Using Artificial Intelligence to aid Scientific Discovery of Climate Tipping Points

Conference Paper (2022)
Authors

Jennifer Sleeman (Johns Hopkins University)

David Chung (Johns Hopkins University)

Chace Ashcraft (Johns Hopkins University)

Jay Brett (Johns Hopkins University)

Anand Gnanadesikan (Johns Hopkins University)

Yannis Kevrekidis (Johns Hopkins University)

Marisa Hughes (Johns Hopkins University)

Thomas Haine (Johns Hopkins University)

Marie Aude Pradal (Johns Hopkins University)

R. Gelderloos (Johns Hopkins University)

Caroline Tang (Duke University)

Anshu Saksena (Johns Hopkins University)

Larry White (Johns Hopkins University)

Affiliation
External organisation
More Info
expand_more
Publication Year
2022
Language
English
Affiliation
External organisation

Abstract

We propose a hybrid Artificial Intelligence (AI) climate modeling approach that enables climate modelers in scientific discovery using a climate-targeted simulation methodology based on a novel combination of deep neural networks and mathematical methods for modeling dynamical systems. The simulations are grounded by a neuro-symbolic language that both enables question answering of what is learned by the AI methods and provides a means of explainability. We describe how this methodology can be applied to the discovery of climate tipping points and, in particular, the collapse of the Atlantic Meridional Overturning Circulation (AMOC). We show how this methodology is able to predict AMOC collapse with a high degree of accuracy using a surrogate climate model for ocean interaction. We also show preliminary results of neuro-symbolic method performance when translating between natural language questions and symbolically learned representations. Our AI methodology shows promising early results, potentially enabling faster climate tipping point related research that would otherwise be computationally infeasible.

No files available

Metadata only record. There are no files for this record.