International audienceTime series forecasting has an important role in many real applications in meteorology and environment to understand phenomena as climate change and to adapt monitoring strategy. This paper aims first to build a framework for forecasting meteorological univariate time series and then to carry out a performance comparison of different univariate models for forecasting task. Six algorithms are discussed: Single exponential smoothing (SES), Seasonal-naive (Snaive), Seasonal-ARIMA (SARIMA), Feed-Forward Neural Network (FFNN), Dynamic Time Warping-based Imputation (DTWBI), Bayesian Structural Time Series (BSTS). Four performance measures and various meteorological time series are used to determine a more customized method f...
Time series forecasting is important in several applied domains because it facilitates decision-maki...
657-666Many practical time series often exhibit trends and seasonal patterns. The traditional stati...
We investigate the one-step ahead predictability of annual geophysical processes using 16 univariate...
A lot of research has been done on comparing the forecasting accuracy of different univariate time s...
Over the last two decades there has been an increase in the research of artificial neural networks (...
In this paper, the better model for forecasting Nigeria monthly Precipitation time series data that ...
Over the last two decades there has been an increase in the research of artificial neural networks (...
In this study, an artificial neural network (ANN) structure is proposed for seasonal time series for...
Published in Renewable Energy and Power Quality Journal, n°13, mars 2015International audienceThis c...
Nowadays, the impacts of climate change are harming many countries around the world. For this reason...
Both statistical and neural network methods may fail in forecasting time series even operating on a ...
In this article, we compare the accuracy of the forecasts for the exponential smoothing (ES) approac...
Abstract: The following paper tries to develop a simple neural network approach to analyse time seri...
This paper addresses the concerns of Faraway and Chatfield (1998) who questioned the forecasting abi...
Time Series Forecasting is vital for wide range of domains such as financial market forecasting, ear...
Time series forecasting is important in several applied domains because it facilitates decision-maki...
657-666Many practical time series often exhibit trends and seasonal patterns. The traditional stati...
We investigate the one-step ahead predictability of annual geophysical processes using 16 univariate...
A lot of research has been done on comparing the forecasting accuracy of different univariate time s...
Over the last two decades there has been an increase in the research of artificial neural networks (...
In this paper, the better model for forecasting Nigeria monthly Precipitation time series data that ...
Over the last two decades there has been an increase in the research of artificial neural networks (...
In this study, an artificial neural network (ANN) structure is proposed for seasonal time series for...
Published in Renewable Energy and Power Quality Journal, n°13, mars 2015International audienceThis c...
Nowadays, the impacts of climate change are harming many countries around the world. For this reason...
Both statistical and neural network methods may fail in forecasting time series even operating on a ...
In this article, we compare the accuracy of the forecasts for the exponential smoothing (ES) approac...
Abstract: The following paper tries to develop a simple neural network approach to analyse time seri...
This paper addresses the concerns of Faraway and Chatfield (1998) who questioned the forecasting abi...
Time Series Forecasting is vital for wide range of domains such as financial market forecasting, ear...
Time series forecasting is important in several applied domains because it facilitates decision-maki...
657-666Many practical time series often exhibit trends and seasonal patterns. The traditional stati...
We investigate the one-step ahead predictability of annual geophysical processes using 16 univariate...