Title of article :
Neural network development for the forecasting of upper atmosphere parameter distributions Original Research Article
Author/Authors :
Jeffrey D. Martin، نويسنده , , Yu T. Morton، نويسنده , , Qihou Zhou، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2005
Abstract :
This paper presents a neural network modeling approach to forecast electron concentration distributions in the 150–600 km altitude range above Arecibo, Puerto Rico. The neural network was trained using incoherent scatter radar data collected at the Arecibo Observatory during the past two decades, as well as the Kp geomagnetic index provided by the National Space Science Data Center. The data set covered nearly two solar cycles, allowing the neural network to model daily, seasonal, and solar cycle variations of upper atmospheric parameter distributions. Two types of neural network architectures, feedforward and Elman recurrent, are used in this study. Topics discussed include the network design, training strategy, data analysis, as well as preliminary testing results of the networks on electron concentration distributions.
Keywords :
Space weather , Neural networks , Upper atmosphere , Electron concentration
Journal title :
Advances in Space Research
Journal title :
Advances in Space Research