AIAO-PHGEO-PHJun 28, 2024

AI for Extreme Event Modeling and Understanding: Methodologies and Challenges

arXiv:2406.20080v16 citations
Originality Synthesis-oriented
AI Analysis

It addresses the challenge of developing reliable AI for extreme event analysis to enhance disaster readiness and risk reduction, but it is a review paper, so it is incremental in synthesizing existing methodologies.

This paper reviews how AI is being applied to model and predict extreme events such as floods, droughts, wildfires, and heatwaves, highlighting improvements in disaster response and communication through more accurate and transparent models.

In recent years, artificial intelligence (AI) has deeply impacted various fields, including Earth system sciences. Here, AI improved weather forecasting, model emulation, parameter estimation, and the prediction of extreme events. However, the latter comes with specific challenges, such as developing accurate predictors from noisy, heterogeneous and limited annotated data. This paper reviews how AI is being used to analyze extreme events (like floods, droughts, wildfires and heatwaves), highlighting the importance of creating accurate, transparent, and reliable AI models. We discuss the hurdles of dealing with limited data, integrating information in real-time, deploying models, and making them understandable, all crucial for gaining the trust of stakeholders and meeting regulatory needs. We provide an overview of how AI can help identify and explain extreme events more effectively, improving disaster response and communication. We emphasize the need for collaboration across different fields to create AI solutions that are practical, understandable, and trustworthy for analyzing and predicting extreme events. Such collaborative efforts aim to enhance disaster readiness and disaster risk reduction.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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