Journal article

Adaptive sampling with the ensemble transform Kalman filter Part I: Theoretical aspects

CH Bishop, BJ Etherton, SJ Majumdar

Monthly Weather Review | AMER METEOROLOGICAL SOC | Published : 2001

Abstract

A suboptimal Kalman filter called the ensemble transform Kalman filter (ET KF) is introduced. Like other Kalman filters, it provides a framework for assimilating observations and also for estimating the effect of observations on forecast error covariance. It differs from other ensemble Kalman filters in that it uses ensemble transformation and a normalization to rapidly obtain the prediction error covariance matrix associated with a particular deployment of observational resources. This rapidity enables it to quickly assess the ability of a large number of future feasible sequences of observational networks to reduce forecast error variance. The ET KF was used by the National Centers for Env..

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University of Melbourne Researchers