首站-论文投稿智能助手
典型文献
Machine learning based altitude-dependent empirical LoS probability model for air-to-ground communications
文献摘要:
Line-of-sight(LoS)probability prediction is critical to the performance optimization of wireless commu-nication systems.However,it is challenging to predict the LoS probability of air-to-ground(A2G)communication scenarios,because the altitude of unmanned aerial vehicles(UAVs)or other aircraft varies from dozens of meters to several kilometers.This paper presents an altitude-dependent empirical LoS probability model for A2G scenarios.Before estimating the model parameters,we design a K-nearest neighbor(KNN)based strategy to classify LoS and non-LoS(NLoS)paths.Then,a two-layer back propagation neural network(BPNN)based parameter estimation method is developed to build the relationship between every model parameter and the UAV altitude.Simulation results show that the results obtained using our proposed model has good consistency with the ray tracing(RT)data,the measurement data,and the results obtained using the standard models.Our model can also provide wider applicable altitudes than other LoS probability models,and thus can be applied to different altitudes under various A2G scenarios.
文献关键词:
作者姓名:
Minghui PANG;Qiuming ZHU;Zhipeng LIN;Fei BAI;Yue TIAN;Zhuo LI;Xiaomin CHEN
作者机构:
Key Laboratory of Dynamic Cognitive System of Electromagnetic Spectrum Space,College of Electronic and Information Engineering,Nanjing University of Aeronautics and Astronautics,Nanjing 211106,China;State Key Laboratory of Integrated Services Networks,Xidian University,Xi'an 710000,China;Key Laboratory of Radar Imaging and Microwave Photonics,Ministry of Education,College of Electronic and Information Engineering,Nanjing University of Aeronautics and Astronautics,Nanjing 211106,China
引用格式:
[1]Minghui PANG;Qiuming ZHU;Zhipeng LIN;Fei BAI;Yue TIAN;Zhuo LI;Xiaomin CHEN-.Machine learning based altitude-dependent empirical LoS probability model for air-to-ground communications)[J].信息与电子工程前沿(英文),2022(09):1378-1389
A类:
A2G
B类:
Machine,learning,dependent,empirical,probability,ground,communications,Line,sight,prediction,critical,performance,optimization,wireless,systems,However,challenging,scenarios,because,unmanned,aerial,vehicles,UAVs,other,aircraft,varies,from,dozens,several,kilometers,This,paper,presents,Before,estimating,parameters,design,nearest,neighbor,KNN,strategy,classify,NLoS,paths,Then,layer,back,propagation,neural,network,BPNN,estimation,method,developed,build,relationship,between,every,Simulation,results,show,that,obtained,using,our,proposed,has,good,consistency,ray,tracing,data,measurement,standard,models,Our,can,also,provide,wider,applicable,altitudes,than,thus,applied,different,under,various
AB值:
0.521418
相似文献
机标中图分类号,由域田数据科技根据网络公开资料自动分析生成,仅供学习研究参考。