Uncertainty-enabled machine learning for emulation of regional sea-level change caused by the Antarctic Ice Sheet
- URL: http://arxiv.org/abs/2406.17729v1
- Date: Fri, 21 Jun 2024 18:27:09 GMT
- Title: Uncertainty-enabled machine learning for emulation of regional sea-level change caused by the Antarctic Ice Sheet
- Authors: Myungsoo Yoo, Giri Gopalan, Matthew J. Hoffman, Sophie Coulson, Holly Kyeore Han, Christopher K. Wikle, Trevor Hillebrand,
- Abstract summary: We build neural-network emulators of sea-level change at 27 coastal locations.
We show that the neural-network emulators have an accuracy that is competitive with baseline machine learning emulators.
- Score: 0.8130739369606821
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Projecting sea-level change in various climate-change scenarios typically involves running forward simulations of the Earth's gravitational, rotational and deformational (GRD) response to ice mass change, which requires high computational cost and time. Here we build neural-network emulators of sea-level change at 27 coastal locations, due to the GRD effects associated with future Antarctic Ice Sheet mass change over the 21st century. The emulators are based on datasets produced using a numerical solver for the static sea-level equation and published ISMIP6-2100 ice-sheet model simulations referenced in the IPCC AR6 report. We show that the neural-network emulators have an accuracy that is competitive with baseline machine learning emulators. In order to quantify uncertainty, we derive well-calibrated prediction intervals for simulated sea-level change via a linear regression postprocessing technique that uses (nonlinear) machine learning model outputs, a technique that has previously been applied to numerical climate models. We also demonstrate substantial gains in computational efficiency: a feedforward neural-network emulator exhibits on the order of 100 times speedup in comparison to the numerical sea-level equation solver that is used for training.
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