Downlink beamforming is an essential technology for wireless cellular networks; however, the design of beamforming vectors that maximize the weighted sum rate (WSR) is an NP-hard problem and iterative algorithms are typically applied to solve it. The weighted minimum mean square error (WMMSE) algorithm is the most widely used one, which iteratively minimizes the WSR and converges to a local optimal. Motivated by the recent developments in meta-learning techniques to solve non-convex optimization problems, we propose a meta-learning based iterative algorithm for WSR maximization in a MISO downlink channel. A long-short-term-memory (LSTM) network-based meta-learning model is built to learn a dynamic optimization strategy to update the variables iteratively. The learned strategy aims to optimize each variable in a less greedy manner compared to WMMSE, which updates variables by computing their first-order stationary points at each iteration step. The proposed algorithm outperforms WMMSE significantly in the high signal to noise ratio(SNR) regime and shows the comparable performance when the SNR is low.
翻译:下行链路是无线蜂窝网络的一项基本技术;然而,光线波束成形是最大加权总和率(WSR)的一种基本技术;然而,光线波形矢量的设计是一个NP-硬问题,通常会用迭代算法解决这个问题。加权最小平均平方差(WMMSE)算法是最广泛使用的算法,它反复地将WSR最小平均差(WMMSE)减少到最小,并会与本地最佳一致。受最近解决非对流线优化问题的元学习技术开发的驱动,我们提议在 MISO 下行通道中为WSR最大化而采用基于元波段的元学习迭代算法。一个长期短期网基元学习模型将学习动态优化战略,以迭代更新变量。所学战略的目标是以比WMMSE(WMSE)更不贪婪的方式优化每种变量,而WMNSE在每一步计算第一阶定点时都会更新变量。拟议的算法在高噪声率信号系统(SNR)中明显优于WMMSE,并显示可比较的性表现。