ML-IAM: Emulating Integrated Assessment Models With Machine Learning
Yen Shin · Haewon McJeon · Changyoon Lee · Eunsu Kim · Junho Myung · Kiwoong Park · Jung-Hun Woo · Min-Young Choi · Bomi Kim · Hyun W. Ka · Alice Oh
Abstract
Integrated Assessment Models (IAMs) are essential for projecting future greenhouse gas (GHG) emissions and energy outputs, but they are computationally expensive and limited by model-specific idiosyncrasies. We present ML-IAM, a machine learning model trained on the AR6 Scenarios Database to emulate IAMs. ML-IAM generates results for new scenarios in seconds, avoids convergence failures, and produces model-agnostic outputs by learning from diverse model families. Among the tested models, XGBoost achieves the best performance with an $R^2$ of 0.98 with the original IAM data. ML-IAM enables rapid exploration of climate scenarios, complementing traditional IAMs with efficient and scalable computation for climate policy analysis.
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