RadioUNet: Fast Radio Map Estimation With Convolutional Neural Networks

被引:155
作者
Levie, Ron [1 ,2 ]
Yapar, Cagkan [3 ]
Kutyniok, Gitta [4 ,5 ]
Caire, Giuseppe [6 ]
机构
[1] Ludwig Maximilians Univ Munchen, Dept Math, Munich 80331, Germany
[2] TU Berlin, Inst Math, D-10623 Berlin, Germany
[3] TU Berlin, Inst Telecommunicat Syst, D-10623 Berlin, Germany
[4] Ludwig Maximilians Univ Munchen, Dept Math, Munich 80331, Germany
[5] Univ Tromso, Dept Phys & Technol, Tromso 9019, Norway
[6] TU Berlin, Inst Telecommunicat Syst, D-10623 Berlin, Germany
关键词
Convolutional neural networks; signal strength prediction; radio maps; PATH-LOSS PREDICTION; LOW-RANK; RECONSTRUCTION; INFORMATION;
D O I
10.1109/TWC.2021.3054977
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
In this paper we propose a highly efficient and very accurate deep learning method for estimating the propagation pathloss from a point x (transmitter location) to any point y on a planar domain. For applications such as user-cell site association and device-to-device link scheduling, an accurate knowledge of the pathloss function for all pairs of transmitter-receiver locations is very important. Commonly used statistical models approximate the pathloss as a decaying function of the distance between transmitter and receiver. However, in realistic propagation environments characterized by the presence of buildings, street canyons, and objects at different heights, such radial-symmetric functions yield very misleading results. In this paper we show that properly designed and trained deep neural networks are able to learn how to estimate the pathloss function, given an urban environment, in a very accurate and computationally efficient manner. Our proposed method, termed RadioUNet, learns from a physical simulation dataset, and generates pathloss estimations that are very close to the simulations, but are much faster to compute for real-time applications. Moreover, we propose methods for transferring what was learned from simulations to real-life. Numerical results show that our method significantly outperforms previously proposed methods.
引用
收藏
页码:4001 / 4015
页数:15
相关论文
共 62 条
[1]  
Adler J, ARXIV200714745
[2]  
[Anonymous], 2014, P ADV INT C TEL PAR
[3]  
Ashikhmin A, 2012, IEEE INT SYMP INFO
[4]   SegNet: A Deep Convolutional Encoder-Decoder Architecture for Image Segmentation [J].
Badrinarayanan, Vijay ;
Kendall, Alex ;
Cipolla, Roberto .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2017, 39 (12) :2481-2495
[5]  
Bengio Y., 2009, ICML, P41, DOI DOI 10.1145/1553374.1553380
[6]   Optimal User-Cell Association for Massive MIMO Wireless Networks [J].
Bethanabhotla, Dilip ;
Bursalioglu, Ozgun Y. ;
Papadopoulos, Haralabos C. ;
Caire, Giuseppe .
IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, 2016, 15 (03) :1835-1850
[7]   Performance analysis,of the IEEE 802.11 distributed coordination function [J].
Bianchi, G .
IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, 2000, 18 (03) :535-547
[8]   Fading channels: Information-theoretic and communications aspects [J].
Biglieri, E ;
Proakis, J ;
Shamai, S .
IEEE TRANSACTIONS ON INFORMATION THEORY, 1998, 44 (06) :2619-2692
[9]  
Bishop M.C., 1995, Neural Networks for Pattern Recognition
[10]   Sparse Activity Detection for Massive Connectivity [J].
Chen, Zhilin ;
Sohrabi, Foad ;
Yu, Wei .
IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2018, 66 (07) :1890-1904