Frequency Selective Hybrid Precoding Based on Adaptive Gradient Algorithm in mmWave Systems

Yu Zhang, Meijun Qu
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Abstract

Hybrid precoding can combat severe attenuation of the millimeter wave (mmWave) link by leveraging large-scale antenna array, while permitting practicable circuits with low power consumption and hardware cost. Although existing near-optimal algorithms have approached the performance of fully-digital precoding, their complexities are still very high. In this paper, we reconsider the problem of frequency selective hybrid precoding and propose an equivalent neural network architecture of point-to-point hybrid precoding for orthogonal frequency division multiplexing (OFDM) multi-input multi-output (MIMO) systems. Under this new architecture, the elements of the digital-and analog- precoders can be regarded as the connecting weights of a single hidden layer neural network. Inspired by the backpropagation (BP) algorithm in feedforward neural networks, we propose an adaptive gradient (AG)-based BP algorithm for hybrid precoding in this new architecture. The numerical simulation results demonstrate that the proposed algorithm can achieve the performance of the unconstrained fully-digital precoding with lower complexity compared with the the existing near-optimal alternating minimization algorithms.
毫米波系统中基于自适应梯度算法的频率选择混合预编码
混合预编码可以利用大规模天线阵列对抗毫米波(mmWave)链路的严重衰减,同时允许低功耗和低硬件成本的可行电路。虽然现有的近最优算法已经接近全数字预编码的性能,但其复杂性仍然很高。针对正交频分复用(OFDM)多输入多输出(MIMO)系统的频率选择混合预编码问题,提出了一种等效的点对点混合预编码神经网络结构。在这种新架构下,数字和模拟预编码器的元素可以看作是单个隐层神经网络的连接权值。受前馈神经网络中反向传播(BP)算法的启发,我们提出了一种基于自适应梯度(AG)的BP算法用于混合预编码。数值仿真结果表明,与现有的近最优交替最小化算法相比,该算法能够以较低的复杂度达到无约束全数字预编码的性能。
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