5G无线通信中信道估计的深度学习方法

Karam M. Ebrahiem, H. Soliman, S. Abuelenin, H. El-Badawy
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引用次数: 3

摘要

本文研究了深度学习(机器学习的一个分支)在5G无线通信系统中的应用。深度学习需要大量的数据集用于训练和测试。通过测量活动获得如此大的数据集是一项具有挑战性和昂贵的任务。因此,使用合成数据是一种常见的做法。本论文的目的是调查深度学习在5G系统中的不同应用,更具体地说,是利用深度学习实现大规模多输入多输出(mMIMO),用于估计宽带mMIMO信道,以及用于波束形成合作传输。然后,对这些系统的数据集生成方法进行了介绍和回顾。深度学习所需的数据集可以通过光线追踪模拟器构建。介绍了基于Remcom无线InSite®光线追踪模拟器的一些部署场景的方法说明。这些场景用于提供深度学习所需的数据集。然后,提出了基于感知环境类型(室内/室外)和联合估计信道矢量、到达方向(DoA)、离开方向(DoD)和Rx点功率分配的未来工作方向。以类似于自适应波束形成的方式,射频辐射方向图可以根据时变的DoA和DoD以及估计的信道进行调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning Approach for Channel Estimation in 5G Wireless Communications
This paper studies the applications of Deep Learning (branch of Machine Learning) in 5G wireless communication systems. Deep Learning requires having large sets of data for training and testing purposes. Obtaining such large datasets through measurement campaigns is a challenging and costly task. Therefore, it is a common practice to use synthesized data. The aim of the current paper is to survey different applications of deep learning in 5G systems, and more specifically, that implementing the massive multiple input multiple output (mMIMO) using deep learning, for estimating the wideband mMIMO channel, and for beamforming co-operative transmission. Then, methods for dataset generation for such systems are covered and reviewed. The required datasets for deep-learning may be constructed via ray-tracing simulators. Illustration of the methodology with some deployment scenarios relying on Remcom wireless InSite® ray-tracing simulator are introduced. These scenarios are used to provide the required datasets to be used for deep learning. Then, several directions are proposed for future work that are based on sensing the environment type, (Indoor/Outdoor), and jointly estimating the channel vector, Direction-of-Arrival (DoA), Direction of Departure (DoD), and Rx point power allocation. In a manner similar to adaptive beamforming, the RF radiation pattern can be adapted according to the time-varying DoA and DoD, and estimated channel.
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