P4.12
Quantifying the predictability and uncertainty of models to improve aviation forecasts
Steven R. Silberberg, NOAA/NWS/NCEP, Kansas City, MO
Aviation meteorology focuses on the diagnosis and forecasting of mesoscale and sub-mesoscale phenomena such as turbulence; jet streams; tropopause heights; icing and freezing level height; cloud bases, tops, and depth; ceiling and visibility; mountain obscuration; and convection. Aviation forecasters make extensive use of model output in the forecast process. However, the predictability and uncertainty of model forecasts of aviation weather phenomena are poorly understood and the application of model predictability and uncertainty information to improve aviation forecasts is in its initial stages. The predictability and uncertainty of AVN, Eta, NGM, RUC, and UKMET forecasts are being quantified through diagnosis of model errors and initial condition differences at the Aviation Weather Center (http://www.awc-kc.noaa.gov/metdata/verify/models.html). Model fields such as height, mean sea-level pressure, freezing level height, windspeed, jet stream intensity and position, tropopause height, and temperature are being examined. The diagnostic work is being extended to include additional fields used in the aviation forecast process.
Preliminary results indicate that model errors are largest with active and intensifying weather systems such as troughs, low pressure systems, and jet streams; near the surface and regions of topography; the western edge of the geographical domain; and in gradient regions. For example, during the winter months for forecasts verifying at 12 UTC, peak errors of 5-10,000 ft occur daily in 3 h RUC and 6 h Eta forecasts of the freezing level height. These errors occur with only 1-3 C errors in model temperature sounding profiles in inversions aloft and larger temperature errors at and near the surface. This result suggests that large uncertainty exists in the forecasting of aviation weather phenomena, even when model errors are small. Diagnosis of cases of extreme aviation weather events suggests that model errors can: 1) be persistent with run time for a particular model, 2) be persistent with respect to a synoptic feature as it travels and evolves, and 3) be the same for an ensemble of forecast models (AVN, Eta, NGM, RUC, UK) over many forecast cycles. The error analyses are providing evidence of model biases that vary by model, vertical level, synoptic system, and changes in model formulation.
Initial results for aviation forecasting suggest that model uncertainty information is being applied by forecasters to: 1) support the choice of a model or blend of models, 2) support efforts to refine and correct model output in the case of large model errors that are persistent over forecast cycles and multiple models, 3) modify forecaster confidence in the occurrence of aviation weather phenomena, and 4) tailor the size and valid times of forecast areas in an effort to maximize forecast skill.
Poster Session 4, Mesoscale Predictability and Ensembles—with Coffee Break
Wednesday, 1 August 2001, 2:30 PM-4:00 PM
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