22nd Conference on Weather Analysis and Forecasting/18th Conference on Numerical Weather Prediction

4A.5

The status of the Real Time Mesoscale Analysis System at NCEP

Manuel S.F.V. De Pondeca, SAIC and NOAA/NWS/NCEP/EMC, Camp Springs, MD; and G. S. Manikin, D. F. Parrish, R. J. Purser, W. S. Wu, G. DiMego, J. C. Derber, S. Benjamin, J. D. Horel, L. Anderson, and B. Colman

We report on the status of the Real Time Mesoscale Analysis (RTMA) System, which has been running in testing-operational mode since the fall of 2006. The development of the RTMA is a joint effort between the National Centers for Environmental Predictions (NCEP) and the Earth System Research Laboratory (ESRL), and represents the first step of a comprehensive plan toward the development of an Analysis of Record. The latter is defined as the best possible real-time and retrospective analyses at high spatial and temporal resolutions. Such high resolution analyses are in high demand in a wide range of applications that include the creation and verification of gridded forecasts, coastal zone and fire management, dispersion modeling for the transport of hazardous materials, aviation and surface transportation management, and impact studies of climate change on the regional scale.

Using NCEP's Grid-point Statistical (GSI) Interpolation Analysis System run in the 2DVar mode, the RTMA performs hourly 5km-resolution analysis of surface observations to produce CONUS-National Digital Forecast Database (NDFD) grid matching fields of temperature, specific humidity, dew-point temperature, wind, and surface pressure. In addition, the system maps the NCEP Stage-II precipitation and GOES sounder effective cloud amount to the 5km resolution NDFD grid. The RTMA-2DVar uses the one-hour forecast from the Rapid Update Cycle (RUC) downscaled to the NDFD grid as its first guess. That downscaling comprises an interpolation of the 13km resolution RUC fields to the NDFD grid followed by a reduction to the NDFD topography. The background error covariance model used in the 2DVar analysis is by design anisotropic, with structure functions exhibiting a controlled degree of correlation with the underlying topography. Such an implementation is made possible by the use of recursive filters and the sequential line-filtering "triad" algorithm. For each analyzed weather element, the RTMA also provides an estimate of the corresponding analysis uncertainty. Approximately 80% of all the observations assimilated in the RTMA-2DVar come from mesonet networks. The remaining represent synoptic, METAR, buoy and C-MAN observations, as well as satellite SSM/I wind speeds and QuickSCAT ocean winds.

A detailed description of the RTMA and results of its evaluation will be presented. The challenges associated with the assimilation of the high density, often poor quality-controlled mesonet data will be discussed. A brief reference will also be made to the on-going work aimed at improving the system, including the use of variational quality control for the observations, parameter tuning via cross-validation, and the use of alternate covariance shapes for the background errors.

extended abstract  Extended Abstract (452K)

Session 4A, Analysis Systems
Tuesday, 26 June 2007, 4:15 PM-6:00 PM, Summit A

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