关于用于大规模多输入多输出信道去噪的自回归和神经方法

Dmitry Artemasov, Alexander Blagodarnyi, Alexander Sherstobitov, Vladimir Lyashev
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摘要

在现代无线通信系统中,多输入多输出(MIMO)技术可通过使用天线阵列波束成形大大提高功率效率、服务面积和整个小区的吞吐量。然而,MIMO 系统需要准确的信道状态知识才能应用正确的预编码。在 5G 时分双工(TDD)系统中,信道状态信息(CSI)是通过用户设备(UE)传输的声参考信号(SRS)获得的。UE 的功率能力有限,因此无法在大带宽条件下在 gNodeB(gNB)上实现较高的上行链路(UL)信噪比(SNR)。有多种技术可用于提高噪声条件下信道估计 (CE) 的准确性。本文介绍了一种经典方法,即带有自适应模型阶次估计的向量自回归(VAR),以及一种现代深度神经网络(DNN)方法,用于解决大规模多输入多输出信道估计去噪问题。本文介绍了所开发的方法以及信号预处理和后处理步骤,并在一组实际模拟中对其性能进行了评估。在单用户和多用户多输入输出(MIMO)场景中,所设计的算法提供了优于基准时空窗口方法的结果,其有效下行链路(DL)信噪比(SINR)指标约等于 2dB。大量仿真结果证明了所开发方法对动态信道条件的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On autoregressive and neural methods for massive-MIMO channel de-noising
In modern wireless communication systems, the Multiple-Input Multiple-Output (MIMO) technology allows to greatly increase power efficiency, the serving area, and the overall cell throughput through the use of the antenna array beamforming. Nevertheless, the MIMO systems require accurate channel state knowledge to apply correct precoding. In 5G Time Division Duplex (TDD) systems, the Channel State Information (CSI) is obtained via Sounding Reference Signals (SRS) transmitted by the User Equipment (UE). UEs have limited power capabilities and thus cannot achieve high Uplink (UL) Signal-to-Noise Ratio (SNR) on gNodeB (gNB) in large bandwidth. There are multiple techniques that can be applied to improve the accuracy of Channel Estimation (CE) in noisy conditions. In this paper, we describe a classical method, namely the Vector Autoregression (VAR) with adaptive model order estimation, as well as a modern Deep Neural Network (DNN) approach for the massive-MIMO channel estimation de-noising problem. The developed methods and signal pre and postprocessing steps are described, followed by their performance evaluation in a set of realistic simulations. The designed algorithms provide results outperforming the baseline spatio-temporal windowing approaches by approximately equal to 2dB effective Downlink (DL) Signal-to-Interference-plus-Noise Ratio (SINR) metric in single and multi-user MIMO scenarios. Extensive simulation results demonstrate the robustness of the developed methods to the dynamic channel conditions.
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