Assessing Three Perfect Prognosis Methods for Statistical Downscaling of Climate Change Precipitation Scenarios

被引:8
|
作者
Legasa, M. N. [1 ]
Thao, S. [2 ]
Vrac, M. [2 ]
Manzanas, R. [1 ,3 ]
机构
[1] Univ Cantabria, Dept Matemat Aplicada & Ciencias Comp MACC, Santander, Spain
[2] Univ Paris Saclay, Lab Sci Climat & Environm LSCE IPSL, CEA CNRS UVSQ, Ctr Etudes Saclay, Gif Sur Yvette, France
[3] Univ Cantabria, Unidad Asociada CSIC, Grp Meteorol & Comp, Santander, Spain
关键词
climate change; statistical downscaling; machine learning; precipitation; random forests; convolutional neural networks; MODEL; PROJECTION; RAINFALL; PREDICTABILITY; CONFIGURATION; TEMPERATURE; FRAMEWORK; ENSEMBLE; EARTH;
D O I
10.1029/2022GL102525
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
Under the perfect prognosis approach, statistical downscaling methods learn the relationships between large-scale variables from reanalysis and local observational records. These relationships are subsequently applied to downscale future global climate model (GCM) simulations in order to obtain projections for the local region and variables of interest. However, the capability of such methods to produce future climate change signals consistent with those from the GCM, often referred to as transferability, is an important issue that remains to be carefully analyzed. Using the EC-Earth GCM and focusing on precipitation, we assess the transferability of generalized linear models, convolutional neural networks and a posteriori random forests (APRFs). We conclude that APRFs present the best overall performance for the historical period, and future local climate change signals consistent with those projected by EC-Earth. Moreover, we show how a slight modification of APRFs can greatly improve the temporal consistency of the downscaled series.
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页数:13
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