Securing UAV-to-Vehicle Communications: A Curiosity-Driven Deep Q-learning Network (C-DQN) Approach

Fang Fu, Qi Jiao, F. Yu, Zhicai Zhang, Jianbo Du
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引用次数: 5

Abstract

Unmanned aerial vehicle (UAV) will open up new application fields in smart city-based intelligent transportation systems (ITSs), e.g., traffic management, disaster rescue, police patrol, etc. However, the broadcast and line-of-sight nature of air-to-ground wireless channels give rise to a new challenge to the information security of UAV-to-vehicle (U2V) communications. This paper considers U2V communications subject to multi-eavesdroppers on the ground in urban scenarios. We aim to maximize the secrecy rates in physical layer security perspective while considering both the energy consumption and flight zone limitation, by jointly optimizing the UAV’s trajectory, the transmit power of the UAV, and the jamming power sent by the roadside unit (RSU). This joint optimization problem is modeled as a Markov decision process (MDP), considering time-varying characteristics of the wireless channels. A curiosity-driven deep reinforcement learning (DRL) algorithm is subsequently utilized to solve the above MDP, in which the agent is reinforced by an extrinsic reward supplied by the environment and an intrinsic reward defined as the prediction error of the consequence after executing its actions. Extensive simulation results show that compared to the DRL without intrinsic rewards, the proposed scheme can have excellent performance in terms of the average reward, learning efficiency, and generalization to other scenarios.
确保无人机对车辆通信:好奇心驱动的深度q -学习网络(C-DQN)方法
无人机(UAV)将在基于智慧城市的智能交通系统(its)中开辟新的应用领域,如交通管理、灾害救援、警察巡逻等。然而,空对地无线信道的广播性和视距性对无人机对车通信的信息安全提出了新的挑战。本文考虑了城市场景下U2V通信受到地面多个窃听者的影响。在考虑能量消耗和飞行区域限制的情况下,通过对无人机的飞行轨迹、无人机发射功率和路边单元(RSU)发送的干扰功率进行联合优化,以物理层安全角度的保密率最大化为目标。考虑到无线信道的时变特性,该联合优化问题被建模为马尔可夫决策过程。随后使用好奇心驱动的深度强化学习(DRL)算法来解决上述MDP,其中智能体通过环境提供的外部奖励和定义为执行其行为后结果预测误差的内在奖励来增强。大量的仿真结果表明,与没有内在奖励的DRL相比,该方案在平均奖励、学习效率和对其他场景的泛化方面都具有优异的性能。
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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