Article ID Journal Published Year Pages File Type
508034 Computers & Geosciences 2012 11 Pages PDF
Abstract

In many environmental sciences, several correlated variables are observed at some locations of the domain of interest and over a certain period of time. In this context, appropriate modeling and prediction techniques for multivariate space–time data as well as interactive software packages are necessary. In this paper, a new automatic procedure for fitting the space–time linear coregionalization model (ST-LCM) using the product–sum variogram model is discussed. This procedure, based on the simultaneous diagonalization of the sample matrix variograms, allows the identification of the ST-LCM parameters in a very flexible way. The fitting process is analytically described by a main flow chart and all steps are specified by four subprocedures. An application of this procedure is illustrated through a case study concerning the daily concentrations of three air pollutants measured in an urban area. Then the fitted space–time coregionalization model is applied to predict the variable of interest using a recent GSLib routine, named “COK2ST.”

► We discuss an automatic procedure for fitting a space–time LCM. ► This is based on the simultaneous diagonalization of the sample matrix variograms. ► The fitting process is described by a main flow chart and four subprocedures. ► Daily concentrations of three air pollutants measured in an urban area are modeled. ► A recent GSLibGSLib routine, named “COK2ST” is used.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science Applications
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