基于主成分分析的信道压缩海量MIMO信道预测

Rei Nagashima, T. Ohtsuki, Wenjie Jiang, Y. Takatori, T. Nakagawa
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引用次数: 8

摘要

大规模多输入多输出(Massive MIMO)是实现5G(第5代)的关键技术之一。大规模MIMO可以在发射端和接收端同时部署多个天线,通过向接收端方向叠加移动无线电波来提高高频段的传输质量。然而,由于天线数量庞大,存在着从接收机到发射机的信道状态信息(CSI)反馈量增加的问题。为了解决这一问题,存在一种利用主成分分析(PCA)将CSI压缩成一个低维矩阵并减少反馈量的技术。在传统方法中,基于PCA计算压缩信道矩阵的压缩矩阵,并将压缩后的信道从接收机反馈到基站(BS)。在该方法中,PCA所用的压缩矩阵是基于接收端过去的CSI生成的,这导致了传输速率的下降。这是因为在发射器获得的CSI与发射器发送信号时的CSI之间存在不匹配,这是由于接收器到发射器反馈期间的信道变化。为了解决这一问题,本文提出了基于主成分分析的信道预测方法。信道预测采用前向向后AR (Auto Regressive)模型,由预测的信道生成PCA中的压缩矩阵。计算机仿真结果表明,由预测信道生成压缩矩阵可以提高系统容量,提高信道恢复的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Channel prediction for massive MIMO with channel compression based on principal component analysis
Massive MIMO (multiple-input multiple-output) is one of the key technologies to realize 5G (5th Generation). Massive MIMO can be implemented with many antennas at a transmitter and receiver sides, and it can improve transmission quality at high frequency band by transmitting with superposing shift of radio wave toward the direction of the receiver. However, there exists an issue such as the increase of the amount of feedback of channel state information (CSI) from the receiver to the transmitter, due to the enormous number of antennas. For the purpose of solving this issue, there exists the technique to compress CSI to a lower dimension matrix and decrease the amount of feedback, by using principal component analysis (PCA). In the conventional method, the compression matrix to compress a channel matrix is calculated on the basis of PCA, and the compressed channel is fed back from the receiver to the base station (BS). In this method, the compression matrix used in PCA is generated based on the past CSI at the receiver, which leads to the degradation of transmission rate. This is because there is a mismatch between the CSI acquired at the transmitter and that when the transmitter transmits a signal, due to the channel variation during the feedback from the receiver to the transmitter. In this paper, to solve this problem, we propose the method based on PCA with the channel prediction. As the channel prediction, the forward-backward AR (Auto Regressive) model is used, and the compression matrix in PCA is generated from the predicted channels. By the computer simulation, it is shown that the system capacity is increased by generating the compression matrix from the predicted channel that improves the accuracy of channel restoration.
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