Publication
arXiv
Paper

AI Foundation Models for Weather and Climate: Applications, Design and Implementation

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Abstract

Machine learning and deep learning methods have been widely explored in understanding the chaotic behavior of the atmosphere and furthering weather forecasting. There has been increasing interest from technology companies, government institutions, and meteorological agencies in building digital twins of the Earth. Recent approaches using transformers, physics-informed machine learning, and graph neural networks have demonstrated state-of-the-art performance on relatively narrow spatiotemporal scales and specific tasks. With the recent success of generative artificial intelligence (AI) using pre-trained transformers for language modeling and vision with prompt engineering and fine-tuning, we are now moving towards generalizable AI. In particular, we are witnessing the rise of AI foundation models that can perform competitively on multiple domain-specific downstream tasks. Despite this progress, we are still in the nascent stages of a generalizable AI model for global Earth system models, regional climate models, and mesoscale weather models. Here, we review current state-of-the-art AI approaches, primarily from transformer and operator learning literature in the context of meteorology. We provide our perspective on criteria for success towards a family of foundation models for nowcasting, weather, and climate that can perform competitively on multiple downstream tasks such as forecasting, super-resolution, and detection and prediction of hurricanes, atmospheric rivers, wildfires, and other meteorological phenomena across various spatiotemporal scales. In particular, we examine current AI methodologies and contend they have matured enough to design and implement a weather foundation model.