This paper investigates a joint beamforming design in a multiuser multiple-input single-output (MISO) communication network aided with an intelligent reflecting surface (IRS) panel. The symbol-level precoding (SLP) is adopted to enhance the system performance by exploiting the multiuser interference (MUI) with consideration of bounded channel uncertainty. The joint beamforming design is formulated into a nonconvex worst-case robust programming to minimize the transmit power subject to single-to-noise ratio (SNR) requirements. To address the challenges due to the constant modulus and the coupling of the beamformers, we first study the single-user case. Specifically, we propose and compare two algorithms based on the semidefinite relaxation (SDR) and alternating optimization (AO) methods, respectively. It turns out that the AO-based algorithm has much lower computational complexity but with almost the same power to the SDR-based algorithm. Then, we apply the AO technique to the multiuser case and thereby develop an algorithm based on the proximal gradient descent (PGD) method. The algorithm can be generalized to the case of finite-resolution IRS and the scenario with direct links from the transmitter to the users. Numerical results show that the SLP can significantly improve the system performance. Meanwhile, 3-bit phase shifters can achieve near-optimal power performance.
翻译:本文调查了多用户多重投入单产出(MISO)通信网络中由智能反射表面面板(IRS)组成的智能反射面板(IRS)组成的联合波形设计。采用了符号级预编码(SLP),通过利用多用户干扰(MUI)来提高系统性能,同时考虑到受约束的频道不确定性。联合波形设计形成一个非Convex最差情况最强的编程,以尽量减少受单比比比要求(SNR)限制的传输能力。为了应对因恒定模数和光源组合而带来的挑战,我们首先研究单用户案例。具体地说,我们提出并比较了两种基于半确定性放松(SDR)和交替优化(AO)方法的算法。结果显示,基于AO的算法在计算复杂性上要低得多,但在基于SDR比值的算法上几乎相同的力量。然后,我们将AO技术应用于多用户案例,从而根据I 准梯度梯度梯级梯级下降(PGDDDDR) 和S 级变变码法可以明显地显示S- dalalalalalalal-lation 的用户的性能。