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Four-dimensional ensemble Kalman filtering
B. R. HUNT 1 , E. KALNAY 1 , E. J. KOSTELICH 2 , E. OTT 1 , D. J. PATIL 1 , T. SAUER 3*, I. SZUNYOGH 1 , J. A. YORKE 1 and A. V. ZIMIN 1
  1 University of Maryland, College Park, MD 20742, USA ;   2 Arizona State University, Tempe, AZ 85287, USA ;   3 George Mason University, Fairfax, VA 22030, USA
  *Corresponding author.
e-mail: tsauer@gmu.edu
Copyright Blackwell Munksgaard, 2004

ABSTRACT

Abstract
          1. Introduction
          2. Background
          3. 4DEnKF method
          4. Experiments with Lorenz model
          5. AcknowledgmentsReferences

Ensemble Kalman filtering was developed as a way to assimilate observed data to track the current state in a computational model. In this paper we show that the ensemble approach makes possible an additional benefit: the timing of observations, whether they occur at the assimilation time or at some earlier or later time, can be effectively accounted for at low computational expense. In the case of linear dynamics, the technique is equivalent to instantaneously assimilating data as they are measured. The results of numerical tests of the technique on a simple model problem are shown.


(Manuscript received 18 September 2003; in final form 2 April 2004)

DIGITAL OBJECT IDENTIFIER (DOI)
10.1111/j.1600-0870.2004.00066.x About DOI

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