计算机科学
多输入多输出
信道状态信息
量化(信号处理)
用户设备
卷积神经网络
基站
计算机工程
架空(工程)
压缩传感
实时计算
人工智能
频道(广播)
算法
计算机网络
电信
无线
操作系统
作者
Jiajia Guo,Chao-Kai Wen,Shi Jin,Geoffrey Ye Li
出处
期刊:Cornell University - arXiv
日期:2019-01-01
标识
DOI:10.48550/arxiv.1906.06007
摘要
Massive multiple-input multiple-output (MIMO) is a promising technology to increase link capacity and energy efficiency. However, these benefits are based on available channel state information (CSI) at the base station (BS). Therefore, user equipment (UE) needs to keep on feeding CSI back to the BS, thereby consuming precious bandwidth resource. Large-scale antennas at the BS for massive MIMO seriously increase this overhead. In this paper, we propose a multiple-rate compressive sensing neural network framework to compress and quantize the CSI. This framework not only improves reconstruction accuracy but also decreases storage space at the UE, thus enhancing the system feasibility. Specifically, we establish two network design principles for CSI feedback, propose a new network architecture, CsiNet+, according to these principles, and develop a novel quantization framework and training strategy. Next, we further introduce two different variable-rate approaches, namely, SM-CsiNet+ and PM-CsiNet+, which decrease the parameter number at the UE by 38.0% and 46.7%, respectively. Experimental results show that CsiNet+ outperforms the state-of-the-art network by a margin but only slightly increases the parameter number. We also investigate the compression and reconstruction mechanism behind deep learning-based CSI feedback methods via parameter visualization, which provides a guideline for subsequent research.
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