This paper studies the machine learning techniques that can be used to enhance the prediction method of the ionosphere for space weather monitoring. Previously, the empirical model is used. However, there is a large deviation of the total electron content of ionosphere data for the areas located in the equatorial and low-latitude regions due to the lack of observation data contributed by these areas during the development of the empirical model. The machine learning technique is an alternative method used to develop the predictive model. Thus, in this study, the machine learning techniques that can be applied are investigated. The aim is to improve the predictive model in terms of reducing the total electron content deviation, increasing th...
Global Positioning System (GPS) networks provide an opportunity to study the dynamics and continuous...
The ionosphere is a region in the Earth’s upper atmosphere, where atoms are ionized due to solar rad...
In this paper, a deep learning long-short-term memory (LSTM) method is applied to the forecasting of...
This paper studies the machine learning techniques that can be used to enhance the prediction method...
In this paper, the previously obtained results on recognition of ionograms using deep learning are e...
Ionosphere model is much essential to satellite-based system in order to accurately correct the iono...
The ionosphere of Earth exhibits considerable spatial changes and has large temporal variability of ...
Monitoring and prediction of space weather phenomena and associated effects requires an understandin...
This thesis describes the search for a temporal model for predicting the peak ionospheric electron d...
Considering the growing volumes and varieties of ionosphere data, it is expected that automation of ...
Accurate corrections for ionospheric total electron content (TEC) and early warning information are ...
The ionospheric delay is of paramount importance to radio communication, satellite navigation and po...
[ 1] Near-Earth space processes are highly nonlinear. Since the 1990s, a small group at the Middle E...
The Low Earth Orbit (LEO) region has been attractive to many space agencies and organisations becaus...
This chapter presents a neural-network-based technique that allows for the reconstruction of the glo...
Global Positioning System (GPS) networks provide an opportunity to study the dynamics and continuous...
The ionosphere is a region in the Earth’s upper atmosphere, where atoms are ionized due to solar rad...
In this paper, a deep learning long-short-term memory (LSTM) method is applied to the forecasting of...
This paper studies the machine learning techniques that can be used to enhance the prediction method...
In this paper, the previously obtained results on recognition of ionograms using deep learning are e...
Ionosphere model is much essential to satellite-based system in order to accurately correct the iono...
The ionosphere of Earth exhibits considerable spatial changes and has large temporal variability of ...
Monitoring and prediction of space weather phenomena and associated effects requires an understandin...
This thesis describes the search for a temporal model for predicting the peak ionospheric electron d...
Considering the growing volumes and varieties of ionosphere data, it is expected that automation of ...
Accurate corrections for ionospheric total electron content (TEC) and early warning information are ...
The ionospheric delay is of paramount importance to radio communication, satellite navigation and po...
[ 1] Near-Earth space processes are highly nonlinear. Since the 1990s, a small group at the Middle E...
The Low Earth Orbit (LEO) region has been attractive to many space agencies and organisations becaus...
This chapter presents a neural-network-based technique that allows for the reconstruction of the glo...
Global Positioning System (GPS) networks provide an opportunity to study the dynamics and continuous...
The ionosphere is a region in the Earth’s upper atmosphere, where atoms are ionized due to solar rad...
In this paper, a deep learning long-short-term memory (LSTM) method is applied to the forecasting of...