Combing Random Forest and Least Square Support Vector Regression for Improving Extreme Rainfall Downscaling

A statistical downscaling approach for improving extreme rainfall simulation was proposed to predict the daily rainfalls at Shih-Men Reservoir catchment in northern Taiwan. The structure of the proposed downscaling approach is composed of two parts: the rainfall-state classification and the regressi...

Full description

Bibliographic Details
Main Authors: Quoc Bao Pham, Tao-Chang Yang, Chen-Min Kuo, Hung-Wei Tseng, Pao-Shan Yu
Format: Article
Language:English
Published: MDPI AG 2019-03-01
Series:Water
Subjects:
Online Access:http://www.mdpi.com/2073-4441/11/3/451
id doaj-2c12f547be264d8ca2ca86b6ce71689c
record_format Article
spelling doaj-2c12f547be264d8ca2ca86b6ce71689c2020-11-24T22:02:22ZengMDPI AGWater2073-44412019-03-0111345110.3390/w11030451w11030451Combing Random Forest and Least Square Support Vector Regression for Improving Extreme Rainfall DownscalingQuoc Bao Pham0Tao-Chang Yang1Chen-Min Kuo2Hung-Wei Tseng3Pao-Shan Yu4Department of Hydraulic and Ocean Engineering, National Cheng-Kung University, Tainan 701, TaiwanDepartment of Hydraulic and Ocean Engineering, National Cheng-Kung University, Tainan 701, TaiwanDepartment of Hydraulic and Ocean Engineering, National Cheng-Kung University, Tainan 701, TaiwanDepartment of Hydraulic and Ocean Engineering, National Cheng-Kung University, Tainan 701, TaiwanDepartment of Hydraulic and Ocean Engineering, National Cheng-Kung University, Tainan 701, TaiwanA statistical downscaling approach for improving extreme rainfall simulation was proposed to predict the daily rainfalls at Shih-Men Reservoir catchment in northern Taiwan. The structure of the proposed downscaling approach is composed of two parts: the rainfall-state classification and the regression for rainfall-amount prediction. Predictors of classification and regression methods were selected from the large-scale climate variables of the NCEP reanalysis data based on statistical tests. The data during 1964–1999 and 2000–2013 were used for calibration and validation, respectively. Three classification methods, including linear discriminant analysis (LDA), random forest (RF), and support vector classification (SVC), were adopted for rainfall-state classification and their performances were compared. After rainfall-state classification, the least square support vector regression (LS-SVR) was used for rainfall-amount prediction for different rainfall states. Two rainfall states (i.e., dry day and wet day) and three rainfall states (dry day, non-extreme-rainfall day, and extreme-rainfall day) were defined and compared for judging their downscaling performances. The results show that RF outperforms LDA and SVC for rainfall-state classification. Using RF for three-rainfall-states classification and LS-SVR for rainfall-amount prediction can improve the extreme rainfall downscaling.http://www.mdpi.com/2073-4441/11/3/451statistical downscalingrandom forestleast square support vector regressionextreme rainfall
collection DOAJ
language English
format Article
sources DOAJ
author Quoc Bao Pham
Tao-Chang Yang
Chen-Min Kuo
Hung-Wei Tseng
Pao-Shan Yu
spellingShingle Quoc Bao Pham
Tao-Chang Yang
Chen-Min Kuo
Hung-Wei Tseng
Pao-Shan Yu
Combing Random Forest and Least Square Support Vector Regression for Improving Extreme Rainfall Downscaling
Water
statistical downscaling
random forest
least square support vector regression
extreme rainfall
author_facet Quoc Bao Pham
Tao-Chang Yang
Chen-Min Kuo
Hung-Wei Tseng
Pao-Shan Yu
author_sort Quoc Bao Pham
title Combing Random Forest and Least Square Support Vector Regression for Improving Extreme Rainfall Downscaling
title_short Combing Random Forest and Least Square Support Vector Regression for Improving Extreme Rainfall Downscaling
title_full Combing Random Forest and Least Square Support Vector Regression for Improving Extreme Rainfall Downscaling
title_fullStr Combing Random Forest and Least Square Support Vector Regression for Improving Extreme Rainfall Downscaling
title_full_unstemmed Combing Random Forest and Least Square Support Vector Regression for Improving Extreme Rainfall Downscaling
title_sort combing random forest and least square support vector regression for improving extreme rainfall downscaling
publisher MDPI AG
series Water
issn 2073-4441
publishDate 2019-03-01
description A statistical downscaling approach for improving extreme rainfall simulation was proposed to predict the daily rainfalls at Shih-Men Reservoir catchment in northern Taiwan. The structure of the proposed downscaling approach is composed of two parts: the rainfall-state classification and the regression for rainfall-amount prediction. Predictors of classification and regression methods were selected from the large-scale climate variables of the NCEP reanalysis data based on statistical tests. The data during 1964–1999 and 2000–2013 were used for calibration and validation, respectively. Three classification methods, including linear discriminant analysis (LDA), random forest (RF), and support vector classification (SVC), were adopted for rainfall-state classification and their performances were compared. After rainfall-state classification, the least square support vector regression (LS-SVR) was used for rainfall-amount prediction for different rainfall states. Two rainfall states (i.e., dry day and wet day) and three rainfall states (dry day, non-extreme-rainfall day, and extreme-rainfall day) were defined and compared for judging their downscaling performances. The results show that RF outperforms LDA and SVC for rainfall-state classification. Using RF for three-rainfall-states classification and LS-SVR for rainfall-amount prediction can improve the extreme rainfall downscaling.
topic statistical downscaling
random forest
least square support vector regression
extreme rainfall
url http://www.mdpi.com/2073-4441/11/3/451
work_keys_str_mv AT quocbaopham combingrandomforestandleastsquaresupportvectorregressionforimprovingextremerainfalldownscaling
AT taochangyang combingrandomforestandleastsquaresupportvectorregressionforimprovingextremerainfalldownscaling
AT chenminkuo combingrandomforestandleastsquaresupportvectorregressionforimprovingextremerainfalldownscaling
AT hungweitseng combingrandomforestandleastsquaresupportvectorregressionforimprovingextremerainfalldownscaling
AT paoshanyu combingrandomforestandleastsquaresupportvectorregressionforimprovingextremerainfalldownscaling
_version_ 1725836240938336256