{"title":"REM-U-Net: Deep Learning Based Agile REM Prediction With Energy-Efficient Cell-Free Use Case","authors":"Hazem Sallouha;Shamik Sarkar;Enes Krijestorac;Danijela Cabric","doi":"10.1109/OJSP.2024.3378591","DOIUrl":null,"url":null,"abstract":"Radio environment maps (REMs) hold a central role in optimizing wireless network deployment, enhancing network performance, and ensuring effective spectrum management. Conventional REM prediction methods are either excessively time-consuming, e.g., ray tracing, or inaccurate, e.g., statistical models, limiting their adoption in modern inherently dynamic wireless networks. Deep learning-based REM prediction has recently attracted considerable attention as an appealing, accurate, and time-efficient alternative. However, existing works on REM prediction using deep learning are either confined to 2D maps or use a relatively small dataset. In this paper, we introduce a runtime-efficient REM prediction framework based on U-Nets, trained on a large-scale 3D maps dataset. In addition, data preprocessing steps are investigated to further refine the REM prediction accuracy. The proposed U-Net framework, along with preprocessing steps, are evaluated in the context of \n<italic>the 2023 IEEE ICASSP Signal Processing Grand Challenge, namely, the First Pathloss Radio Map Prediction Challenge</i>\n. The evaluation results demonstrate that the proposed method achieves an average normalized root-mean-square error (RMSE) of 0.045 with an average of 14 milliseconds (ms) runtime. Finally, we position our achieved REM prediction accuracy in the context of a relevant cell-free massive multiple-input multiple-output (CF-mMIMO) use case. We demonstrate that one can obviate consuming energy on large-scale fading (LSF) measurements and rely on predicted REM instead to decide which sleep access points (APs) to switch on in a CF-mMIMO network that adopts a minimum propagation loss AP switch ON/OFF strategy.","PeriodicalId":73300,"journal":{"name":"IEEE open journal of signal processing","volume":"5 ","pages":"750-765"},"PeriodicalIF":2.9000,"publicationDate":"2024-03-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=10474197","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"IEEE open journal of signal processing","FirstCategoryId":"1085","ListUrlMain":"https://ieeexplore.ieee.org/document/10474197/","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"ENGINEERING, ELECTRICAL & ELECTRONIC","Score":null,"Total":0}
引用次数: 0
Abstract
Radio environment maps (REMs) hold a central role in optimizing wireless network deployment, enhancing network performance, and ensuring effective spectrum management. Conventional REM prediction methods are either excessively time-consuming, e.g., ray tracing, or inaccurate, e.g., statistical models, limiting their adoption in modern inherently dynamic wireless networks. Deep learning-based REM prediction has recently attracted considerable attention as an appealing, accurate, and time-efficient alternative. However, existing works on REM prediction using deep learning are either confined to 2D maps or use a relatively small dataset. In this paper, we introduce a runtime-efficient REM prediction framework based on U-Nets, trained on a large-scale 3D maps dataset. In addition, data preprocessing steps are investigated to further refine the REM prediction accuracy. The proposed U-Net framework, along with preprocessing steps, are evaluated in the context of
the 2023 IEEE ICASSP Signal Processing Grand Challenge, namely, the First Pathloss Radio Map Prediction Challenge
. The evaluation results demonstrate that the proposed method achieves an average normalized root-mean-square error (RMSE) of 0.045 with an average of 14 milliseconds (ms) runtime. Finally, we position our achieved REM prediction accuracy in the context of a relevant cell-free massive multiple-input multiple-output (CF-mMIMO) use case. We demonstrate that one can obviate consuming energy on large-scale fading (LSF) measurements and rely on predicted REM instead to decide which sleep access points (APs) to switch on in a CF-mMIMO network that adopts a minimum propagation loss AP switch ON/OFF strategy.
无线电环境图(REM)在优化无线网络部署、提高网络性能和确保有效的频谱管理方面发挥着核心作用。传统的 REM 预测方法要么过于耗时(如光线跟踪),要么不准确(如统计模型),限制了它们在现代动态无线网络中的应用。基于深度学习的 REM 预测作为一种有吸引力、准确且省时的替代方法,最近引起了广泛关注。然而,利用深度学习进行 REM 预测的现有工作要么局限于二维地图,要么使用相对较小的数据集。在本文中,我们介绍了一种基于 U-Nets 的运行时间高效的 REM 预测框架,该框架在大规模三维地图数据集上进行了训练。此外,我们还研究了数据预处理步骤,以进一步提高 REM 预测的准确性。在 2023 年 IEEE ICASSP 信号处理大挑战赛(即首届路径损耗无线电地图预测挑战赛)的背景下,对所提出的 U-Net 框架和预处理步骤进行了评估。评估结果表明,所提方法的平均归一化均方根误差 (RMSE) 为 0.045,平均运行时间为 14 毫秒 (ms)。最后,我们将所实现的 REM 预测准确性与相关的无蜂窝大规模多输入多输出(CF-mMIMO)用例相结合。我们证明,在采用最小传播损耗接入点开关策略的 CF-mMIMO 网络中,可以避免在大规模衰落(LSF)测量上消耗能量,而是依靠预测的 REM 来决定开启哪些睡眠接入点(AP)。