Assessing Predictability with a Local Ensemble Kalman FilterSource: Journal of the Atmospheric Sciences:;2007:;Volume( 064 ):;issue: 004::page 1116Author:Kuhl, David
,
Szunyogh, Istvan
,
Kostelich, Eric J.
,
Gyarmati, Gyorgyi
,
Patil, D. J.
,
Oczkowski, Michael
,
Hunt, Brian R.
,
Kalnay, Eugenia
,
Ott, Edward
,
Yorke, James A.
DOI: 10.1175/JAS3885.1Publisher: American Meteorological Society
Abstract: In this paper, the spatiotemporally changing nature of predictability is studied in a reduced-resolution version of the National Centers for Environmental Prediction (NCEP) Global Forecast System (GFS), a state-of-the-art numerical weather prediction model. Atmospheric predictability is assessed in the perfect model scenario for which forecast uncertainties are entirely due to uncertainties in the estimates of the initial states. Uncertain initial conditions (analyses) are obtained by assimilating simulated noisy vertical soundings of the ?true? atmospheric states with the local ensemble Kalman filter (LEKF) data assimilation scheme. This data assimilation scheme provides an ensemble of initial conditions. The ensemble mean defines the initial condition of 5-day deterministic model forecasts, while the time-evolved members of the ensemble provide an estimate of the evolving forecast uncertainties. The observations are randomly distributed in space to ensure that the geographical distribution of the analysis and forecast errors reflect predictability limits due to the model dynamics and are not affected by inhomogeneities of the observational coverage. Analysis and forecast error statistics are calculated for the deterministic forecasts. It is found that short-term forecast errors tend to grow exponentially in the extratropics and linearly in the Tropics. The behavior of the ensemble is explained by using the ensemble dimension (E dimension), a spatiotemporally evolving measure of the evenness of the distribution of the variance between the principal components of the ensemble-based forecast error covariance matrix. It is shown that in the extratropics the largest forecast errors occur for the smallest E dimensions. Since a low value of the E dimension guarantees that the ensemble can capture a large portion of the forecast error, the larger the forecast error the more certain that the ensemble can fully capture the forecast error. In particular, in regions of low E dimension, ensemble averaging is an efficient error filter and the ensemble spread provides an accurate prediction of the upper bound of the error in the ensemble-mean forecast.
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contributor author | Kuhl, David | |
contributor author | Szunyogh, Istvan | |
contributor author | Kostelich, Eric J. | |
contributor author | Gyarmati, Gyorgyi | |
contributor author | Patil, D. J. | |
contributor author | Oczkowski, Michael | |
contributor author | Hunt, Brian R. | |
contributor author | Kalnay, Eugenia | |
contributor author | Ott, Edward | |
contributor author | Yorke, James A. | |
date accessioned | 2017-06-09T16:53:34Z | |
date available | 2017-06-09T16:53:34Z | |
date copyright | 2007/04/01 | |
date issued | 2007 | |
identifier issn | 0022-4928 | |
identifier other | ams-76069.pdf | |
identifier uri | http://onlinelibrary.yabesh.ir/handle/yetl/4218475 | |
description abstract | In this paper, the spatiotemporally changing nature of predictability is studied in a reduced-resolution version of the National Centers for Environmental Prediction (NCEP) Global Forecast System (GFS), a state-of-the-art numerical weather prediction model. Atmospheric predictability is assessed in the perfect model scenario for which forecast uncertainties are entirely due to uncertainties in the estimates of the initial states. Uncertain initial conditions (analyses) are obtained by assimilating simulated noisy vertical soundings of the ?true? atmospheric states with the local ensemble Kalman filter (LEKF) data assimilation scheme. This data assimilation scheme provides an ensemble of initial conditions. The ensemble mean defines the initial condition of 5-day deterministic model forecasts, while the time-evolved members of the ensemble provide an estimate of the evolving forecast uncertainties. The observations are randomly distributed in space to ensure that the geographical distribution of the analysis and forecast errors reflect predictability limits due to the model dynamics and are not affected by inhomogeneities of the observational coverage. Analysis and forecast error statistics are calculated for the deterministic forecasts. It is found that short-term forecast errors tend to grow exponentially in the extratropics and linearly in the Tropics. The behavior of the ensemble is explained by using the ensemble dimension (E dimension), a spatiotemporally evolving measure of the evenness of the distribution of the variance between the principal components of the ensemble-based forecast error covariance matrix. It is shown that in the extratropics the largest forecast errors occur for the smallest E dimensions. Since a low value of the E dimension guarantees that the ensemble can capture a large portion of the forecast error, the larger the forecast error the more certain that the ensemble can fully capture the forecast error. In particular, in regions of low E dimension, ensemble averaging is an efficient error filter and the ensemble spread provides an accurate prediction of the upper bound of the error in the ensemble-mean forecast. | |
publisher | American Meteorological Society | |
title | Assessing Predictability with a Local Ensemble Kalman Filter | |
type | Journal Paper | |
journal volume | 64 | |
journal issue | 4 | |
journal title | Journal of the Atmospheric Sciences | |
identifier doi | 10.1175/JAS3885.1 | |
journal fristpage | 1116 | |
journal lastpage | 1140 | |
tree | Journal of the Atmospheric Sciences:;2007:;Volume( 064 ):;issue: 004 | |
contenttype | Fulltext |