CARPE DIEM 2 nd meeting - WP 2 Developed at FSL/NOAA - Forecasting System Laboratory Mesoscale analysis system Exploitation of standard data (Synop, Metar,

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Presentation transcript:

CARPE DIEM 2 nd meeting - WP 2 Developed at FSL/NOAA - Forecasting System Laboratory Mesoscale analysis system Exploitation of standard data (Synop, Metar, Temp) Surface data (local mesoscale network) Exploitation of unconventional data (Radar Z & V, Satellite, Profiler, aircraft report) Use of LAM products as “background” Local Analisys and Prediction System

CARPE DIEM 2 nd meeting - WP 2 Albers, S.C,. 1995: The LAPS wind analysis. Wea.Forecasting, 10,

CARPE DIEM 2 nd meeting - WP :04 UTC 1.4° 4.1° 9.6°

CARPE DIEM 2 nd meeting - WP 2 Re-mapping of radial wind radar data onto LAPS grid

CARPE DIEM 2 nd meeting - WP 2 Re-mapping of reflectivity radar data onto LAPS grid

CARPE DIEM 2 nd meeting - WP 2 QC RESULT

CARPE DIEM 2 nd meeting - WP 2 RAOB vs BACK RAOB vs RAD U - CompV - Comp

CARPE DIEM 2 nd meeting - WP 2 RAOBRAOB RADARRADAR Projected radial component

CARPE DIEM 2 nd meeting - WP 2 BACKBACK Projected radial component RAOBRAOB

CARPE DIEM 2 nd meeting - WP 2 Strong convection Frontal band with embedded convection