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First Application of Artificial Neural Networks to Estimate 21st Century Greenland Ice Sheet Surface Melt

Raymond Sellevold, Miren Vizcaíno

2021Geophysical Research Letters27 citationsDOIOpen Access PDF

Abstract

Abstract Future Greenland ice sheet (GrIS) melt projections are limited by the lack of explicit melt calculations within most global climate models and the high computational cost of dynamical downscaling with regional climate models (RCMs). Here, we train artificial neural networks (ANNs) to obtain relationships between quantities consistently available from global climate model simulations and annually integrated GrIS surface melt. To this end, we train the ANNs with model output from the Community Earth System Model 2.1 (CESM2), which features an interactive surface melt calculation based on a downscaled surface energy balance. We find that ANNs compare well with an independent CESM2 simulation and RCM simulations forced by a CMIP6 subset. The ANNs estimate a melt increase for 2,081–2,100 ranging from 414 275 Gt (SSP1‐2.6) to 1,378 555 Gt (SSP5‐8.5) for the full CMIP6 suite. The primary source of uncertainty throughout the 21st century is the spread of climate model sensitivity.

Topics & Concepts

Greenland ice sheetDownscalingClimatologyClimate modelIce sheetArtificial neural networkGeologySuiteEnvironmental scienceIce-sheet modelAntarctic ice sheetClimate changeMeteorologyCryosphereComputer scienceIce shelfSea iceOceanographyGeographyMachine learningArchaeologyCryospheric studies and observationsClimate variability and modelsClimate change and permafrost
First Application of Artificial Neural Networks to Estimate 21st Century Greenland Ice Sheet Surface Melt | Litcius