Publication | Open Access
Precipitation Estimation from Remotely Sensed Imagery Using an Artificial Neural Network Cloud Classification System
854
Citations
109
References
2004
Year
EngineeringCloud Classification SystemWeather ForecastingClimate ModelingEarth SciencePrecipitationPrecipitation ProcessesCloud PatchesData ScienceAtmospheric ScienceMeteorological MeasurementHydrometeorologyMeteorologyCloud DynamicGeographyRadiation MeasurementCloud PhysicEarth Observation DataLand Cover MapDroughtSatellite Cloud ImagesRemote SensingSatellite MeteorologyPrecipitation EstimationRemote Sensing Sensor
The study presents PERSIANN CCS, a satellite‑based rainfall estimation algorithm. The algorithm extracts cloud features from infrared satellite imagery, classifies cloud patches, and calibrates cloud‑top temperature–rainfall relationships using gauge‑corrected radar data to produce fine‑scale rainfall estimates. The method identified distinct cloud‑patch categories and achieved hourly correlation coefficients of 0.45–0.59 and daily coefficients of 0.57–0.63 across seasons and scales.
Abstract A satellite-based rainfall estimation algorithm, Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks (PERSIANN) Cloud Classification System (CCS), is described. This algorithm extracts local and regional cloud features from infrared (10.7 μm) geostationary satellite imagery in estimating finescale (0.04° × 0.04° every 30 min) rainfall distribution. This algorithm processes satellite cloud images into pixel rain rates by 1) separating cloud images into distinctive cloud patches; 2) extracting cloud features, including coldness, geometry, and texture; 3) clustering cloud patches into well-organized subgroups; and 4) calibrating cloud-top temperature and rainfall (Tb–R) relationships for the classified cloud groups using gauge-corrected radar hourly rainfall data. Several cloud-patch categories with unique cloud-patch features and Tb–R curves were identified and explained. Radar and gauge rainfall measurements were both used to evaluate the PERSIANN CCS rainfall estimates at a range of temporal (hourly and daily) and spatial (0.04°, 0.12°, and 0.25°) scales. Hourly evaluation shows that the correlation coefficient (CC) is 0.45 (0.59) at a 0.04° (0.25°) grid scale. The averaged CC of daily rainfall is 0.57 (0.63) for the winter (summer) season.
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