2023
DOI: 10.3390/rs15123108
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A Cognitive Electronic Jamming Decision-Making Method Based on Q-Learning and Ant Colony Fusion Algorithm

Abstract: In order to improve the efficiency and adaptability of cognitive radar jamming decision-making, a fusion algorithm (Ant-QL) based on ant colony and Q-Learning is proposed in this paper. The algorithm does not rely on a priori information and enhances adaptability through real-time interactions between the jammer and the target radar. At the same time, it can be applied to single jammer and multiple jammer countermeasure scenarios with high jamming effects. First, traditional Q-Learning and DQN algorithms are d… Show more

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Cited by 4 publications
(1 citation statement)
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References 42 publications
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“…This paper focuses on the environment of constrained radar states and limited radar-jamming methods. Among many reinforcement learning algorithms, Q-Learning is believed to be able to work well in this kind of environment using the establishment of a Q-table for query decision-making [13]. However, the traditional Q-Learning algorithm also has shortcomings [14], such as the action-value overestimation and the unstable and non-ideal training results.…”
Section: Introductionmentioning
confidence: 99%
“…This paper focuses on the environment of constrained radar states and limited radar-jamming methods. Among many reinforcement learning algorithms, Q-Learning is believed to be able to work well in this kind of environment using the establishment of a Q-table for query decision-making [13]. However, the traditional Q-Learning algorithm also has shortcomings [14], such as the action-value overestimation and the unstable and non-ideal training results.…”
Section: Introductionmentioning
confidence: 99%