Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Modeling Ionospheric TEC Using Gradient Boosting Based and Stacking Machine Learning Techniques

View through CrossRef
AbstractAccurately predicting and modeling the ionospheric total electron content (TEC) can greatly improve the accuracy of satellite navigation and positioning and help to correct ionospheric delay. This study assesses the effectiveness of four different machine learning (ML) models in predicting hourly vertical TEC (VTEC) data for a single‐station study over Ethiopia. The models employed include gradient boosting machine (GBM), extreme gradient boosting (XGBoost), light gradient boosting machine (LightGBM) algorithms, and a stacked combination of these algorithms with a linear regression algorithm. The models relied on input variables that represent solar activity, geomagnetic activity, season, time of the day, interplanetary magnetic field, and solar wind. The models were trained using the VTEC data from January 2011 to December 2018, excluding the testing data. The testing data comprised the data for the year 2015 and the initial 6 months of 2017. The RandomizedSearchCV algorithm was used to determine the optimal hyperparameters of the models. The predicted VTEC values of the four ML models were strongly correlated with the GPS VTEC, with a correlation coefficient of ∼0.96, which is significantly higher than the corresponding value of the International Reference Ionosphere (IRI 2020) model, which is 0.87. Comparing the GPS VTEC values with the predicted VTEC values based on diurnal and seasonal characteristics showed that the predictions of the developed models were generally in good agreement and outperformed the IRI 2020 model. Overall, the ML models used in this study demonstrated promising potential for accurate single‐station VTEC prediction over Ethiopia.
Title: Modeling Ionospheric TEC Using Gradient Boosting Based and Stacking Machine Learning Techniques
Description:
AbstractAccurately predicting and modeling the ionospheric total electron content (TEC) can greatly improve the accuracy of satellite navigation and positioning and help to correct ionospheric delay.
This study assesses the effectiveness of four different machine learning (ML) models in predicting hourly vertical TEC (VTEC) data for a single‐station study over Ethiopia.
The models employed include gradient boosting machine (GBM), extreme gradient boosting (XGBoost), light gradient boosting machine (LightGBM) algorithms, and a stacked combination of these algorithms with a linear regression algorithm.
The models relied on input variables that represent solar activity, geomagnetic activity, season, time of the day, interplanetary magnetic field, and solar wind.
The models were trained using the VTEC data from January 2011 to December 2018, excluding the testing data.
The testing data comprised the data for the year 2015 and the initial 6 months of 2017.
The RandomizedSearchCV algorithm was used to determine the optimal hyperparameters of the models.
The predicted VTEC values of the four ML models were strongly correlated with the GPS VTEC, with a correlation coefficient of ∼0.
96, which is significantly higher than the corresponding value of the International Reference Ionosphere (IRI 2020) model, which is 0.
87.
Comparing the GPS VTEC values with the predicted VTEC values based on diurnal and seasonal characteristics showed that the predictions of the developed models were generally in good agreement and outperformed the IRI 2020 model.
Overall, the ML models used in this study demonstrated promising potential for accurate single‐station VTEC prediction over Ethiopia.

Related Results

Total electron content driven data products of SIMuRG
Total electron content driven data products of SIMuRG
<p>System for the Ionosphere Monitoring and Researching from GNSS (SIMuRG, see <em>https://simurg.iszf.irk.ru</em>) has been developed in ...
Ionospheric total electron content anomaly possibly associated with the April 4, 2010 Mw7.2 Mexico earthquake
Ionospheric total electron content anomaly possibly associated with the April 4, 2010 Mw7.2 Mexico earthquake
Abstract. Identifying ionospheric disturbances potentially related to an earthquake is a challenging work. Based on the ionospheric total electron content (TEC) data from the madri...
Applying LSTM and GAN to build a deep learning model (TGAN-TEC) for global ionospheric TEC
Applying LSTM and GAN to build a deep learning model (TGAN-TEC) for global ionospheric TEC
<p>TEC is very important ionospheric parameter, which is commonly used observation for studying various ionospheric physical mechanism and other technological related...
Daily Maximum Total Electron Content Saturation with Daily F10.7: Seasonal and Hemispheric Effects
Daily Maximum Total Electron Content Saturation with Daily F10.7: Seasonal and Hemispheric Effects
The daily solar flux at 10.7cm, the F10.7 index, is commonly used as an input in ionospheric models. Typically studies have focused on either global averages or geographically loca...
Study of Ionospheric response to intense  Solar Flares in the ascending half of the solar cycle 25 
Study of Ionospheric response to intense  Solar Flares in the ascending half of the solar cycle 25 
Well organized and systematic study of sun-earth connection is vital. The fact that the state and conditions of space are influenced by solar activity, makes the space weather doma...
Global Ionospheric Storm Prediction Based on Deep Learning Methods
Global Ionospheric Storm Prediction Based on Deep Learning Methods
In recent years, deep learning algorithms have been widely used for ionospheric prediction, but there are still shortcomings in predicting ionospheric storms, such as insufficient ...

Back to Top