Premium
Statistical downscaling of global climate model outputs to monthly precipitation via extreme learning machine: A case study
Author(s) -
Alizamir Meysam,
Azhdary Moghadam Mehdi,
Hashemi Monfared Arman,
Shamsipour Aliakbar
Publication year - 2018
Publication title -
environmental progress and sustainable energy
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.495
H-Index - 66
eISSN - 1944-7450
pISSN - 1944-7442
DOI - 10.1002/ep.12856
Subject(s) - downscaling , precipitation , extreme learning machine , climatology , environmental science , artificial neural network , scale (ratio) , climate change , meteorology , genetic programming , atmospheric research , quantile , climate model , computer science , machine learning , geography , statistics , mathematics , cartography , ecology , geology , biology
The present article explores the impacts of climate change on precipitation at station scale in the Minab basin, Iran. The data used for evaluation were large‐scale input (predictor) parameters extracted from the reanalysis data set of the National Center for Environmental Prediction and National Center for Atmospheric Research to downscale monthly precipitation. In this research, four approaches were applied to downscale precipitation, including an implementation on extreme learning machine (ELM) for single‐hidden layer feedforward neural network, artificial neural network, genetic programming, and quantile mapping. The results indicated that the ELM approach outperformed all other approaches in downscaling the large‐scale global climate model atmospheric variables to monthly precipitation at station scale. © 2018 American Institute of Chemical Engineers Environ Prog, 37: 1853–1862, 2018