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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Offense-defense confrontation decision making for dynamic UAV swarm versus UAV swarm
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Offense-defense confrontation decision making for dynamic UAV swarm versus UAV swarm

机译:动态无人机群与无人机群的攻防对抗决策

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摘要

This paper studies a dynamic swarm versus swarm unmanned aerial vehicle (UAV) combat problem and proposes a self-organized offense-defense confrontation decision-making (ODCDM) algorithm. This ODCDM algorithm adopts the distributed architecture to account for real-time implementation, where each UAV is treated as an agent and able to solve its local decision problem through the information exchange with neighbors. At each decision making step, the swarm seeks an optimal target allocation scheme and each UAV further selects the corresponding behavioral rules, leading to emergent offensive and defensive behaviors. Therefore, the offense-defense confrontation decision-making process is divided into the target allocation decision based on distributed consensus-based auction algorithm (CBAA) and social-force-based swarm motion decision. An offense-defense preference is introduced to the target allocation optimization model, providing the tactics options for UAV to adopt more offensive or more defensive posture. On the basis of classic collective behaviors of cohesion, separation and alignment, a combat stimulus is considered to drive UAV towards the assigned target. Finally, simulation experiments are carried out to verify the effectiveness of the ODCDM algorithm, and analyze the influences of the external deployment and internal tactics on the combat results.
机译:本文研究了动态群与群无人机的战斗问题,并提出了一种自组织的进攻-防御对抗决策(ODCDM)算法。该ODCDM算法采用分布式体系结构来实现实时实现,其中每个UAV被视为一个代理,并能够通过与邻居的信息交换来解决其本地决策问题。在每个决策步骤,蜂群都寻求最佳的目标分配方案,每个无人机进一步选择相应的行为规则,从而导致突发的进攻和防御行为。因此,将防卫对抗决策过程分为基于分布式共识拍卖算法(CBAA)的目标分配决策和基于社会力量的群体运动决策。攻防偏好被引入目标分配优化模型,为无人机采取更具进攻性或更具防御性的姿态提供了战术选择。根据内聚,分离和对齐的经典集体行为,可以考虑使用战斗刺激来将无人机推向指定目标。最后,通过仿真实验验证了ODCDM算法的有效性,并分析了外部部署和内部战术对作战结果的影响。

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