于模型的方法可以优于简单的无模型策略,特别是如果使用先验知识来帮助模型学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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