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Jamming-Resilient Path Planning for Multiple UAVs via Deep Reinforcement Learning

机译:通过深度增强学习的多维无人机的弹性路径规划

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Unmanned aerial vehicles (UAVs) are expected to be an integral part of wireless networks. In this paper, we aim to find collision-free paths for multiple cellular-connected UAVs, while satisfying requirements of connectivity with ground base stations (GBSs) in the presence of a dynamic jammer. We first formulate the problem as a sequential decision making problem in discrete domain, with connectivity, collision avoidance, and kinematic constraints. We, then, propose an offline temporal difference (TD) learning algorithm with online signal-to-interference-plus-noise ratio (SINR) mapping to solve the problem. More specifically, a value network is constructed and trained offline by TD method to encode the interactions among the UAVs and between the UAVs and the environment; and an online SINR mapping deep neural network (DNN) is designed and trained by supervised learning, to encode the influence and changes due to the jammer. Numerical results show that, without any information on the jammer, the proposed algorithm can achieve performance levels close to that of the ideal scenario with the perfect SINR-map. Real-time navigation for multi-UAVs can be efficiently performed with high success rates, and collisions are avoided.
机译:无人驾驶飞行器(无人机)预计是无线网络的一个组成部分。在本文中,我们的目标是寻找多个蜂窝连接的过滤器的无碰撞路径,同时在动态干扰器存在下满足与地基站(GBS)的连接的要求。我们首先将问题作为在离散域中的连续决策中的问题,具有连接,碰撞和运动约束。然后,我们提出了一种具有在线信号到干扰 - 加频器(SINR)映射的离线时间差(TD)学习算法来解决问题。更具体地,通过TD方法构造和训练值网络,以编码UVS之间的交互以及UVS和环境之间的相互作用;并且通过监督学习设计和培训了在线SINR映射深度神经网络(DNN),以编码由于干扰器引起的影响和变化。数值结果表明,如果没有关于干扰器的任何信息,所提出的算法可以实现接近理想场景的性能水平与完美的SINR-MAP。多UVS的实时导航可以通过高成功率有效地执行,并且避免碰撞。

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