Publication | Closed Access
Predictability of Precipitation from Continental Radar Images. Part III: Operational Nowcasting Implementation (MAPLE)
158
Citations
20
References
2004
Year
Forecasting MethodologyEngineeringPart IiiWeather ForecastingEarth ScienceRainfall ReflectivityMcgill AlgorithmProbabilistic ForecastingNumerical Weather PredictionData ScienceAtmospheric ScienceImaging RadarClimate ForecastingHydrometeorologyMeteorologySynthetic Aperture RadarGeographyOperational Nowcasting ImplementationRadar ApplicationForecastingRadarClimatologyContinental Radar ImagesRemote SensingRadar Image ProcessingForecast Precision
Filtering of nonpredictable scales of precipitation can be used to improve forecast precision (rms). Previous papers have studied the scale dependence of predictability of patterns of instantaneous rainfall rate and of probabilistic forecasts. In this paper, motivated by the often localized, intermittent nature of rainfall, the wavelet transform is used to develop measures of predictability at each scale. These measures are then used to design optimal forecast filters. This method is applied to radar composites of rainfall reflectivity over much of the continental United States and is developed to be appropriate for operational forecasts of rainfall rates and raining areas. For the four precipitation events studied, the average correlation at 4-h lead time was increased from 0.50 for the original nowcasts to 0.62 with forecast filtering. This forecast filtering is incorporated into the McGill Algorithm for Precipitation Nowcasting by Lagrangian Extrapolation (MAPLE), which now includes variational echo tracking, a semi-Lagrangian advection scheme, scale-based filtering, and appropriate rescaling of the filtered nowcast fields.
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