Research Article Open Access

Parsimonious Var Models For Air Pollution Dynamic Analysis

Fontanella lara and Granturco mariagrazia

Abstract

We discuss a framework to obtain temporal predictions for an evolving spatial field regularly sampled in time at arbitrary spatial locations. Difficulties caused by large data sets and the modelling of complicated spatio-temporal interactions limit the effectiveness of traditional space-time statistical models. In this study, we propose the use of a flexible approach to deal with large and small time-scale variability of the observed data. The temporal model is applied with respect to both the observed data domain and the common component domain, to achieve a dimensionality reduction.

Journal of Mathematics and Statistics
Volume 1 No. 4, 2005, 267-276

DOI: https://doi.org/10.3844/jmssp.2005.267.276

Published On: 31 December 2005

How to Cite: lara, F. & mariagrazia, G. (2005). Parsimonious Var Models For Air Pollution Dynamic Analysis. Journal of Mathematics and Statistics, 1(4), 267-276. https://doi.org/10.3844/jmssp.2005.267.276

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Keywords

  • VAR models
  • State-Space
  • Karhunen- Loève Transform
  • Trend Surface