Data assimilation for the Model for Prediction Across Scales - Atmosphere with the Joint Effort for Data assimilation Integration (JEDI-MPAS 2.0.0-beta): Ensemble of 3D ensemble-variational (En-3DEnVar) assimilations

An ensemble of 3D ensemble-variational (En-3DEnVar) data assimilations is demonstrated with the Joint Effort for Data assimilation Integration (JEDI) with the Model for Prediction Across Scales - Atmosphere (MPAS-A) (i.e., JEDI-MPAS). Basic software building blocks are reused from previously presented deterministic 3DEnVar functionality and combined with a formal experimental workflow manager in MPAS-Workflow. En-3DEnVar is used to produce an 80-member ensemble of analyses, which are cycled with ensemble forecasts in a 1-month experiment. The ensemble forecasts approximate a purely flow-dependent background error covariance (BEC) at each analysis time. The En-3DEnVar BECs and prior ensemble-mean forecast errors are compared to those produced by a similar experiment that uses the Data Assimilation Research Testbed (DART) ensemble adjustment Kalman filter (EAKF). The experiment using En-3DEnVar produces a similar ensemble spread to and slightly smaller errors than the EAKF. The ensemble forecasts initialized from En-3DEnVar and EAKF analyses are used as BECs in deterministic cycling 3DEnVar experiments, which are compared to a control experiment that uses 20-member MPAS-A forecasts initialized from Global Ensemble Forecast System (GEFS) initial conditions. The experimental ensembles achieve mostly equivalent or better performance than the off-the-shelf ensemble system in this deterministic cycling setting, although there are many obvious differences in configuration between GEFS and the two MPAS ensemble systems. An additional experiment that uses hybrid 3DEnVar, which combines the En-3DEnVar ensemble BEC with a climatological BEC, increases tropospheric forecast quality compared to the corresponding pure 3DEnVar experiment. The JEDI-MPAS En-3DEnVar is technically working and useful for future research studies. Tuning of observation errors and spread is needed to improve performance, and several algorithmic advancements are needed to improve computational efficiency for larger-scale applications.

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Related Links

Related Dataset #1 : NCEP ADP Global Upper Air Observational Weather Data, October 1999 - continuing

Related Dataset #2 : NCEP GDAS Satellite Data 2004-continuing

Related Dataset #3 : NCEP ADP Global Upper Air and Surface Weather Observations (PREPBUFR format)

Related Service #1 : Cheyenne: SGI ICE XA Cluster

Related Software #1 : JEDI-MPAS Data Assimilation System v2.0.0-beta

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Author Guerrette, Jonathan
Liu, Zhiquan
Snyder, Chris
Jung, Byoung-Joo
Schwartz, Craig S.
Ban, Junmei
Vahl, Steven
Wu, Yali
Baños, Ivette Hernández
Yu, Yonggang
Ha, So-Young
Tremolet, Yannick
Auligne, Thomas D.
Hardy Gas, Clementine
Ménétrier, Benjamin
Shlyaeva, Anna
Miesch, Mark
Herbener, Stephen
Liu, Huichun
Holdaway, Daniel
Johnson, Benjamin T.
Publisher UCAR/NCAR - Library
Publication Date 2023-12-08T00:00:00
Digital Object Identifier (DOI) Not Assigned
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Resource Version N/A
Topic Category geoscientificInformation
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Metadata Date 2025-07-11T15:11:25.925914
Metadata Record Identifier edu.ucar.opensky::articles:27006
Metadata Language eng; USA
Suggested Citation Guerrette, Jonathan, Liu, Zhiquan, Snyder, Chris, Jung, Byoung-Joo, Schwartz, Craig S., Ban, Junmei, Vahl, Steven, Wu, Yali, Baños, Ivette Hernández, Yu, Yonggang, Ha, So-Young, Tremolet, Yannick, Auligne, Thomas D., Hardy Gas, Clementine, Ménétrier, Benjamin, Shlyaeva, Anna, Miesch, Mark, Herbener, Stephen, Liu, Huichun, Holdaway, Daniel, Johnson, Benjamin T.. (2023). Data assimilation for the Model for Prediction Across Scales - Atmosphere with the Joint Effort for Data assimilation Integration (JEDI-MPAS 2.0.0-beta): Ensemble of 3D ensemble-variational (En-3DEnVar) assimilations. UCAR/NCAR - Library. https://n2t.org/ark:/85065/d7n30237. Accessed 11 August 2025.

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