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Deep Q-Network based Anti-Jamming Strategy Design for Frequency Agile Radar

机译:基于深度Q网络的频率捷变雷达抗干扰策略设计

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In this paper, a deep Q-network (DQN) based strategy design method for frequency agile (FA) radar is proposed, in which the FA radar is regarded as the agent in reinforcement learning (RL) and learns how to take actions in the presence of a spot jammer. Due to the existence of the spot jammer, the agent must alter its carrier frequency frequently to avoid being jammed. To measure the performance of the agent with varied carrier frequencies in a coherent processing interval (CPI), the detection probability is derived and regarded as the reward signal in RL. By applying a DQN algorithm, an optimal strategy can be learned guiding the agent how to choose the carrier frequency at every pulse. The learned strategy enables the agent not only to avoid being jammed but also to have high detection probability. Simulation results illustrate the effectiveness of the proposed method.
机译:本文提出了一种基于深度Q网络(DQN)的频率捷变(FA)雷达策略设计方法,该方法将FA雷达视为强化学习(RL)的主体,并学习如何在雷达中采取行动。存在点干扰器。由于存在点干扰器,代理必须经常更改其载波频率,以避免被干扰。为了测量在相干处理间隔(CPI)中具有变化的载波频率的代理的性能,得出检测概率并将其视为RL中的奖励信号。通过应用DQN算法,可以学习一种最佳策略,指导代理如何选择每个脉冲的载波频率。所学习的策略使代理不仅能够避免被卡住,而且具有很高的检测概率。仿真结果说明了该方法的有效性。

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