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Reinforcement Learning-Based Collision Avoidance Guidance Algorithm for Fixed-Wing UAVs

机译:基于强化学习的碰撞避免引导算法用于固定翼UAV

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A deep reinforcement learning-based computational guidance method is presented, which is used to identify and resolve the problem of collision avoidance for a variable number of fixed-wing UAVs in limited airspace. The cooperative guidance process is first analyzed for multiple aircraft by formulating flight scenarios using multiagent Markov game theory and solving it by machine learning algorithm. Furthermore, a self-learning framework is established by using the actor-critic model, which is proposed to train collision avoidance decision-making neural networks. To achieve higher scalability, the neural network is customized to incorporate long short-term memory networks, and a coordination strategy is given. Additionally, a simulator suitable for multiagent high-density route scene is designed for validation, in which all UAVs run the proposed algorithm onboard. Simulated experiment results from several case studies show that the real-time guidance algorithm can reduce the collision probability of multiple UAVs in flight effectively even with a large number of aircraft.
机译:提出了一种深度增强基于学习的计算指导方法,用于识别和解决有限空域中的可变数量的固定翼无人机的碰撞问题的问题。首先通过使用多透明马尔可夫博弈论制定飞行场景并通过机器学习算法解决方案来分析合作指导过程。此外,通过使用演员 - 评论家模型建立自学习框架,该模型建议培训碰撞避免决策神经网络。为了实现更高的可扩展性,神经网络被定制以包含长短期存储网络,并给出协调策略。另外,适用于多读高密度路由场景的模拟器用于验证,其中所有无人机都在板载中运行所提出的算法。仿真实验结果来自几个案例研究表明,即使用大量飞机,实时引导算法也可以减少多个无人机的碰撞概率。

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