11B.4

**A practical approach to sequential estimation of systematic error on near-surface mesoscale grids**

**Joshua P. Hacker**, NCAR, Boulder, CO; and D. L. Rife

Statistical analysis arguments are used to construct an estimation algorithm for systematic error of near-surface temperatures on a mesoscale grid. The systematic error is defined as the observed running-mean error, and an averaging length of seven days is shown to be appropriate. Those errors are spread over a numerical weather prediction model grid via the statistical analysis equation. Two covariance models are examined: (1) a stationary, isotropic function tuned with the observed running-mean errors, and (2) dynamic estimates derived from a recent history of running-mean forecasts. Prediction of error is possible with a diurnal persistence model, where the error at one time of day can be estimated from data with lags of 24-h multiples.

The approach is tested on six months of 6-h forecasts with the Pennsylvania State University-NCAR Mesoscale Model version 5 (MM5) over New Mexico. Results show that for a quantity such as 2-m temperature, the systematic component of error can be effectively predicted on the grid. The gridded estimates fit the observed running-mean errors well. Cross validation shows that predictions of systematic error result in a substantial error reduction where observations are not available. The error estimates show a diurnal evolution, and are not strictly functions of terrain elevation. Observation error covariances, localization operators, and covariance functions in the isotropic case, must be tuned for a specific forecast system and observing network, but the process is straightforward. Taken together, the results suggest an effective method for systematic error estimation on near-surface mesoscale grids in the absence of a useful ensemble. Correction for those errors may provide benefit to forecast users.

.Session 11B, Land Surface Process & Modeling

**Thursday, 28 June 2007, 4:00 PM-6:00 PM**, Summit B** Previous paper Next paper
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