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Precipitation Estimation from Remotely Sensed Information Using Artificial Neural Networks
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1997
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HydrometeorologyMeteorologyClimatologyNumerical Weather PredictionEarth ScienceEngineeringData ScienceDroughtGeographyWeather ForecastingRemote SensingFlorida PeninsulaMeteorological MeasurementInfrared Satellite ImageryForecastingPrecipitation EstimationHydrologyPrecipitation
PERSIANN, a precipitation estimation system using remotely sensed data and artificial neural networks, is being developed at the University of Arizona. The system employs an adaptive ANN that estimates rainfall from infrared satellite imagery and ground‑surface information, calibrated on Japanese Islands with GMS and AMeDAS data, validated in Japan and Florida with GMS, GOES‑8, and NEXRAD, and recursively updates its parameters when ground observations are available. This adaptive approach markedly improves estimation accuracy across diverse regions and seasons, can be updated with limited observation data, and reveals functional relationships between input variables and rainfall rate.
A system for Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks (PERSIANN) is under development at The University of Arizona. The current core of this system is an adaptive Artificial Neural Network (ANN) model that estimates rainfall rates using infrared satellite imagery and ground-surface information. The model was initially calibrated over the Japanese Islands using remotely sensed infrared data collected by the Geostationary Meteorological Satellite (GMS) and ground-based data collected by the Automated Meteorological Data Acquisition System (AMeDAS). The model was then validated for both the Japanese Islands (using GMS and AMeDAS data) and the Florida peninsula (using GOES-8 and NEXRAD data). An adaptive procedure is used to recursively update the network parameters when ground-based data are available. This feature dramatically improves the estimation performance in response to the diverse precipitation characteristics of different geographical regions and time of year. The model can also be successfully updated using only spatially and/or temporally limited observation data such as ground-based rainfall measurements. Another important feature is a procedure that provides insights into the functional relationships between the input variables and output rainfall rate.