To predict Solar Cycle 25, we used the values of sunspot number (SSN), which have been measured regularly from 1749 to the present. In this study, we converted the SSN dataset, which consists of SSNs between 1749 – 2018, into a time series, and made the ten-year forecast with the help of deep-learning (DL) algorithms. Our results show that algorithms such as long-short-term memory (LSTM) and neural network autoregression (NNAR), which are DL algorithms, perform better than many algorithms such as ARIMA, Naive, Seasonal Naive, Mean and Drift, which are expressed as classical algorithms in a large time-series estimation process. Using the R programming language, it was also predicted that the maximum amplitude of Solar Cycle (SC) 25 will be r...
The ability to predict the future behavior of solar activity has become of extreme importance due to...
This paper designs a hybridized deep learning framework that integrates the Convolutional Neural Net...
As solar photovoltaic (PV) generation becomes cost-effective, solar power comes into its own as the ...
To predict Solar Cycle 25, we used the values of sunspot number (SSN), which have been measured regu...
In order to forecast solar cycle 25, sunspot numbers(SSN) from 1700 ∼ 2018 was used as a time series...
Predicting the solar activity of upcoming cycles is crucial nowadays to anticipate potentially adver...
Solar activity has significant impacts on human activities and health. One most commonly used measur...
Researchers in many fields share a deep interest in the sunspot activity of the Sun. This kind of sol...
Energy management is an emerging problem nowadays and utilization of renewable energy sources is an ...
Energy management is an emerging problem nowadays and utilization of renewable energy sources is an ...
In this thesis, we develop a collection of deep learning models for time series forecasting. Primary...
With recent developments and advances in machine learning methods, traditional time series analysis ...
¾This paper presents a feedforward neural network approach to sunspot forecasting. The sunspot serie...
In this paper, multi step ahead prediction of monthly sunspot real time series are carried out. This...
This paper aims to develop the long short-term memory (LSTM) network modelling strategy based on dee...
The ability to predict the future behavior of solar activity has become of extreme importance due to...
This paper designs a hybridized deep learning framework that integrates the Convolutional Neural Net...
As solar photovoltaic (PV) generation becomes cost-effective, solar power comes into its own as the ...
To predict Solar Cycle 25, we used the values of sunspot number (SSN), which have been measured regu...
In order to forecast solar cycle 25, sunspot numbers(SSN) from 1700 ∼ 2018 was used as a time series...
Predicting the solar activity of upcoming cycles is crucial nowadays to anticipate potentially adver...
Solar activity has significant impacts on human activities and health. One most commonly used measur...
Researchers in many fields share a deep interest in the sunspot activity of the Sun. This kind of sol...
Energy management is an emerging problem nowadays and utilization of renewable energy sources is an ...
Energy management is an emerging problem nowadays and utilization of renewable energy sources is an ...
In this thesis, we develop a collection of deep learning models for time series forecasting. Primary...
With recent developments and advances in machine learning methods, traditional time series analysis ...
¾This paper presents a feedforward neural network approach to sunspot forecasting. The sunspot serie...
In this paper, multi step ahead prediction of monthly sunspot real time series are carried out. This...
This paper aims to develop the long short-term memory (LSTM) network modelling strategy based on dee...
The ability to predict the future behavior of solar activity has become of extreme importance due to...
This paper designs a hybridized deep learning framework that integrates the Convolutional Neural Net...
As solar photovoltaic (PV) generation becomes cost-effective, solar power comes into its own as the ...