Climate Intervention Analysis using AI Model Guided by Statistical Physics Principles
Soo Kyung Kim, Kalai Ramea, Salva R\"uhling Cachay, Haruki Hirasawa,, Subhashis Hazarika, Dipti Hingmire, Peetak Mitra, Philip J. Rasch, Hansi A., Singh

TL;DR
This paper introduces AiBEDO, an AI model guided by statistical physics principles, specifically the Fluctuation-Dissipation Theorem, to efficiently estimate climate system responses to interventions using large Earth System Model datasets.
Contribution
The study presents a novel AI framework that leverages FDT to rapidly predict climate responses, reducing computational costs and enabling targeted climate intervention analysis.
Findings
AiBEDO accurately predicts climate responses to perturbations.
The model accelerates climate intervention scenario exploration.
Application to Marine Cloud Brightening demonstrates practical utility.
Abstract
The availability of training data remains a significant obstacle for the implementation of machine learning in scientific applications. In particular, estimating how a system might respond to external forcings or perturbations requires specialized labeled data or targeted simulations, which may be computationally intensive to generate at scale. In this study, we propose a novel solution to this challenge by utilizing a principle from statistical physics known as the Fluctuation-Dissipation Theorem (FDT) to discover knowledge using an AI model that can rapidly produce scenarios for different external forcings. By leveraging FDT, we are able to extract information encoded in a large dataset produced by Earth System Models, which includes 8250 years of internal climate fluctuations, to estimate the climate system's response to forcings. Our model, AiBEDO, is capable of capturing the…
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Taxonomy
TopicsClimate variability and models · Meteorological Phenomena and Simulations
