多阶段空战任务中数知双驱型无人战机智能规避决策方法
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1.国防科技大学试验训练基地;2.国防科技大学

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V279

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陕西省创新能力支撑计划基金资助项目(2024ZC-KJXX-072);国防科技大学自主创新科学基金资助项目(24-ZZCX-JDZ-50)


A data-knowledge driven intelligent avoidance decision-making method for UCAVs in multi-stage air combat missions
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    摘要:

    为了提高多阶段空战任务中无人战机的存活率,提出了一种数知双驱型智能规避决策方法,采用马尔可夫决策过程形式化建模规避决策过程,并结合强化学习,引入敌我态势分块交互的自注意力机制,同时采用数知双驱型策略更新方法对智能体进行训练。基于仿真平台对所提模型的规避性能和空战效能进行评估,通过与传统强化学习深度Q网络以及规则机动模型的对比,证明了该模型对提高无人战机的存活率具有重要的理论意义和参考价值。

    Abstract:

    To enhance the survivability of unmanned combat aerial vehicles in multi-stage air combat missions,, a data-knowledge driven intelligent avoidance decision-making method was proposed. The method employed Markov decision process to formally model the avoidance decision-making process and introduced the self-attention mechanism of blocked interaction with self-enemy situation based on reinforcement learning. And a data-knowledge driven policy update approach was adopted to train the agent. The avoidance performance and air combat effectiveness of the proposed model were evaluated based on the simulation platform. It was proved that the proposed model has significant theoretical significance and reference value for improving the survivability of unmanned combat aerial vehicles, by comparing it with the traditional reinforcement learning deep Q-network and rule-based maeuvering model.

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  • 收稿日期:2025-04-06
  • 最后修改日期:2025-11-12
  • 录用日期:2025-12-09
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