超视距空战环境建模与深度强化学习应用

Ao Wang, Shangwei Zhao, Zhengkang Shi, Jingcheng Wang
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引用次数: 1

摘要

众所周知,超视距空战已经成为决定现代战争走向的重要战斗形式之一。对抗过程中最大的挑战是如何使飞机协同决策锁定、起飞和回避行动。为此,本文研究了深度强化学习在超视距空战环境中的应用,以增强多机协同决策和智能优化的能力。首先,构建了一种新型的超视距空战环境作为深度强化学习的训练环境,为深度强化学习提供了一个易于计算且精度较高的仿真环境。在此基础上,提出了结合长短期记忆网络的近端策略优化方法来处理不完全信息,同时实现智能决策优化。最后,通过仿真实验验证了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Over-the-Horizon Air Combat Environment Modeling and Deep Reinforcement Learning Application
As we all know, over-the-horizon air combat has become one of the important fight forms that determine the trend of modern warfare. The biggest challenge in the confrontation process is how to make aircrafts cooperative-decision to lock, launch and avoid operations. To this end, this paper investigates the deep reinforcement learning application on the over-the-horizon air combat environment to enhance the ability of multi-aircraft cooperative decision-making and intelligent optimization. First, a novel over-the-horizon air combat environment is constructed as a training environment for deep reinforcement learning, which could provide an easy-to-calculate simulation environment with higher precision. Then, we propose the proximal policy optimization combined with the long short-term memory network to deal with incomplete information and realize intelligent decision optimization at the same time. Finally, the effectiveness of the proposed algorithm is verified by simulation experiments.
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