Redirigiendo al acceso original de articulo en 15 segundos...
ARTÍCULO
TITULO

Multiplicative Spatio-Temporal Models for Remotely Sensed Normalized Difference Vegetation Index Data

Nicolle Clements    
Sanat Sarkar    
William Wei    

Resumen

Vegetation forecasting is closely tied to many important international concerns, including: monitoring the impacts of global climate change and energy usage, managing the consumption of natural resources, predicting the spread of invasive species, and protecting endangered species. In light of these issues, this article develops vegetation forecasting models for normalized difference vegetation index (NDVI) data recorded by remote sensing via satellites in East Africa. Spatio-temporal auto-regressive moving average (STARMA) is a class of models that can be used in monitoring and forecasting, but it must be modified for highly seasonal processes with temporal trends. We propose to use multiplicative STARMA models to estimate and forecast NDVI values for sub-regions that have previously been detected to have statistically significant temporal trends. For illustration, we select a few East African sub-region?s NDVI series to apply the proposed models and demonstrate the advantages over traditional modeling techniques.

 Artículos similares

       
 
Elena Anatol?evna Derunova,Irina Nikolayevna Filatova,Alexandr Sergeevich Semenov,Vladimir Alexandrovich Derunov     Pág. 112 - 118
The formation of demand forecasting models is important in understanding the transition from the raw to the innovative model of the economy. The aim of the study is to analyze and evaluate the different innovation demand forecasting models and the mathem... ver más

 
Desy Yuliana Dalimunthe     Pág. 19 - 27
Gross Regional Domestic Product (GDP) is the total number of products in the form of goods and services produced by production units within the boundaries of a country (domestic) for one year which is one important indicator to know the condition of an a... ver más

 
Shahid IQBAL,Maqbool H. SIAL     Pág. 536 - 559
JEL. E31, E47, E51, E52.

 
Carlos Alberto Orge Pinheiro,Valter de Senna,Alberto Matsumoto     Pág. 98 - 124
This study aimed to compare the forecasting results from combining the two models,   Multivariate Singular Spectrum Analysis (MSSA)  and Artificial Neural Network (ANN), with the results obtained from classical forecasting and neural netwo... ver más

 
Edmore Ranganai, Mphiliseni B Nzuza    
Extra-terrestrially, there is no stochasticity in the solar irradiance, hence deterministic models are often used to model this data. At ground level, the Box-Jenkins Seasonal/Non-seasonal Autoregressive Integrated Moving Average (S/ARIMA) short memory s... ver más