论文标题

DeepFake:基于决斗的欺骗策略,以击败反应性干扰器

DeepFake: Deep Dueling-based Deception Strategy to Defeat Reactive Jammers

论文作者

Van Huynh, Nguyen, Hoang, Dinh Thai, Nguyen, Diep N., Dutkiewicz, Eryk

论文摘要

在本文中,我们介绍了DeepFake,这是一种基于深入的深入学习欺骗策略,以应对反应性障碍攻击。特别是,对于智能和反应性的干扰攻击,干扰器能够感知频道并攻击频道,如果它检测到合法发射器的通信。为了处理这种攻击,我们提出了一种智能欺骗策略,该策略使合法发射器可以传输“假”信号以吸引干扰器。然后,如果干扰器攻击通道,则发射器可以利用强烈的干扰信号来传输数据,通过使用环境反向散射技术或从强卡式信号中收获能量以供将来使用。通过这样做,我们不仅可以破坏干扰器的攻击能力,而且还可以利用保障信号来改善系统性能。为了有效地学习并适应干扰攻击的动态和不确定性,我们使用深层决斗神经网络体系结构开发了一种新颖的深度强化学习算法,以比常规增强算法的速度快地获得千倍的最佳政策。广泛的仿真结果表明,在吞吐量,数据包丢失和学习率方面,我们提出的DeepFake框架优于其他反判断策略。

In this paper, we introduce DeepFake, a novel deep reinforcement learning-based deception strategy to deal with reactive jamming attacks. In particular, for a smart and reactive jamming attack, the jammer is able to sense the channel and attack the channel if it detects communications from the legitimate transmitter. To deal with such attacks, we propose an intelligent deception strategy which allows the legitimate transmitter to transmit "fake" signals to attract the jammer. Then, if the jammer attacks the channel, the transmitter can leverage the strong jamming signals to transmit data by using ambient backscatter communication technology or harvest energy from the strong jamming signals for future use. By doing so, we can not only undermine the attack ability of the jammer, but also utilize jamming signals to improve the system performance. To effectively learn from and adapt to the dynamic and uncertainty of jamming attacks, we develop a novel deep reinforcement learning algorithm using the deep dueling neural network architecture to obtain the optimal policy with thousand times faster than those of the conventional reinforcement algorithms. Extensive simulation results reveal that our proposed DeepFake framework is superior to other anti-jamming strategies in terms of throughput, packet loss, and learning rate.

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