A Data Fusion System for Accurate Precipitation Estimation Using Satellite and Ground Radar Observations: Urban Scale Application in Dallas-Fort Worth Metroplex

2017 XXXIIND GENERAL ASSEMBLY AND SCIENTIFIC SYMPOSIUM OF THE INTERNATIONAL UNION OF RADIO SCIENCE (URSI GASS)(2017)

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摘要
The space-based precipitation products are commonly used for regional and/or global hydrologic modelling and climate studies. However, the accuracy of onboard satellite measurements is limited due to the spatial temporal sampling limitations, especially for extreme events such as very heavy or light rain. On the other hand, ground-based radar is more mature science for quantitative precipitation estimation (QPE). Nowadays, ground radars are critical for providing local scale rainfall estimation for operational forecasters to issue watches and warnings, as well as validation of various space measurements and products. This paper introduces a neural network based data fusion mechanism to improve satellite-based precipitation retrievals by incorporating dual-polarization measurements from ground-based dense radar network. The prototype architecture of this fusion system is detailed. Results from urban scale application in Dallas-Fort Worth (DFW) Metroplex are presented.
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关键词
data fusion system,urban scale application,quantitative precipitation estimation,local scale rainfall estimation,neural network,data fusion mechanism,climate study,spatial-temporal sampling limitation,rain,space measurement,Dallas-Fort worth metroplex,space-based precipitation product,global hydrologic model,onboard satellite measurement,dense ground radar network,dual-polarization measurement,operational forecaster,satellite-based precipitation retrieval
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