双向训练干扰网络中的自适应波束形成

Changxin Shi, R. Berry, M. Honig
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引用次数: 28

摘要

我们研究了多输入多输出(MIMO)干扰网络中调整波束形成矢量和接收机滤波器的分布式算法,假设每个用户在接收机处使用单波束和线性滤波器。在这种情况下,已经研究了几种分布式算法,以最大化和率或和效用,假设发射机和接收机的信道状态信息(CSI)是完美的。本文的重点是研究时变信道的自适应算法,在不假设发射机和接收机有任何CSI的情况下。具体来说,我们考虑了一种适用于时分双工系统的最新Max-SINR算法的自适应版本。该算法采用一段时间的双向训练,然后传输一段数据。向前方向的训练使用当前波束形成器发送,并用于调整接收滤波器。反向训练用电流接收滤波器作为波束发送,并用于调整发射波束形成器。接收滤波器和波束形成器的自适应是使用当前块的最小二乘目标来完成的。为了在训练数据有限的情况下提高性能,我们还考虑使用以前块的指数加权数据。给出了数值结果,比较了算法在不同设置下的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive beamforming in interference networks via bi-directional training
We study distributed algorithms for adjusting beamforming vectors and receiver filters in multiple-input multiple-output (MIMO) interference networks, with the assumption that each user uses a single beam and a linear filter at the receiver. In such a setting there have been several distributed algorithms studied for maximizing the sum-rate or sum-utility assuming perfect channel state information (CSI) at the transmitters and receivers. The focus of this paper is to study adaptive algorithms for time-varying channels, without assuming any CSI at the transmitters or receivers. Specifically, we consider an adaptive version of the recent Max-SINR algorithm for a time-division duplex system. This algorithm uses a period of bi-directional training followed by a block of data transmission. Training in the forward direction is sent using the current beam-formers and used to adapt the receive filters. Training in the reverse direction is sent using the current receive filters as beams and used to adapt the transmit beamformers. The adaptation of both receive filters and beamformers is done using a least-squares objective for the current block. In order to improve the performance when the training data is limited, we also consider using exponentially weighted data from previous blocks. Numerical results are presented that compare the performance of the algorithms in different settings.
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