A Model-Free Cognitive Anti-Jamming Strategy Using Adversarial Learning Algorithm

IF 1.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Y. Sudha, V. Sarasvathi
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引用次数: 1

Abstract

Abstract Modern networking systems can benefit from Cognitive Radio (CR) because it mitigates spectrum scarcity. CR is prone to jamming attacks due to shared communication medium that results in a drop of spectrum usage. Existing solutions to jamming attacks are frequently based on Q-learning and deep Q-learning networks. Such solutions have a reputation for slow convergence and learning, particularly when states and action spaces are continuous. This paper introduces a unique reinforcement learning driven anti-jamming scheme that uses adversarial learning mechanism to counter hostile jammers. A mathematical model is employed in the formulation of jamming and anti-jamming strategies based on deep deterministic policy gradients to improve their policies against each other. An open-AI gym-oriented customized environment is used to evaluate proposed solution concerning power-factor and signal-to-noise-ratio. The simulation outcome shows that the proposed anti-jamming solution allows the transmitter to learn more about the jammer and devise the optimal countermeasures than conventional algorithms.
一种基于对抗性学习算法的无模型认知抗干扰策略
认知无线电(Cognitive Radio, CR)缓解了频谱的稀缺性,使现代网络系统受益。由于通信介质共享,通信频谱利用率下降,易受到干扰攻击。现有的干扰攻击解决方案通常基于q -学习和深度q -学习网络。这种解决方案以缓慢的收敛和学习而闻名,特别是当状态和动作空间是连续的时候。本文介绍了一种独特的强化学习驱动的抗干扰方案,该方案利用对抗性学习机制来对抗敌方干扰机。采用基于深度确定性策略梯度的数学模型来制定干扰和抗干扰策略,以改进它们之间的相互对抗策略。使用开放式ai健身房定制环境来评估功率因数和信噪比提出的解决方案。仿真结果表明,与传统的抗干扰算法相比,所提出的抗干扰方案可以让发射机更好地了解干扰者并设计出最优的对抗措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Cybernetics and Information Technologies
Cybernetics and Information Technologies COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.20
自引率
25.00%
发文量
35
审稿时长
12 weeks
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