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Deep Reinforcement Learning-Based Intelligent Reflecting Surface for Secure Wireless Communications

机译:基于深度加强学习的智能反射表面,用于安全无线通信

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摘要

In this paper, we study an intelligent reflecting surface (IRS)-aided wireless secure communication system, where an IRS is deployed to adjust its reflecting elements to secure the communication of multiple legitimate users in the presence of multiple eavesdroppers. Aiming to improve the system secrecy rate, a design problem for jointly optimizing the base station (BS)’s beamforming and the IRS’s reflecting beamforming is formulated considering different quality of service (QoS) requirements and time-varying channel conditions. As the system is highly dynamic and complex, and it is challenging to address the non-convex optimization problem, a novel deep reinforcement learning (DRL)-based secure beamforming approach is firstly proposed to achieve the optimal beamforming policy against eavesdroppers in dynamic environments. Furthermore, post-decision state (PDS) and prioritized experience replay (PER) schemes are utilized to enhance the learning efficiency and secrecy performance. Specifically, a modified PDS scheme is presented to trace the channel dynamic and adjust the beamforming policy against channel uncertainty accordingly. Simulation results demonstrate that the proposed deep PDS-PER learning based secure beamforming approach can significantly improve the system secrecy rate and QoS satisfaction probability in IRS-aided secure communication systems.
机译:在本文中,我们研究了智能反射表面(IRS)的无线安全通信系统,其中部署IRS以调整其反射元件,以确保在多个窃听者的存在下的多个合法用户的通信。旨在提高系统保密率,在考虑不同质量的服务质量(QoS)要求和时变信道条件,配制了用于共同优化基站(BS)波束成形和IRS反射波束成形的设计问题。由于系统具有高度动态和复杂,并且解决了非凸优化问题的挑战,首先提出了一种新的深度增强学习(DRL)基础的安全波束形成方法,以实现对动态环境中的窃听者的最佳波束形成策略。此外,利用决策后状态(PDS)和优先经验重放(每)方案来提高学习效率和保密性能。具体地,呈现修改的PDS方案以跟踪信道动态并相应地调整波束形成策略反馈信道不确定性。仿真结果表明,基于IRS辅助安全通信系统中提出的基于PDS-PDS的基于PDS-PDS-PDS-PDS-PDS-PDS-PDS-PDS-and QoS满意度。

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