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contributor authorMohammadvaghef Ghazvinian
contributor authorYu Zhang
contributor authorThomas M. Hamill
contributor authorDong-Jun Seo
contributor authorNelun Fernando
date accessioned2023-04-12T18:52:50Z
date available2023-04-12T18:52:50Z
date copyright2022/09/01
date issued2022
identifier otherJHM-D-22-0021.1.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4290407
description abstractConventional statistical postprocessing techniques offer limited ability to improve the skills of probabilistic guidance for heavy precipitation. This paper introduces two artificial neural network (ANN)-based, geographically aware, and computationally efficient postprocessing schemes, namely, the ANN-multiclass (ANN-Mclass) and the ANN–censored, shifted gamma distribution (ANN-CSGD). Both schemes are implemented to postprocess Global Ensemble Forecast System (GEFS) forecasts to produce probabilistic quantitative precipitation forecasts (PQPFs) over the contiguous United States (CONUS) using a short (60 days), rolling training window. The performances of these schemes are assessed through a set of hindcast experiments, wherein postprocessed 24-h PQPFs from the two ANN schemes were compared against those produced using the benchmark quantile mapping algorithm for lead times ranging from 1 to 8 days. Outcomes of the hindcast experiments show that ANN schemes overall outperform the benchmark as well as the raw forecast over the CONUS in predicting probability of precipitation over a range of thresholds. The relative performance varies among geographic regions, with the two ANN schemes broadly improving upon quantile mapping over the central, south, and southeast, and slightly underperforming along the Pacific coast where skills of raw forecasts are the highest. Between the two schemes, the hybrid ANN-CSGD outperforms at higher rainfall thresholds (i.e., >50 mm day
publisherAmerican Meteorological Society
titleImproving Probabilistic Quantitative Precipitation Forecasts Using Short Training Data through Artificial Neural Networks
typeJournal Paper
journal volume23
journal issue9
journal titleJournal of Hydrometeorology
identifier doi10.1175/JHM-D-22-0021.1
journal fristpage1365
journal lastpage1382
page1365–1382
treeJournal of Hydrometeorology:;2022:;volume( 023 ):;issue: 009
contenttypeFulltext


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