Corrected kriging update formulae for batch-sequential data assimilation
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Description
Recently, a lot of effort has been spent in the efficient computation of kriging predictors when observations are assimilated sequentially. In particular, kriging update formulae enabling significant computational savings were derived. Taking advantage of the previous kriging mean and variance computations helps avoiding a costly matrix inversion when adding one observation to the TeX already available ones. In addition to traditional update formulae taking into account a single new observation, Emery (2009) proposed formulae for the batch-sequential case, i.e. when TeX new observations are simultaneously assimilated. However, the kriging variance and covariance formulae given in Emery (2009) for the batch-sequential case are not correct. In this paper, we fix this issue and establish correct expressions for updated kriging variances and covariances when assimilating observations in parallel. An application in sequential conditional simulation finally shows that coupling update and residual substitution approaches may enable significant speed-ups.
Eulogio Pardo-Igúzquiza e.pardo@igme.es (6)
Carolina Guardiola-Albert c.guardiola@igme.es (7)
Javier Heredia j.heredia@igme.es (8)
Luis Moreno-Merino l.moreno@igme.es (9)
Juan José Durán jj.duran@igme.es (10)
jose.vargasguzman@aramco.com (11)
Carolina Guardiola-Albert c.guardiola@igme.es (7)
Javier Heredia j.heredia@igme.es (8)
Luis Moreno-Merino l.moreno@igme.es (9)
Juan José Durán jj.duran@igme.es (10)
jose.vargasguzman@aramco.com (11)
Date of Publication
2014
Publication Type
Conference Item
Language(s)
en
Editor(s)
Pardo-Igúzquiza, Eulogio | |
Guardioloa, Albert | |
Heredia, Javier | |
Durán, Juan José | |
Vargas-Guzmán, Jose Antonio |
Additional Credits
Publisher
Springer
ISSN
2193-8571
ISBN
978-3-642-32408-6
Access(Rights)
metadata.only