In multiuser communication systems, user scheduling and beamforming (US-BF) design are two fundamental problems that are usually studied separately in the existing literature. In this work, we focus on the joint US-BF design with the goal of maximizing the set cardinality of scheduled users, which is computationally challenging due to the non-convex objective function and the coupled constraints with discrete-continuous variables. To tackle these difficulties, a successive convex approximation based US-BF (SCA-USBF) optimization algorithm is firstly proposed. Then, inspired by wireless intelligent communication, a graph neural network based joint US-BF (J-USBF) learning algorithm is developed by combining the joint US and power allocation network model with the BF analytical solution. The effectiveness of SCA-USBF and J-USBF is verified by various numerical results, the latter achieves close performance and higher computational efficiency. Furthermore, the proposed J-USBF also enjoys the generalizability in dynamic wireless network scenarios.
翻译:在多用户通信系统中,用户排期和波束成型(US-BF)设计是两个基本问题,通常在现有文献中分别研究。在这项工作中,我们侧重于美国-BF联合设计,目标是尽可能扩大固定的固定用户基点,这是计算上具有挑战性的,因为非convex目标功能和与离散的连续变量相伴的制约。为了解决这些困难,首先提出了一个基于US-BF(SCA-USBF)的连续近似优化算法(SCA-USBF)。然后,在无线智能通信的启发下,一个基于US-BF(J-USBF)联合的图形神经网络,通过将美国和电力分配网络联合模型与BF分析解决方案相结合来开发一个图形神经网络学习算法。SCA-USBF和J-USBF的效能通过各种数字结果得到验证,后者的性能接近,计算效率更高。此外,拟议的J-USBFF在动态无线网络假设中也具有通用性。