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Main Authors: Liu, Jun, Zhou, Tao, Li, Jiarui, Zhong, Xiaohui, Zhang, Peng, Feng, Jie, Chen, Lei, Li, Hao
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.23794
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author Liu, Jun
Zhou, Tao
Li, Jiarui
Zhong, Xiaohui
Zhang, Peng
Feng, Jie
Chen, Lei
Li, Hao
author_facet Liu, Jun
Zhou, Tao
Li, Jiarui
Zhong, Xiaohui
Zhang, Peng
Feng, Jie
Chen, Lei
Li, Hao
contents Tropical cyclones (TCs) are highly destructive and inherently uncertain weather systems. Ensemble forecasting helps quantify these uncertainties, yet traditional systems are constrained by high computational costs and limited capability to fully represent atmospheric nonlinearity. FuXi-ENS introduces a learnable perturbation scheme for ensemble generation, representing a novel AI-based forecasting paradigm. Here, we systematically compare FuXi-ENS with ECMWF-ENS using all 90 global TCs in 2018, examining their performance in TC-related physical variables, track and intensity forecasts, and the associated dynamical and thermodynamical fields. FuXi-ENS demonstrates clear advantages in predicting TC-related physical variables, and achieves more accurate track forecasts with reduced ensemble spread, though it still underestimates intensity relative to observations. Further dynamical and thermodynamical analyses reveal that FuXi-ENS better captures large-scale circulation, with moisture turbulent energy more tightly concentrated around the TC warm core, whereas ECMWF-ENS exhibits a more dispersed distribution. These findings highlight the potential of learnable perturbations to improve TC forecasting skill and provide valuable insights for advancing AI-based ensemble prediction of extreme weather events that have significant societal impacts.
format Preprint
id arxiv_https___arxiv_org_abs_2510_23794
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Revealing the Potential of Learnable Perturbation Ensemble Forecast Model for Tropical Cyclone Prediction
Liu, Jun
Zhou, Tao
Li, Jiarui
Zhong, Xiaohui
Zhang, Peng
Feng, Jie
Chen, Lei
Li, Hao
Machine Learning
Tropical cyclones (TCs) are highly destructive and inherently uncertain weather systems. Ensemble forecasting helps quantify these uncertainties, yet traditional systems are constrained by high computational costs and limited capability to fully represent atmospheric nonlinearity. FuXi-ENS introduces a learnable perturbation scheme for ensemble generation, representing a novel AI-based forecasting paradigm. Here, we systematically compare FuXi-ENS with ECMWF-ENS using all 90 global TCs in 2018, examining their performance in TC-related physical variables, track and intensity forecasts, and the associated dynamical and thermodynamical fields. FuXi-ENS demonstrates clear advantages in predicting TC-related physical variables, and achieves more accurate track forecasts with reduced ensemble spread, though it still underestimates intensity relative to observations. Further dynamical and thermodynamical analyses reveal that FuXi-ENS better captures large-scale circulation, with moisture turbulent energy more tightly concentrated around the TC warm core, whereas ECMWF-ENS exhibits a more dispersed distribution. These findings highlight the potential of learnable perturbations to improve TC forecasting skill and provide valuable insights for advancing AI-based ensemble prediction of extreme weather events that have significant societal impacts.
title Revealing the Potential of Learnable Perturbation Ensemble Forecast Model for Tropical Cyclone Prediction
topic Machine Learning
url https://arxiv.org/abs/2510.23794