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Model-Based Stochastic Search for Large Scale Optimization of Multi-Agent UAV Swarms

机译:基于模型的随机搜索大规模优化多功能UAV群

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Recent work from the reinforcement learning community has shown that Evolution Strategies are a fast and scalable alternative to other reinforcement learning methods. In this paper we show that Evolution Strategies are a special case of model-based stochastic search methods. This class of algorithms has nice asymptotic convergence properties and known convergence rates. We show how these methods can be used to solve both cooperative and competitive multi-agent problems in an efficient manner. We demonstrate the effectiveness of this approach on two complex multi-agent UAV swarm combat scenarios: where a team of fixed wing aircraft must attack a well-defended base, and where two teams of agents go head to head to defeat each other.
机译:钢筋学习界的最新工作表明,进化策略是对其他加强学习方法的快速和可扩展的替代品。在本文中,我们表明演化策略是基于模型的随机搜索方法的特殊情况。这类算法具有良好的渐近收敛性和已知的收敛速率。我们展示了如何使用这些方法以有效的方式解决合作和竞争的多种代理问题。我们展示了这种方法对两种复杂的多社维持无人机战斗情景的有效性:其中一支固定翼飞机的团队必须攻击一个良好的守基地,两队代理人去互相击败彼此。

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