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Multi-platform fire control strike track planning method based on deep enhance learning

机译:基于深度增强学习的多平台火力打击轨迹规划方法

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The modern war has been transforming from center-based to cyber-based. The cyber war is an information network system, which is composed by detective system, communication system, command and control system, and weapon system. In such system, commander can see all battlefield situations, change combat information, design and implement combat plan. Cloud-based platform would be the development trend of next generation avionics system in cyber combat. In order to improve system combat efficiency, in this paper, we propose a multi-platform fire control strike track planning method based on deep enhance learning. It uses deep enhance learning model to generate higher hit rate fire control strike track. The experiment shows our proposed method is more efficient.
机译:现代战争已经从以中心为基础转变为以网络为基础。网络战争是一种信息网络系统,由侦察系统,通信系统,指挥控制系统和武器系统组成。在这样的系统中,指挥官可以查看所有战场情况,更改战斗信息,设计并实施战斗计划。基于云的平台将是下一代航空电子系统在网络作战中的发展趋势。为了提高系统作战效率,本文提出了一种基于深度增强学习的多平台火力打击轨迹规划方法。它使用深度增强学习模型来生成更高的命中率火控打击轨迹。实验表明我们提出的方法是更有效的。

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