The ability to predict the future behavior of solar activity has become of extreme importance due to its effect on the near-Earth environment. Predictions of both the amplitude and timing of the next solar cycle will assist in estimating the various consequences of Space Weather. Several prediction techniques have been applied and have achieved varying degrees of success in the domain of solar activity prediction. These techniques include, for example, neural networks and geomagnetic precursor methods. In this thesis, various neural network based models were developed and the model considered to be optimum was used to estimate the shape and timing of solar cycle 24. Given the recent success of the geomagnetic precusrsor methods, geomagnetic...
This thesis presents studies of solar wind-magnetosphere coupling using dynamic neural networks in c...
This paper presents an application of Artificial Neural Networks (ANNs) to predict daily solar radia...
Accurate prediction of ionospheric parameters is crucial for telecommunication companies. These para...
The ability to predict the future behavior of solar activity has become of extreme importance due to...
The work of this thesis is concerned with investigating the application of artificial neural network...
The aim of this thesis is to explore the application of feed forward neural networks, and other nume...
The aim of this thesis is to explore the application of feed forward neural networks, and other nume...
This thesis shows how artificial neural networks (ANNs) can be applied to predict geomagnetic activi...
Predicting solar activity is one of the most challenging topics among the various Space Weather and ...
A recurrent connectionist network has been designed to model sunspot data. Preliminary experimental ...
This thesis concerns the application of artificial neural network techniques to space weather physic...
We describe using Ap and F(10.7) as a geomagnetic-precursor pair to predict the amplitude of Solar C...
The accurate prediction of solar irradiation has been a leading problem for better energy scheduling...
In the previous study (Dabas et al. in Solar Phys. 250, 171, 2008), to predict the maximum sunspot ...
The prediction of solar radiation is very important for many solar applications. Due to the very nat...
This thesis presents studies of solar wind-magnetosphere coupling using dynamic neural networks in c...
This paper presents an application of Artificial Neural Networks (ANNs) to predict daily solar radia...
Accurate prediction of ionospheric parameters is crucial for telecommunication companies. These para...
The ability to predict the future behavior of solar activity has become of extreme importance due to...
The work of this thesis is concerned with investigating the application of artificial neural network...
The aim of this thesis is to explore the application of feed forward neural networks, and other nume...
The aim of this thesis is to explore the application of feed forward neural networks, and other nume...
This thesis shows how artificial neural networks (ANNs) can be applied to predict geomagnetic activi...
Predicting solar activity is one of the most challenging topics among the various Space Weather and ...
A recurrent connectionist network has been designed to model sunspot data. Preliminary experimental ...
This thesis concerns the application of artificial neural network techniques to space weather physic...
We describe using Ap and F(10.7) as a geomagnetic-precursor pair to predict the amplitude of Solar C...
The accurate prediction of solar irradiation has been a leading problem for better energy scheduling...
In the previous study (Dabas et al. in Solar Phys. 250, 171, 2008), to predict the maximum sunspot ...
The prediction of solar radiation is very important for many solar applications. Due to the very nat...
This thesis presents studies of solar wind-magnetosphere coupling using dynamic neural networks in c...
This paper presents an application of Artificial Neural Networks (ANNs) to predict daily solar radia...
Accurate prediction of ionospheric parameters is crucial for telecommunication companies. These para...