Statistical Downscaling Modeling With Quantile Regression Using Lasso To Estimate Extreme Rainfall

被引:1
|
作者
Santri, Dewi [1 ]
Wigena, Aji Hamim [1 ]
Djuraidah, Anik [1 ]
机构
[1] Inst Pertanian, Bogor, Indonesia
关键词
Extreme Rainfall; Global Circulation Models; Statistical Downsaling; Quantile Regression; Lasso;
D O I
10.1063/1.4940862
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Rainfall is one of the climatic elements with high diversity and has many negative impacts especially extreme rainfall. Therefore, there are several methods that required to minimize the damage that may occur. So far, Global circulation models (GCM) are the best method to forecast global climate changes include extreme rainfall. Statistical downscaling (SD) is a technique to develop the relationship between GCM output as a global-scale independent variables and rainfall as a localscale response variable. Using GCM method will have many difficulties when assessed against observations because GCM has high dimension and multicollinearity between the variables. The common method that used to handle this problem is principal components analysis (PCA) and partial least squares regression. The new method that can be used is lasso. Lasso has advantages in simultaneuosly controlling the variance of the fitted coefficients and performing automatic variable selection. Quantile regression is a method that can be used to detect extreme rainfall in dry and wet extreme. Objective of this study is modeling SD using quantile regression with lasso to predict extreme rainfall in Indramayu. The results showed that the estimation of extreme rainfall (extreme wet in January, February and December) in Indramayu could be predicted properly by the model at quantile 90th.
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页数:9
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