A PCA-based modeling method for wireless MIMO channel

Xiaochuan Ma, Jian-hua Zhang, Yuxiang Zhang, Zhanyu Ma, Yu Zhang
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引用次数: 14

Abstract

Geometry-based stochastic model (GBSM) of multiple input multiple output (MIMO) channel describes the channel impulse response (CIR) in the sense of rays and clusters, which obey the empirical distributions. Thus, the correlation between MIMO sub-channels is not explicitly defined, which makes it difficult for GBSM to predict channel capacity accurately. Facing the increased antenna number of massive MIMO for fifth generation (5G) communication, we propose a channel modeling method using principal component analysis (PCA). This method takes advantage of the hidden features and structures extracted from the measured channel data, combining the information of the scenario and antenna configurations, to reconstruct the amplitude and phase of the CIR respectively. The sparse features and structures can efficiently support the high antenna number of massive MIMO. By the proposed scheme, the accuracy of 56 × 32 MIMO capacity improves 12.8% compared with the GBSM model.
基于pca的无线MIMO信道建模方法
基于几何的多输入多输出(MIMO)信道随机模型(GBSM)从射线和簇的意义上描述信道脉冲响应(CIR),服从经验分布。因此,MIMO子信道之间的相关性没有明确定义,这使得GBSM难以准确预测信道容量。针对第五代(5G)通信中大规模MIMO天线数量的增加,提出了一种基于主成分分析(PCA)的信道建模方法。该方法利用从实测信道数据中提取的隐藏特征和结构,结合场景信息和天线配置信息,分别重构CIR的幅值和相位。稀疏特性和稀疏结构可以有效地支持大规模MIMO的高天线数。与GBSM模型相比,该方案在56 × 32 MIMO容量下的精度提高了12.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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