论文标题
智能反映表面辅助反犯罪通信:一种快速加强学习方法
Intelligent Reflecting Surface Assisted Anti-Jamming Communications: A Fast Reinforcement Learning Approach
论文作者
论文摘要
Smart Jammers发起的恶意干扰可以攻击合法的传输,这被视为无线通信中的关键安全挑战之一。本文以此为重点,考虑使用智能反射表面(IRS)来通过调整IRS的反射元素来增强反判断沟通性能并减轻干扰。旨在提高针对智能干扰器的沟通性能,这是一个优化的问题,用于在考虑合法用户的服务质量(QOS)要求的同时,制定了基本站(BS)共同优化功率分配的优化问题,并反映IRS的波束成绩。由于建议的模型和干扰行为是动态的和未知的,因此提出了模糊的胜利或学习快速的爬山(WOLFPHC)学习方法,以共同优化抗障碍的功率分配和反映波束成式策略,其中WolfPHC能够快速实现良好的态度,而无需确定的范围,即将逐渐实现良好的范围,即逐渐构成模型,并且可以肯定地构成了典型的范围。仿真结果表明,与现有解决方案相比,提出的基于反杀伤的方法可以有效地改善IRS辅助系统速率和传输保护水平。
Malicious jamming launched by smart jammers can attack legitimate transmissions, which has been regarded as one of the critical security challenges in wireless communications. With this focus, this paper considers the use of an intelligent reflecting surface (IRS) to enhance anti-jamming communication performance and mitigate jamming interference by adjusting the surface reflecting elements at the IRS. Aiming to enhance the communication performance against a smart jammer, an optimization problem for jointly optimizing power allocation at the base station (BS), and reflecting beamforming at the IRS is formulated while considering quality of service (QoS) requirements of legitimate users. As the jamming model and jamming behavior are dynamic and unknown, a fuzzy win or learn fast-policy hill-climbing (WoLFPHC) learning approach is proposed to jointly optimize the anti-jamming power allocation and reflecting beamforming strategy, where WoLFPHC is capable of quickly achieving the optimal policy without the knowledge of the jamming model, and fuzzy state aggregation can represent the uncertain environment states as aggregate states. Simulation results demonstrate that the proposed anti-jamming learning-based approach can efficiently improve both the IRS-assisted system rate and transmission protection level compared with existing solutions.