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Paper

GAIA-Chem: A Framework for Global AI-Accelerated Atmospheric Chemistry Modelling

Tuesday, June 4, 2024
15:00
-
15:30
CEST
Climate, Weather and Earth Sciences
Climate, Weather and Earth Sciences
Climate, Weather and Earth Sciences
Chemistry and Materials
Chemistry and Materials
Chemistry and Materials
Computer Science and Applied Mathematics
Computer Science and Applied Mathematics
Computer Science and Applied Mathematics
Humanities and Social Sciences
Humanities and Social Sciences
Humanities and Social Sciences
Engineering
Engineering
Engineering
Life Sciences
Life Sciences
Life Sciences
Physics
Physics
Physics

Presenter

Jeff
Adie
-
Newcastle University

Jeff Adie is a Principal Solutions Architect at the NVIDIA AI Technology Center (NVAITC), Singapore, where he leads the center's collaborative research activities into applications of AI for climate and weather. He has over 30 years of experience in the fields of computational fluid dynamics, numerical weather prediction, ocean modelling and operational forecasting workflows. Jeff holds a post-graduate diploma in Computer Science from Auckland University, New Zealand, and is currently a doctoral candidate at Newcastle University, U.K., where he is undertaking a PhD in atmospheric chemistry modelling.

Description

The inclusion of atmospheric chemistry in global climate projections is currently limited by the high computational expense of modelling the many reactions of chemical species. Recent rapid advancements in artificial intelligence (AI) provide us with new tools for reducing the cost of numerical simulations. The application of these tools to atmospheric chemistry is still somewhat nascent and multiple challenges remain due to the reaction complexities and the high number of chemical species. In this work, we present GAIA-Chem, a global AI-accelerated atmospheric chemistry framework for large-scale, multi-fidelity, data-driven chemical simulations; GAIA-Chem provides an environment for testing different approaches to data-driven species simulation. GAIA-Chem includes curated training and validation datasets, support for offline and online training schemes, and comprehensive metrics for model intercomparison. We use GAIA-Chem to evaluate two DNN models; a standard autoencoder scheme based on convolutional LSTM nodes, and a transformer-based model. We show computational speedups of up to 1,280 times over numerical methods for the chemical solver and a 2.8 times reduction in RMSE when compared to previous works.

Authors