Time series forecasting is important in several applied domains because it facilitates decision-making in this domains. Commonly, statistical methods such as regression analysis and Markov chains, or artificial intelligent methods such as artificial neural networks (ANN) are used in forecasting tasks. In this paper different time series forecasting methods were compared using the normalized difference vegetation index (NDVI) time series forecasting. NDVI is a nonlinear, non-stationary and seasonal time series used for short-term vegetation forecasting and management of various problems, such as prediction of spread of forest fire and forest disease. In order to reduce input data set dimensionality and improve predictability, stepwise regres...
We present a nonparametric method to forecast a seasonal univariate time series, and propose four dy...
In this article, several types of hybrid forecasting models are suggested. In particular, hybrid mod...
Over the last two decades there has been an increase in the research of artificial neural networks (...
In this paper predictions of the Normalized Difference Vegetation Index (NDVI) data recorded by sate...
In this paper predictions of the normalized difference vegetation index (NDVI) are discussed. Time s...
International audienceTime series forecasting has an important role in many real applications in met...
The main objective of this paper is two folds. First is to assess some well-known linear and nonline...
Time series of earth observation based estimates of vegetation inform about variations in vegetation...
In this paper, the NDVI time series forecasting model has been developed based on the use of discret...
Remotely sensed vegetation indices are widely used to detect greening and browning trends; especiall...
Most approaches to forecasting time series data employ one-step-ahead prediction approaches. However...
Phenological changes of cropland are the pivotal basis for farm management, agricultural production,...
National audienceIn Europe, the 2003 summer heat wave damaged forested areas. The purpose of this st...
The random forests’ univariate time series forecasting properties have remained unexplored. Here we ...
Over the last two decades there has been an increase in the research of artificial neural networks (...
We present a nonparametric method to forecast a seasonal univariate time series, and propose four dy...
In this article, several types of hybrid forecasting models are suggested. In particular, hybrid mod...
Over the last two decades there has been an increase in the research of artificial neural networks (...
In this paper predictions of the Normalized Difference Vegetation Index (NDVI) data recorded by sate...
In this paper predictions of the normalized difference vegetation index (NDVI) are discussed. Time s...
International audienceTime series forecasting has an important role in many real applications in met...
The main objective of this paper is two folds. First is to assess some well-known linear and nonline...
Time series of earth observation based estimates of vegetation inform about variations in vegetation...
In this paper, the NDVI time series forecasting model has been developed based on the use of discret...
Remotely sensed vegetation indices are widely used to detect greening and browning trends; especiall...
Most approaches to forecasting time series data employ one-step-ahead prediction approaches. However...
Phenological changes of cropland are the pivotal basis for farm management, agricultural production,...
National audienceIn Europe, the 2003 summer heat wave damaged forested areas. The purpose of this st...
The random forests’ univariate time series forecasting properties have remained unexplored. Here we ...
Over the last two decades there has been an increase in the research of artificial neural networks (...
We present a nonparametric method to forecast a seasonal univariate time series, and propose four dy...
In this article, several types of hybrid forecasting models are suggested. In particular, hybrid mod...
Over the last two decades there has been an increase in the research of artificial neural networks (...