A truncated Gaussian filter for data assimilation with inequality constraints: Application to the hydrostatic stability condition in ocean models

Claire Lauvernet, Jean Michel Brankart, Frédéric Castruccio, Grégoire Broquet, Pierre Brasseur, Jacques Verron

Research output: Contribution to journalArticlepeer-review

34 Scopus citations

Abstract

In many data assimilation problems, the state variables are subjected to inequality constraints. These constraints often contain valuable information that must be taken into account in the estimation process. However, with linear estimation methods (like the Kalman filter), there is no way to incorporate optimally that kind of additional information. In this study, it is shown that an optimal filter dealing with inequality constraints can be formulated under the assumption that the probability distributions are truncated Gaussian distributions. The statistical tools needed to implement this truncated Gaussian filter are described. It is also shown how the filter can be adapted to work in a reduced dimension space, and how it can be simplified following several additional hypotheses. As an application, the truncated Gaussian assumption is shown to be adequate to deal with the condition of hydrostatic stability in ocean analyses. First, a detailed evaluation of the method is made using a one-dimensional z-coordinate model of the mixed layer: particular attention is paid to the parameterization of the probability distribution, the accuracy of the estimation and the sensitivity to the observation system. In a second step, the method is applied to a three-dimensional hybrid coordinate ocean model (HYCOM) of the Bay of Biscay (at a 1/15° resolution), to show that it is efficient enough to be applied to real size problems. These examples also demonstrate that the algorithm can deal with the hydrostatic stability condition in isopycnic coordinates as well as in z-coordinates.

Original languageEnglish
Pages (from-to)1-17
Number of pages17
JournalOcean Modelling
Volume27
Issue number1-2
DOIs
StatePublished - 2009

Keywords

  • Data assimilation
  • Hybrid coordinate ocean models
  • Inequality constraints
  • Reduced-order Kalman filter

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