典型文献
High-precision chaotic radial basis function neural network model:Data forecasting for the Earth electromagnetic signal before a strong earthquake
文献摘要:
The Earth's natural pulse electromagnetic field data consists typically of an underlying variation tendency of intensity and irregularities.The change tendency may be related to the occurrence of earthquake dis-asters.Forecasting of the underlying intensity trend plays an important role in the analysis of data and disaster monitoring.Combining chaos theory and the radial basis function neural network,this paper proposes a forecasting model of the chaotic radial basis function neural network to conduct underlying intensity trend forecasting by the Earth's natural pulse electromagnetic field signal.The main strategy of this forecasting model is to obtain parameters as the basis for optimizing the radial basis function neu-ral network and to forecast the reconstructed Earth's natural pulse electromagnetic field data.In verifi-cation experiments,we employ the 3 and 6 days' data of two channels as training samples to forecast the 14 and 21-day Earth's natural pulse electromagnetic field data respectively.According to the forecast-ing results and absolute error results,the chaotic radial basis function forecasting model can fit the fluc-tuation trend of the actual signal strength,effectively reduce the forecasting error compared with the traditional radial basis function model.Hence,this network may be useful for studying the characteristics of the Earth's natural pulse electromagnetic field signal before a strong earthquake and we hope it can contribute to the electromagnetic anomaly monitoring before the earthquake.
文献关键词:
中图分类号:
作者姓名:
Guocheng Hao;Juan Guo;Wei Zhang;Yunliang Chen;David A.Yuen
作者机构:
School of Mechanical Engineering and Electronic Information,China University of Geosciences,Wuhan 430074,China;Department of Mathematics,Duke University,Durham,NC 27708,USA;School of Computer Science,China University of Geosciences,Wuhan 430074,China;Department of Applied Physics and Applied Mathematics,Columbia University,New York,NY 10027,USA
文献出处:
引用格式:
[1]Guocheng Hao;Juan Guo;Wei Zhang;Yunliang Chen;David A.Yuen-.High-precision chaotic radial basis function neural network model:Data forecasting for the Earth electromagnetic signal before a strong earthquake)[J].地学前缘(英文版),2022(01):364-373
A类:
B类:
High,precision,chaotic,radial,basis,function,neural,network,model,Data,forecasting,Earth,electromagnetic,signal,before,strong,earthquake,natural,pulse,field,data,consists,typically,underlying,variation,tendency,intensity,irregularities,change,may,related,occurrence,asters,Forecasting,trend,plays,important,role,analysis,disaster,monitoring,Combining,chaos,theory,this,paper,proposes,conduct,by,main,strategy,obtain,parameters,optimizing,reconstructed,In,verifi,cation,experiments,we,employ,days,channels,training,samples,respectively,According,results,absolute,error,can,fit,fluc,tuation,actual,strength,effectively,reduce,compared,traditional,Hence,useful,studying,characteristics,hope,contribute,anomaly
AB值:
0.423513
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。