CliGAN: A Structurally Sensitive Convolutional Neural Network Model for Statistical Downscaling of Precipitation from Multi-Model Ensembles

被引:17
作者
Chaudhuri, Chiranjib [1 ]
Robertson, Colin [1 ]
机构
[1] Wilfrid Laurier Univ, Dept Geog & Environm Studies, Waterloo, ON N2L 3C5, Canada
关键词
statistical downscaling; generative adversarial network; combination of errors; convolutional neural network; multi-scale structural similarity index; Wasserstein GAN; CLIMATE-CHANGE SCENARIOS; WEATHER GENERATOR; UNCERTAINTY; TEMPERATURE; SIMULATION; EXTREMES; ANALOG; SUPERRESOLUTION; PREDICTION; RAINFALL;
D O I
10.3390/w12123353
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Despite numerous studies in statistical downscaling methodologies, there remains a lack of methods that can downscale from precipitation modeled in global climate models to regional level high resolution gridded precipitation. This paper reports a novel downscaling method using a Generative Adversarial Network (GAN), CliGAN, which can downscale large-scale annual maximum precipitation given by simulation of multiple atmosphere-ocean global climate models (AOGCM) from Coupled Model Inter-comparison Project 6 (CMIP6) to regional-level gridded annual maximum precipitation data. This framework utilizes a convolution encoder-dense decoder network to create a generative network and a similar network to create a critic network. The model is trained using an adversarial training approach. The critic uses the Wasserstein distance loss function and the generator is trained using a combination of adversarial loss Wasserstein distance, structural loss with the multi-scale structural similarity index (MSSIM), and content loss with the Nash-Sutcliff Model Efficiency (NS). The MSSIM index allowed us to gain insight into the model's regional characteristics and shows that relying exclusively on point-based error functions, widely used in statistical downscaling, may not be enough to reliably simulate regional precipitation characteristics. Further use of structural loss functions within CNN-based downscaling methods may lead to higher quality downscaled climate model products.
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页数:19
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