Intelligent reflecting surfaces (IRSs) are envisioned as a low-cost solution to achieve high spectral and energy efficiency in future communication systems due to their ability to customize wireless propagation environments. Although resource allocation design for IRS-assisted multiuser wireless communication systems has been exhaustively investigated in the literature, the optimal design and performance of such systems are still not well understood. To fill this gap, in this paper, we study optimal resource allocation for IRS-assisted multiuser multiple-input single-output (MISO) systems. In particular, we jointly optimize the beamforming at the base station (BS) and the discrete IRS phase shifts to minimize the total transmit power. For attaining the globally optimal solution of the formulated non-convex combinatorial optimization problem, we develop a resource allocation algorithm with guaranteed convergence based on Schur's complement and the generalized Bender's decomposition. Our numerical results reveal that the proposed algorithm can significantly reduce the BS transmit power compared to the state-of-the-art suboptimal alternating optimization-based approach, especially for moderate-to-large numbers of IRS elements.
翻译:虽然文献对IRS辅助多用户无线通信系统的资源配置设计进行了详尽调查,但这种系统的最佳设计和性能仍没有很好地理解。为了填补这一空白,我们在本文件中研究为IRS协助的多用户多投入单体输出(MISO)系统的最佳资源分配。特别是,我们联合优化了基础站的光成和离散的IRS阶段转换,以最大限度地减少总传输能力。为了实现已开发的非电离层组合优化问题的全球最佳解决方案,我们根据Schur的补充和普遍Bender的分解,制定了一种有保证的趋同性资源分配算法。我们的数字结果表明,拟议的算法可以大大降低BS传输力与最先进的次优化交替优化方法相比,特别是对于中到大数量的IRS元素而言。</s>