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Radar active antagonism through deep reinforcement learning: A Way to address the challenge of mainlobe jamming

机译:通过深度加强学习的雷达活性对抗:一种解决mainlobe干扰挑战的方法

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摘要

Among different jamming techniques, mainlobe jamming is difficult to deal with for the radar and traditional passive anti-jamming methods are less effective because the angular separation between the jammer and the target is almost the same. In contrast to these passive methods, active antagonism requires the radar to take measures in advance to avoid being jammed and this can be achieved via frequency agile (FA) radar. In order to enable the FA radar to combat the jammer and obtain good performance, a deep reinforcement learning (RL) based anti-jamming strategy design method is proposed in which a transmit/receive time-sharing jammer may adopt multiple different jamming strategies. To combat the individual jamming strategy, we propose a specialized strategy learning algorithm that treats probability of detection as the reward signal and uses proximal policy optimization to solve the RL problem of the radar and the jammer. Based on the learned specialized strategies, policy distillation technique is applied to design a unified strategy which enables the FA radar to combat multiple jamming strategies. Simulation results show that the FA radar can avoid being jammed and obtain a high probability of detection whether the jammer adopts individual or multiple jamming strategies through the proposed method.
机译:在不同的干扰技术中,对于雷达和传统的被动抗干扰方法难以处理Mainlobe干扰,因为干扰物和目标之间的角度分离几乎相同。与这些被动方法相比,主动拮抗作用需要预先采取雷达以避免被堵塞,这可以通过频率敏捷(FA)雷达来实现。为了使FA雷达能够打击干扰物并获得良好的性能,提出了一种基于深度增强学习(RL)的抗干扰策略设计方法,其中发射/接收时间共享干扰器可以采用多种不同的干扰策略。为了打击单独的干扰策略,我们提出了一种专门的策略学习算法,其将检测概率视为奖励信号,并使用近端策略优化来解决雷达和干扰器的RL问题。根据学习的专业策略,对策蒸馏技术应用于设计统一的策略,使FA雷达能够打击多种干扰策略。仿真结果表明,FA雷达可以避免堵塞并获得高概率检测干扰器是否通过所提出的方法采用个体或多种干扰策略。

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