Physically-Informed Super-Resolution Downscaling of Antarctic Surface Melt

被引:0
|
作者
Husman, Sophie de Roda [1 ]
Hu, Zhongyang [2 ]
van Tiggelen, Maurice [2 ]
Dell, Rebecca [3 ]
Bolibar, Jordi [1 ,4 ]
Lhermitte, Stef [1 ,5 ]
Wouters, Bert [1 ]
Munneke, Peter Kuipers [2 ]
机构
[1] Delft Univ Technol, Dept Geosci & Remote Sensing, Delft, Netherlands
[2] Univ Utrecht, Inst Marine & Atmospher Res Utrecht, Utrecht, Netherlands
[3] Univ Cambridge, Scott Polar Res Inst SPRI, Cambridge, England
[4] Univ Grenoble Alpes, Inst Geosci Environm, CNRS, IRD,G INP, Grenoble, France
[5] Katholieke Univ Leuven, Dept Earth & Environm Sci, Leuven, Belgium
关键词
cryosphere; ice shelves; super-resolution; surface melt; regional climate model; deep learning; GREENLAND ICE-SHEET; CLIMATE MODEL; MASS-BALANCE; SPATIAL-RESOLUTION; SHELF; PENINSULA; ELEVATION; MELTWATER; STATION; IMPACT;
D O I
10.1029/2023MS004212
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
Because Antarctic surface melt is mostly driven by local processes, its simulation necessitates high-resolution regional climate models (RCMs). However, the current horizontal resolution of RCMs (approximate to 25-30 km) is inadequate for capturing small-scale melt processes. To address this limitation, we present SUPREME (SUPer-REsolution-based Melt Estimation over Antarctica), a deep learning method to downscale surface melt to 5.5 km resolution using a physically-informed super-resolution model. The physical information integrated into the model originates from observations tied to surface melt, specifically remote sensing-derived albedo and elevation. These remote sensing data, in addition to a Regional Atmospheric Climate Model (RACMO) run at 27 km resolution, account for the diverse drivers of surface melt across Antarctica, facilitating effective generalization beyond the training region of the Antarctic Peninsula. A comparison of SUPREME with a dynamically downscaled RACMO run at 5.5 km over the Antarctic Peninsula shows high accuracy, with average yearly RMSE and bias of 5.5 mm w.e. yr-1 and 4.5 mm w.e. yr-1, respectively. Validation at five automatic weather stations reveals SUPREME's marked improvement with substantially lower average RMSE (81 mm w.e.) compared to RACMO 27 km (129 mm w.e.). Beyond the training region, SUPREME aligns more closely with remote sensing products associated with surface melt than super-resolution models lacking physical constraints. While further validation of SUPREME is needed, our study highlights the potential of super-resolution techniques with physical constraints for high-resolution surface melt monitoring in Antarctica, providing insights into the impacts of localized melting on processes affecting ice shelf integrity such as hydrofracturing. To improve surface melt monitoring in Antarctica, high-resolution climate models are essential. Existing models, like the Regional Atmospheric Climate Model (RACMO), do not have a fine enough spatial resolution to capture small-scale melt processes. To overcome this, we introduce SUPREME (SUPer-REsolution-based Melt Estimation over Antarctica), a method that refines surface melt data to a higher resolution of 5.5 km using an advanced super-resolution model. We enhance this model with physical information derived from observations directly related to surface melt, specifically using albedo and elevation data from remote sensing. By incorporating these observations, along with RACMO data at 27 km resolution, we account for the various triggers of surface melt across Antarctica. SUPREME accurately predicts high-resolution surface melt beyond the training region of the Antarctic Peninsula, showing promising results compared to existing melt observations. Further validation is needed, but this approach, combining super-resolution techniques and remote sensing data, holds potential for accurate surface melt monitoring in Antarctica. This may advance our understanding of the impacts of localized features on processes affecting ice shelf integrity such as meltwater-induced hydrofracturing. Our method downscales Antarctic surface melt from a regional climate model, employing a physically-informed super-resolution architecture The super-resolution model relies on physical information derived from remote sensing data, specifically surface albedo and elevation Incorporating physical information boosts model generalization, enabling accurate high-resolution surface melt beyond the training region
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页数:29
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