State Estimation Using a Reduced-Order Kalman Filter
- 1 December 2001
- journal article
- Published by American Meteorological Society in Journal of the Atmospheric Sciences
- Vol. 58 (23) , 3666-3680
- https://doi.org/10.1175/1520-0469(2001)058<3666:seuaro>2.0.co;2
Abstract
Minimizing forecast error requires accurately specifying the initial state from which the forecast is made by optimally using available observing resources to obtain the most accurate possible analysis. The Kalman filter accomplishes this for a wide class of linear systems, and experience shows that the extended Kalman filter also performs well in nonlinear systems. Unfortunately, the Kalman filter and the extended Kalman filter require computation of the time-dependent error covariance matrix, which presents a daunting computational burden. However, the dynamically relevant dimension of the forecast error system is generally far smaller than the full state dimension of the forecast model, which suggests the use of reduced-order error models to obtain near-optimal state estimators. A method is described and illustrated for implementing a Kalman filter on a reduced-order approximation of the forecast error system. This reduced-order system is obtained by balanced truncation of the Hankel operator ... Abstract Minimizing forecast error requires accurately specifying the initial state from which the forecast is made by optimally using available observing resources to obtain the most accurate possible analysis. The Kalman filter accomplishes this for a wide class of linear systems, and experience shows that the extended Kalman filter also performs well in nonlinear systems. Unfortunately, the Kalman filter and the extended Kalman filter require computation of the time-dependent error covariance matrix, which presents a daunting computational burden. However, the dynamically relevant dimension of the forecast error system is generally far smaller than the full state dimension of the forecast model, which suggests the use of reduced-order error models to obtain near-optimal state estimators. A method is described and illustrated for implementing a Kalman filter on a reduced-order approximation of the forecast error system. This reduced-order system is obtained by balanced truncation of the Hankel operator ...Keywords
This publication has 26 references indexed in Scilit:
- Accurate Low-Dimensional Approximation of the Linear Dynamics of Fluid FlowJournal of the Atmospheric Sciences, 2001
- Adaptive Sampling with the Ensemble Transform Kalman Filter. Part I: Theoretical AspectsMonthly Weather Review, 2001
- Perturbation Growth and Structure in Time-Dependent FlowsJournal of the Atmospheric Sciences, 1999
- Advances in Sequential Estimation for Atmospheric and Oceanic Flows (gtSpecial IssueltData Assimilation in Meteology and Oceanography: Theory and Practice)Journal of the Meteorological Society of Japan. Ser. II, 1997
- Generalized Stability Theory. Part I: Autonomous OperatorsJournal of the Atmospheric Sciences, 1996
- Approximate Data Assimilation Schemes for Stable and Unstable DynamicsJournal of the Meteorological Society of Japan. Ser. II, 1996
- The Singular-Vector Structure of the Atmospheric Global CirculationJournal of the Atmospheric Sciences, 1995
- An approximate Kaiman filter for ocean data assimilation: An example with an idealized Gulf Stream modelJournal of Geophysical Research: Oceans, 1995
- On-line Estimation of Error Covariance Parameters for Atmospheric Data AssimilationMonthly Weather Review, 1995
- Sequential data assimilation with a nonlinear quasi‐geostrophic model using Monte Carlo methods to forecast error statisticsJournal of Geophysical Research: Oceans, 1994