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Deep Learning Enabled Optimization of Downlink Beamforming Under Per-Antenna Power Constraints: Algorithms and Experimental Demonstration

机译:深度学习在每天线功率约束下,使得下行链路波束形成优化:算法和实验演示

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This paper studies fast downlink beamforming algorithms using deep learning in multiuser multiple-input-single-output systems where each transmit antenna at the base station has its own power constraint. We focus on the signal-to-interference-plus-noise ratio (SINR) balancing problem which is quasi-convex but there is no efficient solution available. We first design a fast subgradient algorithm that can achieve near-optimal solution with reduced complexity. We then propose a deep neural network structure to learn the optimal beamforming based on convolutional networks and exploitation of the duality of the original problem. Two strategies of learning various dual variables are investigated with different accuracies, and the corresponding recovery of the original solution is facilitated by the subgradient algorithm. We also develop a generalization method of the proposed algorithms so that they can adapt to the varying number of users and antennas without re-training. We carry out intensive numerical simulations and testbed experiments to evaluate the performance of the proposed algorithms. Results show that the proposed algorithms achieve close to optimal solution in simulations with perfect channel information and outperform the alleged theoretically optimal solution in experiments, illustrating a better performance-complexity tradeoff than existing schemes.
机译:本文研究了使用深度学习的快速下行链路波束形成算法,该算法在多用户多输入单输出系统中的深度学习,其中基站处的每个发射天线具有其自身的功率约束。我们专注于信号到干扰 - 加噪声比(SINR)平衡问题,这是准凸起的,但没有可用的有效解决方案。我们首先设计一种快速的子缩影算法,可以实现近乎最佳的解决方案,减少复杂性。然后,我们提出了一种深度神经网络结构,以了解基于卷积网络的最佳波束成形和对原始问题的二元性的利用。通过不同的精度研究了各种学习各种双变量的策略,并通过子学算法促进了原始解决方案的相应恢复。我们还开发了所提出的算法的概括方法,使得它们可以在没有重新训练的情况下适应不同数量的用户和天线。我们进行了密集的数值模拟,并进行了测试的实验,以评估所提出的算法的性能。结果表明,该算法在模拟中实现了接近的最佳解决方案,具有完美的频道信息,并且优于所谓的理论上在实验中的理论上最佳解决方案,说明比现有方案更好的性能复杂性权衡。

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