伴随压制干扰与组网雷达功率分配的深度博弈研究

Yuedong Wang, Yijing Gu, Yan Liang, Zengfu Wang, Huixia Zhang

科研成果: 期刊稿件文章同行评审

5 引用 (Scopus)

摘要

The traditional networked radar power allocation is typically optimized with a given jamming model, while the jammer resource allocation is optimized with a given radar power allocation method; such research lack gaming and interaction. Given the rising seriousness of combat scenarios in which radars and jammers compete, this study suggests a deep game problem of networked radar power allocation under escort suppression jamming, in which intelligent target jamming is trained using Deep Reinforcement Learning (DRL). First, the jammer and the networked radar are mapped as two agents in this problem. Based on the jamming model and the radar detection model, the target detection model of the networked radar under suppressed jamming and the optimized objective function for maximizing the target detection probability are established. In terms of the networked radar agent, the radar power allocation vector is generated by the Proximal Policy Optimization (PPO) policy network. In terms of the jammer agent, a hybrid policy network is designed to simultaneously create beam selection and power allocation actions. Domain knowledge is introduced to construct more effective reward functions. Three kinds of domain knowledge, namely target detection model, equal power allocation strategy, and greedy interference power allocation strategy, are employed to produce guided rewards for the networked radar agent and the jammer agent, respectively. Consequently, the learning efficiency and performance of the agent are improved. Lastly, alternating training is used to learn the policy network parameters of both agents. The experimental results show that when the jammer adopts the DRL-based resource allocation strategy, the DRL-based networked radar power allocation is significantly better than the particle swarm-based and the artificial fish swarm-based networked radar power allocation in both target detection probability and run time metrics.

投稿的翻译标题Deep Game of Escorting Suppressive Jamming and Networked Radar Power Allocation
源语言繁体中文
页(从-至)642-656
页数15
期刊Journal of Radars
12
3
DOI
出版状态已出版 - 6月 2023

关键词

  • Deep game
  • Deep Reinforcement Learning (DRL)
  • Detection probability
  • Domain knowledge assisted learning
  • Escort suppression jamming
  • Radar resource management

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