Coupling dynamical and statistical downscaling for high-resolution rainfall forecasting: case study of the Red River Delta, Vietnam

Abstract The hybrid dynamical-statistical downscaling approach is an effort to combine the ability of dynamical downscaling to resolve fine-scale climate changes with the low computational cost of statistical downscaling. In this study, we propose a dynamical-statistical downscaling technique by inc...

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Main Authors: Quan Tran Anh, Kenji Taniguchi
Format: Article
Language:English
Published: SpringerOpen 2018-05-01
Series:Progress in Earth and Planetary Science
Subjects:
ANN
WRF
Online Access:http://link.springer.com/article/10.1186/s40645-018-0185-6
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spelling doaj-16a75df7a24f4c208ca9390ddc0a10e22020-11-24T22:25:27ZengSpringerOpenProgress in Earth and Planetary Science2197-42842018-05-015111810.1186/s40645-018-0185-6Coupling dynamical and statistical downscaling for high-resolution rainfall forecasting: case study of the Red River Delta, VietnamQuan Tran Anh0Kenji Taniguchi1School of Natural Science and Engineering, Kanazawa UniversitySchool of Environmental Design, Kanazawa UniversityAbstract The hybrid dynamical-statistical downscaling approach is an effort to combine the ability of dynamical downscaling to resolve fine-scale climate changes with the low computational cost of statistical downscaling. In this study, we propose a dynamical-statistical downscaling technique by incorporating a regional climate model (RCM) with artificial neural networks (ANN) to downscale rainfall information over the Red River Delta in Vietnam. First, dynamical downscaling was performed with an RCM driven by the reanalysis to produce nested 30- and 6-km resolution simulations. Subsequently, the 6-km simulation was compared to rain gauge data to examine the ability of the RCM to reproduce known climate conditions. Then, in the statistical downscaling step, the ANN was trained to predict rainfall in the 6-km domain based on weather predictors in the 30-km simulation. Statistical downscaling results were compared with the original output from RCM to determine the accuracy of the coupling method. A bias correction method to locate no-rainfall events in the ANN downscaling result was also developed to enhance the credibility of the final results. The outcomes of this study illustrate that ANN can produce RCM-like results (r > 0.9) at a fraction of the cost, with an 89% reduction in the required computational power.http://link.springer.com/article/10.1186/s40645-018-0185-6Dynamical downscalingStatistical downscalingANNWRFRainfall
collection DOAJ
language English
format Article
sources DOAJ
author Quan Tran Anh
Kenji Taniguchi
spellingShingle Quan Tran Anh
Kenji Taniguchi
Coupling dynamical and statistical downscaling for high-resolution rainfall forecasting: case study of the Red River Delta, Vietnam
Progress in Earth and Planetary Science
Dynamical downscaling
Statistical downscaling
ANN
WRF
Rainfall
author_facet Quan Tran Anh
Kenji Taniguchi
author_sort Quan Tran Anh
title Coupling dynamical and statistical downscaling for high-resolution rainfall forecasting: case study of the Red River Delta, Vietnam
title_short Coupling dynamical and statistical downscaling for high-resolution rainfall forecasting: case study of the Red River Delta, Vietnam
title_full Coupling dynamical and statistical downscaling for high-resolution rainfall forecasting: case study of the Red River Delta, Vietnam
title_fullStr Coupling dynamical and statistical downscaling for high-resolution rainfall forecasting: case study of the Red River Delta, Vietnam
title_full_unstemmed Coupling dynamical and statistical downscaling for high-resolution rainfall forecasting: case study of the Red River Delta, Vietnam
title_sort coupling dynamical and statistical downscaling for high-resolution rainfall forecasting: case study of the red river delta, vietnam
publisher SpringerOpen
series Progress in Earth and Planetary Science
issn 2197-4284
publishDate 2018-05-01
description Abstract The hybrid dynamical-statistical downscaling approach is an effort to combine the ability of dynamical downscaling to resolve fine-scale climate changes with the low computational cost of statistical downscaling. In this study, we propose a dynamical-statistical downscaling technique by incorporating a regional climate model (RCM) with artificial neural networks (ANN) to downscale rainfall information over the Red River Delta in Vietnam. First, dynamical downscaling was performed with an RCM driven by the reanalysis to produce nested 30- and 6-km resolution simulations. Subsequently, the 6-km simulation was compared to rain gauge data to examine the ability of the RCM to reproduce known climate conditions. Then, in the statistical downscaling step, the ANN was trained to predict rainfall in the 6-km domain based on weather predictors in the 30-km simulation. Statistical downscaling results were compared with the original output from RCM to determine the accuracy of the coupling method. A bias correction method to locate no-rainfall events in the ANN downscaling result was also developed to enhance the credibility of the final results. The outcomes of this study illustrate that ANN can produce RCM-like results (r > 0.9) at a fraction of the cost, with an 89% reduction in the required computational power.
topic Dynamical downscaling
Statistical downscaling
ANN
WRF
Rainfall
url http://link.springer.com/article/10.1186/s40645-018-0185-6
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AT kenjitaniguchi couplingdynamicalandstatisticaldownscalingforhighresolutionrainfallforecastingcasestudyoftheredriverdeltavietnam
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