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Semi-parametric statistical approaches for space-time process prediction
Authors:Angulo  J.M  González-Manteiga  W.  Febrero-Bande  M.  Alonso  F. J.
Affiliation:(1) Department of Statistics and O.R., University of Granada, 18071 Granada, Spain;(2) Department of Statistics and O.R., University of Santiago de Compostela, 15771 Santiago de Compostela, Spain
Abstract:The problem of estimation and prediction of a spatial-temporal stochastic process, observed at regular times and irregularly in space, is considered. A mixed formulation involving a non- parametric component, accounting for a deterministic trend and the effect of exogenous variables, and a parametric component representing the purely spatio-temporal random variation is proposed. Correspondingly, a two-step procedure, first addressing the estimation of the non- parametric component, and then the estimation of the parametric component is developed from the residual series obtained, with spatial-temporal prediction being performed in terms of suitable spatial interpolation of the temporal variation structure. The proposed model formula-tion, together with the estimation and prediction procedure, are applied using a Gaussian ARMA structure for temporal modelling to space-time forecasting from real data of air pollution concentration levels in the region surrounding a power station in northwest Spain.
Keywords:ARMA model  estimation  spatial interpolation
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