Development and Improvements in the High Resolution Rapid Refresh Data Assimilation System (HRRRDAS)
Abstract
Successful data assimilation is of paramount importance for initializing numerical models. NOAA's Global Systems Division (GSD) is developing an ensemble Data Assimilation System to initialize the High Resolution Rapid Refresh (HRRR) version 4, and provide storm-scale ensemble covariance information. This system, known as HRRRDAS, is in the process of being transitioned to operations with HRRRv4. Two of the key areas of development for HRRRDAS are the initialization of the convective scale ensemble and the maintenance ensemble spread during the data assimilation cycling.
The HRRRDAS system utilizes regional domains, which benefit from the periodic input of global scale information to account for large scale weather patterns. To this end, the HRRRDAS relies on the Global Forecasting System (GFS) for mean initial conditions. The frequency in which GFS data are used is an important question. The initial HRRRDAS configurations restart once per day with GFS initial conditions. This configuration is technologically convenient, but can have the weakness of a discrete change in ensemble characteristics with the input of the new GFS data. This deficiency has a clear impact on the downstream deterministic HRRR forecasts. Recently, experiments with a "rolling ensemble" approach have been explored. The rolling ensemble concept uses GFS data 4 times per data for ¼ of the ensemble members. This configuration removes the discrete change, provides global information every 6 hours, and can cause the ensemble to be less gaussian. Experiments with both configurations will be presented and discussed. Th HRRRDAS system uses the GFS Data Assimilation System (GDAS) to provide ensemble perturbations. Similar to the initial conditions, experiments in which large scale perturbations periodically replace the storm-scale perturbations in some or all members are conducted. This approach can be compared to maintaining storm-scale perturbations and "re-centering" the ensemble. Additionally, ensemble data assimilation spread maintenance through inflation to prior spread is also included in the HRRRDAS. This presentation will share recent ensemble spread results for cycled data assimilation and for the use of ensemble covariances in the 3DEnVAR HRRRv4 data assimilation.- Publication:
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AGU Fall Meeting Abstracts
- Pub Date:
- December 2019
- Bibcode:
- 2019AGUFMNG13A..02L
- Keywords:
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- 3315 Data assimilation;
- ATMOSPHERIC PROCESSES;
- 0555 Neural networks;
- fuzzy logic;
- machine learning;
- COMPUTATIONAL GEOPHYSICS;
- 1640 Remote sensing;
- GLOBAL CHANGE;
- 3275 Uncertainty quantification;
- MATHEMATICAL GEOPHYSICS