博弈环境下的多无人机系统协同路径规划OA
Cooperative path planning for multiple unmanned aerial vehicles system in a game-theoretic environment
研究了博弈环境下多无人机系统在模型动力学不确定和输入受限条件下的协同路径规划问题.在博弈环境中,我方无人机需要通过协同路径规划捕获对方无人机,并考虑避开禁区和避碰.首先,提出一种基于注意力机制的长短期记忆(LSTM)模型来预测对方无人机的轨迹,帮助我方无人机进行后续的协同路径规划.然后,通过构造性能函数,将协同路径规划问题转化为输入受限条件下的最优控制问题.提出一种基于历史数据的不依赖于模型参数的积分强化学习方法,实现了输入受限条件下的最优控制.仿真结果验证了所提方法的有效性.
In this paper,the cooperative path planning problem in games for the unmanned aerial vehicles system is addressed under conditions of unknown dynamics and input constraints.By planning their routes and avoiding collisions and prohibited areas,friendly and enemy unmanned aerial vehicles must catch up to each other in the game.The trajectory of the opposing unmanned aerial vehicles is predicted to assist path planning by a long short term memory(LSTM)model with an attention mechanism.By creating the value function,the cooperative path planning issue is transformed into an optimum control problem with input restrictions.A method based on integral reinforcement learning is designed to achieve optimal control using the historical data,without the knowledge of inertial parameters.The results of the simulation confirm the efficacy of the proposed method.
范芮滔;刘昊;程明;马超群;刘大卫
北京航空航天大学 人工智能研究院,北京 100191北京航空航天大学 人工智能研究院,北京 100191北京航空航天大学 宇航学院,北京 100191中国兵器科学研究院,北京 100089中国兵器科学研究院,北京 100089
航空航天
多智能体系统路径规划非线性系统强化学习无人机
multi-agent systempath planningnonlinear systemreinforcement learningunmanned aerial vehicle
《北京航空航天大学学报》 2026 (2)
620-626,7
国家自然科学基金(62273015,U23B2032)北京市自然科学基金(4232045) National Natural Science Foundation of China(62273015,U23B2032)Beijing Natural Science Foundation(4232045)
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