Improving TIGGE Precipitation Forecasts Using an SVR Ensemble Approach in the Huaihe River Basin

Recently, the use of the numerical rainfall forecast has become a common approach to improve the lead time of streamflow forecasts for flood control and reservoir regulation. The control forecasts of five operational global prediction systems from different centers were evaluated against the observe...

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Main Authors: Chenkai Cai, Jianqun Wang, Zhijia Li
Format: Article
Language:English
Published: Hindawi Limited 2018-01-01
Series:Advances in Meteorology
Online Access:http://dx.doi.org/10.1155/2018/7809302
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spelling doaj-0ae0c3c5d3fe43efbb81b73fc00dead42020-11-24T20:51:42ZengHindawi LimitedAdvances in Meteorology1687-93091687-93172018-01-01201810.1155/2018/78093027809302Improving TIGGE Precipitation Forecasts Using an SVR Ensemble Approach in the Huaihe River BasinChenkai Cai0Jianqun Wang1Zhijia Li2College of Hydrology and Water Resources, Hohai University, Nanjing 210098, ChinaCollege of Hydrology and Water Resources, Hohai University, Nanjing 210098, ChinaCollege of Hydrology and Water Resources, Hohai University, Nanjing 210098, ChinaRecently, the use of the numerical rainfall forecast has become a common approach to improve the lead time of streamflow forecasts for flood control and reservoir regulation. The control forecasts of five operational global prediction systems from different centers were evaluated against the observed data by a series of area-weighted verification and classification metrics during May to September 2015–2017 in six subcatchments of the Xixian Catchment in the Huaihe River Basin. According to the demand of flood control safety, four different ensemble methods were adopted to reduce the forecast errors of the datasets, especially the errors of missing alarm (MA), which may be detrimental to reservoir regulation and flood control. The results indicate that the raw forecast datasets have large missing alarm errors (MEs) and cannot be directly applied to the extension of flood forecasting lead time. Although the ensemble methods can improve the performance of rainfall forecasts, the missing alarm error is still large, leading to a huge hazard in flood control. To improve the lead time of the flood forecast, as well as avert the risk from rainfall prediction, a new ensemble method was proposed on the basis of support vector regression (SVR). Compared to the other methods, the new method has a better ability in reducing the ME of the forecasts. More specifically, with the use of the new method, the lead time of flood forecasts can be prolonged to at least 3 d without great risk in flood control, which corresponds to the aim of flood prevention and disaster reduction.http://dx.doi.org/10.1155/2018/7809302
collection DOAJ
language English
format Article
sources DOAJ
author Chenkai Cai
Jianqun Wang
Zhijia Li
spellingShingle Chenkai Cai
Jianqun Wang
Zhijia Li
Improving TIGGE Precipitation Forecasts Using an SVR Ensemble Approach in the Huaihe River Basin
Advances in Meteorology
author_facet Chenkai Cai
Jianqun Wang
Zhijia Li
author_sort Chenkai Cai
title Improving TIGGE Precipitation Forecasts Using an SVR Ensemble Approach in the Huaihe River Basin
title_short Improving TIGGE Precipitation Forecasts Using an SVR Ensemble Approach in the Huaihe River Basin
title_full Improving TIGGE Precipitation Forecasts Using an SVR Ensemble Approach in the Huaihe River Basin
title_fullStr Improving TIGGE Precipitation Forecasts Using an SVR Ensemble Approach in the Huaihe River Basin
title_full_unstemmed Improving TIGGE Precipitation Forecasts Using an SVR Ensemble Approach in the Huaihe River Basin
title_sort improving tigge precipitation forecasts using an svr ensemble approach in the huaihe river basin
publisher Hindawi Limited
series Advances in Meteorology
issn 1687-9309
1687-9317
publishDate 2018-01-01
description Recently, the use of the numerical rainfall forecast has become a common approach to improve the lead time of streamflow forecasts for flood control and reservoir regulation. The control forecasts of five operational global prediction systems from different centers were evaluated against the observed data by a series of area-weighted verification and classification metrics during May to September 2015–2017 in six subcatchments of the Xixian Catchment in the Huaihe River Basin. According to the demand of flood control safety, four different ensemble methods were adopted to reduce the forecast errors of the datasets, especially the errors of missing alarm (MA), which may be detrimental to reservoir regulation and flood control. The results indicate that the raw forecast datasets have large missing alarm errors (MEs) and cannot be directly applied to the extension of flood forecasting lead time. Although the ensemble methods can improve the performance of rainfall forecasts, the missing alarm error is still large, leading to a huge hazard in flood control. To improve the lead time of the flood forecast, as well as avert the risk from rainfall prediction, a new ensemble method was proposed on the basis of support vector regression (SVR). Compared to the other methods, the new method has a better ability in reducing the ME of the forecasts. More specifically, with the use of the new method, the lead time of flood forecasts can be prolonged to at least 3 d without great risk in flood control, which corresponds to the aim of flood prevention and disaster reduction.
url http://dx.doi.org/10.1155/2018/7809302
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AT jianqunwang improvingtiggeprecipitationforecastsusingansvrensembleapproachinthehuaiheriverbasin
AT zhijiali improvingtiggeprecipitationforecastsusingansvrensembleapproachinthehuaiheriverbasin
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