Short-term Prediction of Ionospheric TEC Based on ARIMA Model

In order to achieve high short-term prediction accuracy of ionospheric TEC, first, we transform a seasonal time series for ionospheric Total Electron Content (TEC) into a stationary time series by seasonal differences and regular differences with a full consideration of the Multiplicative Seasonal m...

Full description

Bibliographic Details
Main Author: Xiaohong ZHANG,Xiaodong REN,Fengbo WU,Qi LU
Format: Article
Language:English
Published: Surveying and Mapping Press 2019-03-01
Series:Journal of Geodesy and Geoinformation Science
Subjects:
Online Access:http://jggs.sinomaps.com/fileup/2096-5990/PDF/1584694329464-709080981.pdf
id doaj-c6aad510d2d84dcca57011bcd815b828
record_format Article
spelling doaj-c6aad510d2d84dcca57011bcd815b8282020-11-25T02:32:39ZengSurveying and Mapping PressJournal of Geodesy and Geoinformation Science2096-59902019-03-012191610.11947/j.JGGS.2019.0102Short-term Prediction of Ionospheric TEC Based on ARIMA ModelXiaohong ZHANG,Xiaodong REN,Fengbo WU,Qi LU0School of Geodesy and Geomatics, Wuhan University,Wuhan 430079, ChinaIn order to achieve high short-term prediction accuracy of ionospheric TEC, first, we transform a seasonal time series for ionospheric Total Electron Content (TEC) into a stationary time series by seasonal differences and regular differences with a full consideration of the Multiplicative Seasonal model. Next, we use the Autoregressive Integrated Moving Average (ARIMA) model taken from time series analysis theory for modeling the stationary TEC values to predict the TEC series. Using TEC data from 2008 to 2012 provided by the Center for Orbit Determination in Europe (CODE) as sample data, we analyzed the precision of this method for prediction of ionospheric TEC values which vary from high to low latitudes during both quiet and active ionospheric periods. The effect of the TEC sample’s length on the predicted accuracy is analyzed, too. Results from numerical experiments show that during the ionospheric quiet period the average relative prediction accuracy for a six day time span reaches up to 83.3% with average prediction residual errors of about 0.18±1.9TECu. During ionospheric active periods it changes to 86.6% with an average prediction residual error of about 0.69±2.6TECu. For the quiet periods, above 90% of predicted residual is less than ±3TECu while during active periods, it is only about 81%. The two periods show that that the higher the latitude, the higher the absolute precision, and the lower the predicted relative accuracy. In addition, the results show that prediction accuracy will improve with an increase of the TEC sample sequences length, but it will gradually reduce if the length exceeds the optimal length, about 30 days. On the other hand, with the same TEC sample, as the predicted days increase, the predictive accuracy decreases. Athough the predictive accuracy is not apparent at the beginning, it will be significantly reduced after 30 days.http://jggs.sinomaps.com/fileup/2096-5990/PDF/1584694329464-709080981.pdf|arima|ionosphere prediction|time series analysis|prediction accuracy|tec
collection DOAJ
language English
format Article
sources DOAJ
author Xiaohong ZHANG,Xiaodong REN,Fengbo WU,Qi LU
spellingShingle Xiaohong ZHANG,Xiaodong REN,Fengbo WU,Qi LU
Short-term Prediction of Ionospheric TEC Based on ARIMA Model
Journal of Geodesy and Geoinformation Science
|arima|ionosphere prediction|time series analysis|prediction accuracy|tec
author_facet Xiaohong ZHANG,Xiaodong REN,Fengbo WU,Qi LU
author_sort Xiaohong ZHANG,Xiaodong REN,Fengbo WU,Qi LU
title Short-term Prediction of Ionospheric TEC Based on ARIMA Model
title_short Short-term Prediction of Ionospheric TEC Based on ARIMA Model
title_full Short-term Prediction of Ionospheric TEC Based on ARIMA Model
title_fullStr Short-term Prediction of Ionospheric TEC Based on ARIMA Model
title_full_unstemmed Short-term Prediction of Ionospheric TEC Based on ARIMA Model
title_sort short-term prediction of ionospheric tec based on arima model
publisher Surveying and Mapping Press
series Journal of Geodesy and Geoinformation Science
issn 2096-5990
publishDate 2019-03-01
description In order to achieve high short-term prediction accuracy of ionospheric TEC, first, we transform a seasonal time series for ionospheric Total Electron Content (TEC) into a stationary time series by seasonal differences and regular differences with a full consideration of the Multiplicative Seasonal model. Next, we use the Autoregressive Integrated Moving Average (ARIMA) model taken from time series analysis theory for modeling the stationary TEC values to predict the TEC series. Using TEC data from 2008 to 2012 provided by the Center for Orbit Determination in Europe (CODE) as sample data, we analyzed the precision of this method for prediction of ionospheric TEC values which vary from high to low latitudes during both quiet and active ionospheric periods. The effect of the TEC sample’s length on the predicted accuracy is analyzed, too. Results from numerical experiments show that during the ionospheric quiet period the average relative prediction accuracy for a six day time span reaches up to 83.3% with average prediction residual errors of about 0.18±1.9TECu. During ionospheric active periods it changes to 86.6% with an average prediction residual error of about 0.69±2.6TECu. For the quiet periods, above 90% of predicted residual is less than ±3TECu while during active periods, it is only about 81%. The two periods show that that the higher the latitude, the higher the absolute precision, and the lower the predicted relative accuracy. In addition, the results show that prediction accuracy will improve with an increase of the TEC sample sequences length, but it will gradually reduce if the length exceeds the optimal length, about 30 days. On the other hand, with the same TEC sample, as the predicted days increase, the predictive accuracy decreases. Athough the predictive accuracy is not apparent at the beginning, it will be significantly reduced after 30 days.
topic |arima|ionosphere prediction|time series analysis|prediction accuracy|tec
url http://jggs.sinomaps.com/fileup/2096-5990/PDF/1584694329464-709080981.pdf
work_keys_str_mv AT xiaohongzhangxiaodongrenfengbowuqilu shorttermpredictionofionospherictecbasedonarimamodel
_version_ 1724818749813424128