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基于多目标优化与强化学习的空战机动决策
引用本文:杜海文,崔明朗,韩统,魏政磊,唐传林,田野.基于多目标优化与强化学习的空战机动决策[J].北京航空航天大学学报,2018,44(11):2247-2256.
作者姓名:杜海文  崔明朗  韩统  魏政磊  唐传林  田野
作者单位:1.空军工程大学 航空工程学院, 西安 710038
基金项目:国家自然科学基金(61601505);陕西省自然科学基金(2017JM6078)
摘    要:为了解决无人机自主空战中的机动决策问题,提出了一种将优化思想与机器学习相结合的机动决策模型。采用多目标优化方法作为决策模型核心,既解决了传统优化方法需要为多个优化目标设置权重的困难,又提高了决策模型的可拓展性;同时在多目标优化的基础上通过强化学习方法训练评价网络进行辅助决策,解决了决策模型在对抗时博弈性不足的缺点。为了测试决策模型的性能,以近距空战为背景,设计了3组仿真实验分别验证多目标优化方法的可行性、辅助决策网络的有效性以及决策模型的总体性能,仿真结果表明,决策模型可以对有机动的敌机进行有效的实时机动对抗。 

关 键 词:自主空战    机动决策    多目标优化    强化学习    神经网络
收稿时间:2018-03-15

Maneuvering decision in air combat based on multi-objective optimization and reinforcement learning
DU Haiwen,CUI Minglang,HAN Tong,WEI Zhenglei,TANG Chuanlin,TIAN Ye.Maneuvering decision in air combat based on multi-objective optimization and reinforcement learning[J].Journal of Beijing University of Aeronautics and Astronautics,2018,44(11):2247-2256.
Authors:DU Haiwen  CUI Minglang  HAN Tong  WEI Zhenglei  TANG Chuanlin  TIAN Ye
Institution:1.College of Aeronautics and Astronautics, Air Force Engineering University, Xi'an 710038, China2.Unit 94782 of PLA, Hangzhou 310004, China3.College of Physics and Information Engineering, Fuzhou University, Fuzhou 350108, China
Abstract:To solve the problem of maneuvering decision in the autonomous air combat of unmanned combat aerial vehicle, the existing research achievements are analyzed and a maneuvering decision model that combines optimization idea with machine learning is proposed. The multi-objective optimization method is used as the core of decision model, which solves the problem of setting weight for multiple optimization targets and improves the extensibility of decision model. On the basis of multi-objective optimization, an evaluation network is trained by reinforcement learning and used for auxiliary decision-making to enhance the antagonism of decision model. In order to test the performance of decision model, with the background of short-range air combat, three simulation experiments are designed to test the feasibility of multi-objective optimization method, the effectiveness of auxiliary decision network and the overall performance of decision model. The simulation results show that the maneuvering decision model can be used in real-time confrontation with the maneuvering enemy aircraft.
Keywords:autonomous air combat  maneuvering decision  multi-objective optimization  reinforcement learning  neural network
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