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Similarity Measures for Location-Dependent MMIMO, 5G Base Stations On/Off Switching Using Radio Environment Map

机译:使用无线电环境映射的位置依赖MMIMO,5G基站的相似性测量,5G基站开/关切换

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The Massive Multiple-Input Multiple-Output (MMIMO) technique together with Heterogeneous Network (Het-Net) deployment enables high throughput of 5G and beyond networks. However, a high number of antennas and a high number of Base Stations (BSs) can result in significant power consumption. Previous studies have shown that the energy efficiency (EE) of such a network can be effectively increased by turning off some BSs depending on User Equipments (UEs) positions. Such mapping is obtained by using Reinforcement Learning. Its results are stored in a so-called Radio Environment Map (REM). However, in a real network, the number of UEs’ positions patterns would go to infinity. This paper aims to determine how to match the current set of UEs’ positions to the most similar pattern, i.e., providing the same optimal active BSs set, saved in REM. We compare several state-of-the-art distance metrics using a computer simulator: an accurate 3D-Ray-Tracing model of the radio channel and an advanced system-level simulator of MMIMO Het-Net. The results have shown that the so-called Sum of Minimums Distance provides the best matching between REM data and UEs’ positions, enabling up to 56% EE improvement over the scenario without EE optimization.
机译:巨大的多输入多输出(MMIMO)技术与异构网络(HET-NET)部署一起实现了5G和超出网络的高吞吐量。然而,大量的天线和大量基站(BSS)可以导致显着的功耗。以前的研究表明,根据用户设备(UE)位置,可以通过关闭一些BS来有效地增加这种网络的能量效率(EE)。通过使用加强学习获得这种映射。其结果存储在所谓的无线电环境图(REM)中。然而,在一个真实的网络中,UES位置模式的数量将进入无限远。本文旨在确定如何将当前UES的位置与最相似的模式相匹配,即提供相同的最佳活动BSS集,保存在REM中。我们使用计算机模拟器比较多个最先进的距离指标:无线电通道的精确3D播窗模型和MMIMO HET-NET的先进系统级模拟器。结果表明,所谓的最小值距离在剩余数据和UES的位置之间提供了最佳匹配,在没有EE优化的情况下,可以在方案上实现高达56%的EE改进。

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