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Quantitative Precipitation Nowcasting: A Lagrangian Pixel-Based Approach
Authors
T Bellerby
JJ Gourley
+5 more
Y Hong
KL Hsu
V Lakshmanan
S Sorooshian
A Zahraei
Publication date
1 November 2012
Publisher
eScholarship, University of California
Doi
Cite
Abstract
Short-term high-resolution precipitation forecasting has important implications for navigation, flood forecasting, and other hydrological and meteorological concerns. This article introduces a pixel-based algorithm for Short-term Quantitative Precipitation Forecasting (SQPF) using radar-based rainfall data. The proposed algorithm called Pixel- Based Nowcasting (PBN) tracks severe storms with a hierarchical mesh-tracking algorithm to capture storm advection in space and time at high resolution from radar imagers. The extracted advection field is then extended to nowcast the rainfall field in the next 3. hr based on a pixel-based Lagrangian dynamic model. The proposed algorithm is compared with two other nowcasting algorithms (WCN: Watershed-Clustering Nowcasting and PER: PERsistency) for ten thunderstorm events over the conterminous United States. Object-based verification metric and traditional statistics have been used to evaluate the performance of the proposed algorithm. It is shown that the proposed algorithm is superior over comparison algorithms and is effective in tracking and predicting severe storm events for the next few hours. © 2012 Elsevier B.V
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oai:escholarship.org:ark:/1303...
Last time updated on 25/12/2021
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info:doi/10.1016%2Fj.atmosres....
Last time updated on 24/12/2020