共 2 条
Deep-Learning-Based Gridded Downscaling of Surface Meteorological Variables in Complex Terrain. Part I: Daily Maximum and Minimum 2-m Temperature
被引:50
|作者:
Sha, Yingkai
[1
]
Gagne, David John, II
[2
]
West, Gregory
[3
]
Stull, Roland
[1
]
机构:
[1] Univ British Columbia, Dept Earth Ocean & Atmospher Sci, Vancouver, BC, Canada
[2] Natl Ctr Atmospher Res, POB 3000, Boulder, CO 80307 USA
[3] BC Hydro & Power Author, Burnaby, BC, Canada
基金:
加拿大自然科学与工程研究理事会;
美国国家科学基金会;
关键词:
Error analysis;
Interpolation schemes;
Model evaluation/performance;
Model output statistics;
Deep learning;
Neural networks;
CLIMATE-CHANGE;
AIR-TEMPERATURE;
MODEL OUTPUT;
IMPACTS;
PRECIPITATION;
UNCERTAINTY;
MOUNTAIN;
D O I:
10.1175/JAMC-D-20-0057.1
中图分类号:
P4 [大气科学(气象学)];
学科分类号:
0706 ;
070601 ;
摘要:
Many statistical downscaling methods require observational inputs and expert knowledge and thus cannot be generalized well across different regions. Convolutional neural networks (CNNs) are deep-learning models that have generalization abilities for various applications. In this research, we modify UNet, a semantic-segmentation CNN, and apply it to the downscaling of daily maximum/minimum 2-m temperature (TMAX/TMIN) over the western continental United States from 0.258 to 4-km grid spacings. We select high-resolution (HR) elevation, low-resolution (LR) elevation, and LR TMAX/TMIN as inputs; train UNet using Parameter-Elevation Regressions on Independent Slopes Model (PRISM) data over the south- and central-western United States from 2015 to 2018; and test it independently over both the training domains and the northwestern United States from 2018 to 2019. We found that the original UNet cannot generate enough fine-grained spatial details when transferred to the new northwestern U.S. domain. In response, we modified the original UNet by assigning an extra HR elevation output branch/loss function and training the modified UNet to reproduce both the supervised HR TMAX/TMIN and the unsupervised HR elevation. This improvement is named "UNet-Autoencoder (AE)." UNet-AE supports semisupervised model fine-tuning for unseen domains and showed better gridpoint-level performance with more than 10% mean absolute error (MAE) reduction relative to the original UNet. On the basis of its performance relative to the 4-km PRISM, UNet-AE is a good option to provide generalizable downscaling for regions that are underrepresented by observations.
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页码:2057 / 2073
页数:17
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