论文标题
智能反射表面辅助多源通信的两次尺度波束形成优化与QoS限制
Two-timescale Beamforming Optimization for Intelligent Reflecting Surface Aided Multiuser Communication with QoS Constraints
论文作者
论文摘要
智能反射表面(IRS)是一项新兴技术,能够通过可调的被动信号反射重新配置无线通道,从而提高无线网络的光谱和能源效率,以成本效率。在本文中,我们研究了IRS的多源多输入单输出(MISO)无线系统,并采用了两次衡量(TTS)的传输,以减少与基于瞬时渠道状态信息(I-CSI)(I-CSI)的现有方案相比,相比,信号处理的复杂性和渠道培训间接费用,并同时利用多元素渠道渠道频道范围内的传输多样性。具体而言,长期的被动式面积成形是基于所有链接的统计CSI(S-CSI)设计的,而短期主动波束形成旨在迎合所有用户通过优化IRS相移的所有用户重新配置通道的I-CSI。我们的目的是最大程度地减少访问点(AP)的平均发射功率,但受用户个人服务质量(QOS)约束的影响。配方的随机优化问题是非凸的,因此难以解决,因为长期和短期设计变量在QoS约束中复杂化。为了解决这个问题,我们提出了一种有效的算法,称为基于原始的双偶分解的TTS主动和被动边界(PDD-TJAPB),其中原始问题被分解为长期问题和短期问题的家族,并采用了深度不展开的技术来从短期出发的问题中提取渐变的信息来构建问题的问题,以解决问题的问题。事实证明,所提出的算法几乎可以肯定地收敛到原始问题的固定解决方案。给出了模拟结果,该结果证明了与基准方案相比,提出的算法的优点和有效性。
Intelligent reflecting surface (IRS) is an emerging technology that is able to reconfigure the wireless channel via tunable passive signal reflection and thereby enhance the spectral and energy efficiency of wireless networks cost-effectively. In this paper, we study an IRS-aided multiuser multiple-input single-output (MISO) wireless system and adopt the two-timescale (TTS) transmission to reduce the signal processing complexity and channel training overhead as compared to the existing schemes based on the instantaneous channel state information (I-CSI), and at the same time, exploit the multiuser channel diversity in transmission scheduling. Specifically, the long-term passive beamforming is designed based on the statistical CSI (S-CSI) of all links, while the short-term active beamforming is designed to cater to the I-CSI of all users' reconfigured channels with optimized IRS phase shifts. We aim to minimize the average transmit power at the access point (AP), subject to the users' individual quality of service (QoS) constraints. The formulated stochastic optimization problem is non-convex and difficult to solve since the long-term and short-term design variables are complicatedly coupled in the QoS constraints. To tackle this problem, we propose an efficient algorithm, called the primal-dual decomposition based TTS joint active and passive beamforming (PDD-TJAPB), where the original problem is decomposed into a long-term problem and a family of short-term problems, and the deep unfolding technique is employed to extract gradient information from the short-term problems to construct a convex surrogate problem for the long-term problem. The proposed algorithm is proved to converge to a stationary solution of the original problem almost surely. Simulation results are presented which demonstrate the advantages and effectiveness of the proposed algorithm as compared to benchmark schemes.