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Main Authors: Wei, Jiawen, Bora, Aniruddha, Oommen, Vivek, Dong, Chenyu, Yang, Juntao, Adie, Jeff, Chen, Chen, See, Simon, Karniadakis, George, Mengaldo, Gianmarco
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.08163
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author Wei, Jiawen
Bora, Aniruddha
Oommen, Vivek
Dong, Chenyu
Yang, Juntao
Adie, Jeff
Chen, Chen
See, Simon
Karniadakis, George
Mengaldo, Gianmarco
author_facet Wei, Jiawen
Bora, Aniruddha
Oommen, Vivek
Dong, Chenyu
Yang, Juntao
Adie, Jeff
Chen, Chen
See, Simon
Karniadakis, George
Mengaldo, Gianmarco
contents Extreme weather events are increasing in frequency and intensity due to climate change. This, in turn, is exacting a significant toll in communities worldwide. While prediction skills are increasing with advances in numerical weather prediction and artificial intelligence tools, extreme weather still present challenges. More specifically, identifying the precursors of such extreme weather events and how these precursors may evolve under climate change remain unclear. In this paper, we propose to use post-hoc interpretability methods to construct relevance weather maps that show the key extreme-weather precursors identified by deep learning models. We then compare this machine view with existing domain knowledge to understand whether deep learning models identified patterns in data that may enrich our understanding of extreme-weather precursors. We finally bin these relevant maps into different multi-year time periods to understand the role that climate change is having on these precursors. The experiments are carried out on Indochina heatwaves, but the methodology can be readily extended to other extreme weather events worldwide.
format Preprint
id arxiv_https___arxiv_org_abs_2503_08163
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle XAI4Extremes: An interpretable machine learning framework for understanding extreme-weather precursors under climate change
Wei, Jiawen
Bora, Aniruddha
Oommen, Vivek
Dong, Chenyu
Yang, Juntao
Adie, Jeff
Chen, Chen
See, Simon
Karniadakis, George
Mengaldo, Gianmarco
Machine Learning
Artificial Intelligence
Computational Engineering, Finance, and Science
Extreme weather events are increasing in frequency and intensity due to climate change. This, in turn, is exacting a significant toll in communities worldwide. While prediction skills are increasing with advances in numerical weather prediction and artificial intelligence tools, extreme weather still present challenges. More specifically, identifying the precursors of such extreme weather events and how these precursors may evolve under climate change remain unclear. In this paper, we propose to use post-hoc interpretability methods to construct relevance weather maps that show the key extreme-weather precursors identified by deep learning models. We then compare this machine view with existing domain knowledge to understand whether deep learning models identified patterns in data that may enrich our understanding of extreme-weather precursors. We finally bin these relevant maps into different multi-year time periods to understand the role that climate change is having on these precursors. The experiments are carried out on Indochina heatwaves, but the methodology can be readily extended to other extreme weather events worldwide.
title XAI4Extremes: An interpretable machine learning framework for understanding extreme-weather precursors under climate change
topic Machine Learning
Artificial Intelligence
Computational Engineering, Finance, and Science
url https://arxiv.org/abs/2503.08163