TY - JOUR
T1 - Data-driven localization mappings in filtering the monsoon-Hadley multicloud convective flows
AU - La Chevrotière, Michèle De
AU - Harlim, John
N1 - Funding Information:
Acknowledgments. The authors thank Dr. Peter Houtekamer for his careful reading of the manuscript and insightful comments. The research of J. H. is partially supported by the ONR Grant N00014-16-1-2888 and the NSF Grants DMS-1317919 and DMS-1619661.
Funding Information:
The authors thank Dr. Peter Houtekamer for his careful reading of the manuscript and insightful comments. The research of J. H. is partially supported by the ONR Grant N00014-16-1-2888 and the NSF Grants DMS-1317919 and DMS-1619661
Publisher Copyright:
© 2018 American Meteorological Society.
PY - 2018/4/1
Y1 - 2018/4/1
N2 - This paper demonstrates the efficacy of data-driven localization mappings for assimilating satellite-like observations in a dynamical system of intermediate complexity. In particular, a sparse network of synthetic brightness temperature measurements is simulated using an idealized radiative transfer model and assimilated to the monsoon-Hadley multicloud model, a nonlinear stochastic model containing several thousands of model coordinates. A serial ensemble Kalman filter is implemented in which the empirical correlation statistics are improved using localization maps obtained from a supervised learning algorithm. The impact of the localization mappings is assessed in perfect-model observing system simulation experiments (OSSEs) as well as in the presence of model errors resulting from the misspecification of key convective closure parameters. In perfect-model OSSEs, the localization mappings that use adjacent correlations to improve the correlation estimated from small ensemble sizes produce robust accurate analysis estimates. In the presence of model error, the filter skills of the localization maps trained on perfect- and imperfect-model data are comparable.
AB - This paper demonstrates the efficacy of data-driven localization mappings for assimilating satellite-like observations in a dynamical system of intermediate complexity. In particular, a sparse network of synthetic brightness temperature measurements is simulated using an idealized radiative transfer model and assimilated to the monsoon-Hadley multicloud model, a nonlinear stochastic model containing several thousands of model coordinates. A serial ensemble Kalman filter is implemented in which the empirical correlation statistics are improved using localization maps obtained from a supervised learning algorithm. The impact of the localization mappings is assessed in perfect-model observing system simulation experiments (OSSEs) as well as in the presence of model errors resulting from the misspecification of key convective closure parameters. In perfect-model OSSEs, the localization mappings that use adjacent correlations to improve the correlation estimated from small ensemble sizes produce robust accurate analysis estimates. In the presence of model error, the filter skills of the localization maps trained on perfect- and imperfect-model data are comparable.
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U2 - 10.1175/MWR-D-17-0381.1
DO - 10.1175/MWR-D-17-0381.1
M3 - Article
AN - SCOPUS:85047071824
SN - 0027-0644
VL - 146
SP - 1197
EP - 1218
JO - Monthly Weather Review
JF - Monthly Weather Review
IS - 4
ER -