首站-论文投稿智能助手
典型文献
Ionospheric vertical total electron content prediction model in low-latitude regions based on long short-term memory neural network
文献摘要:
Ionosphere delay is one of the main sources of noise affecting global navigation satellite systems,operation of radio detection and ranging systems and very-long-baseline-interferometry.One of the most important and common methods to reduce this phase delay is to establish accurate nowcasting and forecasting ionospheric total electron content models.For forecasting models,compared to mid-to-high latitudes,at low latitudes,an active ionosphere leads to extreme differences between long-term prediction models and the actual state of the ionosphere.To solve the problem of low accuracy for long-term prediction models at low latitudes,this article provides a low-latitude,long-term ionospheric prediction model based on a multi-input-multi-output,long-short-term memory neural network.To verify the feasibility of the model,we first made predictions of the vertical total electron content data 24 and 48 hours in advance for each day of July 2020 and then compared both the predictions corresponding to a given day,for all days.Furthermore,in the model modification part,we selected historical data from June 2020 for the validation set,determined a large offset from the results that were predicted to be active,and used the ratio of the mean absolute error of the detected results to that of the predicted results as a correction coefficient to modify our multi-input-multi-output long short-term memory model.The average root mean square error of the 24-hour-advance predictions of our modified model was 4.4 TECU,which was lower and better than 5.1 TECU of the multi-input-multi-output,long short-term memory model and 5.9 TECU of the IRI-2016 model.
文献关键词:
作者姓名:
Tong-Bao Zhang;Hui-Jian Liang;Shi-Guang Wang;Chen-Guang Ouyang
作者机构:
Department of Precision Instrument,Tsinghua University,Beijing 100084,China;State Key Laboratory of Precision Measurement Technology and Instrument,Tsinghua University,Beijing 100084,China;Department of Electronic Engineer,Tsinghua University,Beijing 100084,China
引用格式:
[1]Tong-Bao Zhang;Hui-Jian Liang;Shi-Guang Wang;Chen-Guang Ouyang-.Ionospheric vertical total electron content prediction model in low-latitude regions based on long short-term memory neural network)[J].中国物理B(英文版),2022(08):386-397
A类:
B类:
Ionospheric,vertical,total,electron,content,regions,long,short,memory,neural,network,Ionosphere,delay,one,main,sources,noise,affecting,global,navigation,satellite,systems,operation,radio,detection,ranging,very,baseline,interferometry,One,most,important,common,methods,reduce,this,phase,establish,accurate,nowcasting,forecasting,ionospheric,models,For,compared,mid,high,latitudes,active,ionosphere,leads,extreme,differences,between,actual,state,To,solve,problem,accuracy,article,provides,multi,input,output,verify,feasibility,first,made,predictions,data,hours,advance,each,July,then,both,corresponding,given,all,days,Furthermore,modification,part,selected,historical,from,June,validation,determined,large,offset,results,that,were,predicted,used,mean,absolute,error,detected,correction,coefficient,modify,average,root,square,modified,was,TECU,which,lower,better,than,IRI
AB值:
0.488807
相似文献
In situ neutron diffraction unravels deformation mechanisms of a strong and ductile FeCrNi medium entropy alloy
L.Tang;F.Q.Jiang;J.S.Wróbel;B.Liu;S.Kabra;R.X.Duan;J.H.Luan;Z.B.Jiao;M.M.Attallah;D.Nguyen-Manh;B.Cai-School of Metallurgy and Materials,University of Birmingham,B15 2TT,United Kingdom;Institute of Metal Research,Chinese Academy of Sciences,Shenyang 110016,China;Faculty of Materials Science and Engineering,Warsaw University of Technology,ul.Wo?oska 141,Warsaw 02-507,Poland;State Key Laboratory for Powder Metallurgy,Central South University,Changsha 410083,China;Rutherford Appleton Laboratory,ISIS Facility,Didcot OX11 0QX,United Kingdom;Department of Materials Science and Engineering,City University of Hong Kong,Kowloon,Hong Kong,China;Department of Mechanical Engineering,The Hong Kong Polytechnic University,Hung Hom,Hong Kong,China;CCFE,United Kingdom Atomic Energy Authority,Abingdon,Oxfordshire OX14 3DB,United Kingdom
Characteristics of solar-irradiance spectra from measurements,modeling,and theoretical approach
Gerard Thuillier;Ping Zhu;Martin Snow;Peng Zhang;Xin Ye-Physikalisch-Meteorologisches Observatorium Davos World Radiation Centre(PMOD/WRC),Davos Dorf,Switzerland;Changchun Institute of Optics,Fine Mechanics and Physics,Chinese Academy of Science,3888 Dong Nanhu Road,Changchun 130033,China;Royal Observatory of Belgium,Av.Circulaire 3,1180 Brussels,Belgium;Laboratory for Atmospheric and Space Physics,University of Colorado Boulder,Boulder,CO 80309,USA;South African National Space Agency(SANSA),Hospital Street,Hermanus 7200,South Africa;University of the Western Cape,Department of Physics and Astronomy,Robert Sobukwe Rd,Belville,Cape Town 7535,South Africa;National Satellite Meteorological Center,China Meteorological Administration,Beijing 100081,China;Innovation Center for FengYun Meteorological Satellite,China Meteorological Administration,Beijing 100081,China
Quantitative analysis and time-resolved characterization of simulated tokamak exhaust gas by laser-induced breakdown spectroscopy
Yaxiong HE;Tao XU;Yong ZHANG;Chuan KE;Yong ZHAO;Shu LIU-School of Physics and Energy,Fujian Normal University,Fuzhou 350117,People's Republic of China;Center for Superconducting and New Energy Research and Development,Southwest Jiaotong University,Chengdu 610031,People's Republic of China;Fujian Provincial Collaborative Innovation Center for Advanced High-Field Superconducting Materials and Engineering,Fuzhou 350117,People's Republic of China;Shandong Dong Yi Optoelectronic Instrument Co.,Ltd,Yantai 264670,People's Republic of China;Technical Center for Industrial Product and Raw Material Inspection and Testing,Shanghai Customs,Shanghai 200135,People's Republic of China
Alzheimer's disease:current status and perspective
Wenying Liu;Serge Gauthier;Jianping Jia-Innovation Center for Neurological Disorders and Department of Neurology,Xuanwu Hospital,Capital Medical University,National Clinical Research Center for Geriatric Diseases,Beijing 100053,China;Departments of Neurology and Neurosurgery,and Department of Psychiatry,McGill Centre for Studies in Aging,McGill University,Montreal H4H1R3,Canada;Beijing Key Laboratory of Geriatric Cognitive Disorders,Beijing 100053,China;Clinical Center for Neurodegenerative Disease and Memory Impairment,Capital Medical University,Beijing 100053,China;Center of Alzheimer's Disease,Beijing Institute of Brain Disorders,Collaborative Innovation Center for Brain Disorders,Capital Medical University,Beijing 100053,China;Key Laboratory of Neurodegenerative Diseases,Ministry of Education,Beijing 100053,China
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。