Multivariate Kalman filtering for spatio-temporal processes

Guillermo Ferreira, Jorge Mateu, Emilio Porcu

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

An increasing interest in models for multivariate spatio-temporal processes has been noted in the last years. Some of these models are very flexible and can capture both marginal and cross spatial associations amongst the components of the multivariate process. In order to contribute to the statistical analysis of these models, this paper deals with the estimation and prediction of multivariate spatio-temporal processes by using multivariate state-space models. In this context, a multivariate spatio-temporal process is represented through the well-known Wold decomposition. Such an approach allows for an easy implementation of the Kalman filter to estimate linear temporal processes exhibiting both short and long range dependencies, together with a spatial correlation structure. We illustrate, through simulation experiments, that our method offers a good balance between statistical efficiency and computational complexity. Finally, we apply the method for the analysis of a bivariate dataset on average daily temperatures and maximum daily solar radiations from 21 meteorological stations located in a portion of south-central Chile.

Original languageBritish English
Pages (from-to)4337-4354
Number of pages18
JournalStochastic Environmental Research and Risk Assessment
Volume36
Issue number12
DOIs
StatePublished - Dec 2022

Keywords

  • Cross-covariance
  • Geostatistics
  • Kalman filter
  • State space system
  • Time-varying models

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