Autonomous Target Allocation Recommendations

L. Marsh, Madeleine Cochrane, R. Lodge, B. Sims, Jason M. Traish, Richard Y. D. Xu
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引用次数: 3

Abstract

We consider the problem of land vehicles under attack from a number of unmanned aerial systems. As the number of unmanned aerial systems increase, it may become difficult for human operators to coordinate actions across vehicles in a timely manner. In this paper, we study a number of algorithms designed to recommend actions to operators that will maximise the survivability of the vehicle fleet. We present a comparison of several assignment approaches including evolutionary strategies, genetic algorithms, multi-armed bandits, probability trees and basic heuristics. The performance of these algorithms is analysed across six different simulated scenarios. Our findings indicate that while there was no single best approach, Evolution Strategies, Ensemble and Genetic Algorithms were the strongest performers. It was also seen that a number of heuristic algorithms and the multi-armed bandits approach offered reliable performance in a number of scenarios without the need for any training.
自主目标分配建议
我们考虑的问题,地面车辆受到攻击的一些无人机系统。随着无人机系统数量的增加,人类操作员可能难以及时协调跨车辆的行动。在本文中,我们研究了一些算法,旨在向运营商推荐行动,以最大限度地提高车队的生存能力。我们提出了几种分配方法的比较,包括进化策略,遗传算法,多臂强盗,概率树和基本启发式。在六个不同的模拟场景中分析了这些算法的性能。我们的研究结果表明,虽然没有单一的最佳方法,但进化策略、集成和遗传算法是表现最好的方法。还可以看到,许多启发式算法和多臂强盗方法在许多不需要任何训练的情况下提供了可靠的性能。
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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