多用户鲁棒波束形成的优化启发学习网络

Minghe Zhu, Tsung-Hui Chang
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引用次数: 2

摘要

对于具有严格延迟和能量限制的实时无线网络,深度神经网络已被用于近似资源分配解决方案,而这些解决方案以前是由先进但计算代价高昂的优化算法获得的。本文研究了多天线干扰信道中最大和速率的多用户波束形成设计问题。具体来说,我们提出了一种梯度投影启发的递归神经网络,用于有效的波束形成优化。关键是探索和速率梯度向量的结构,使网络只学习一组降维系数。进一步,我们将其扩展到在有界信道误差存在的情况下实现最坏情况和速率最大化的鲁棒波束形成设计。数值结果表明,所提出的学习网络能够在显著缩短运行时间的同时获得较高的和速率精度。
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Optimization Inspired Learning Network for Multiuser Robust Beamforming
For real-time wireless networks with strict latency and energy constraints, deep neural networks have been used to approximate the resource allocation solutions that are previously obtained by advanced but computationally expensive optimization algorithms. In this paper, we consider the multi-user beamforming design problem for sum rate maximization in multi-antenna interference channels. Specifically, we propose a gradient projection inspired recurrent neural network for efficient beamforming optimization. The key ingredient is to explore the structure of the gradient vector of the sum rate so that the network learns only a set of dimension reduced coefficients. Furthermore, we extend it to the robust beamforming design for worst-case sum rate maximization in the presence of bounded channel errors. Numerical results show that the proposed learning networks can achieve high accuracy of the sum rates while with significantly reduced runtime.
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