Intelligent Anti-Jamming Decision Algorithm of Bivariate Frequency Hopping Pattern Based on DQN With PER and Pareto

Jiasheng Zhu, Zhijin Zhao, Shilian Zheng
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引用次数: 1

Abstract

To improve the anti-jamming performance of frequency hopping system in complex electromagnetic environment, a Deep Q-Network algorithm with priority experience replay (PER) based on Pareto samples (PPER-DQN) is proposed, which makes intelligent decision for bivariate FH pattern. The system model, state-action space and reward function are designed based on the main parameters of the FH pattern. The DQN is used to improve the flexibility of the FH pattern. Based on the definition of Pareto dominance, the PER based on the TD-error and immediate reward is proposed. To ensure the diversity of the training set, it is formed by Pareto sample set and several random samples. When selecting Pareto sample, the confidence coefficient is introduced to modify its priority. It guarantees the learning value of the training set and improves the learning efficiency of DQN. The simulation results show that the efficiency, convergence speed and stability of the algorithm are effectively improved. And the generated bivariate FH pattern has better performance than the conventional FH pattern.
基于PER和Pareto的DQN二元跳频方向图智能抗干扰决策算法
为了提高跳频系统在复杂电磁环境下的抗干扰性能,提出了一种基于Pareto样本的优先体验重放Deep Q-Network算法(PPER-DQN),对二元跳频方向图进行智能决策。根据FH模式的主要参数,设计了系统模型、状态-行动空间和奖励函数。DQN用于提高跳频方向图的灵活性。基于帕累托优势的定义,提出了基于td误差和即时奖励的PER。为了保证训练集的多样性,训练集由Pareto样本集和若干个随机样本组成。在选择Pareto样本时,引入置信度系数来调整样本的优先级。保证了训练集的学习值,提高了DQN的学习效率。仿真结果表明,该算法的效率、收敛速度和稳定性得到了有效提高。生成的二元跳频图比传统跳频图具有更好的性能。
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