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ResoNet: Robust and Explainable ENSO Forecasts with Hybrid Convolution and Transformer Networks

Authors :
Lyu, Pumeng
Tang, Tao
Ling, Fenghua
Luo, Jing-Jia
Boers, Niklas
Ouyang, Wanli
Bai, Lei
Publication Year :
2023

Abstract

Recent studies have shown that deep learning (DL) models can skillfully predict the El Ni\~no-Southern Oscillation (ENSO) forecasts over 1.5 years ahead. However, concerns regarding the reliability of predictions made by DL methods persist, including potential overfitting issues and lack of interpretability. Here, we propose ResoNet, a DL model that combines convolutional neural network (CNN) and Transformer architectures. This hybrid architecture design enables our model to adequately capture local SSTA as well as long-range inter-basin interactions across oceans. We show that ResoNet can robustly predict ESNO at lead times between 19 and 26 months, thus outperforming existing approaches in terms of the forecast horizon. According to an explainability method applied to ResoNet predictions of El Ni\~no and La Ni\~na events from 1- to 18-month lead, we find that it predicts the Ni\~no3.4 index based on multiple physically reasonable mechanisms, such as the Recharge Oscillator concept, Seasonal Footprint Mechanism, and Indian Ocean capacitor effect. Moreover, we demonstrate that for the first time, the asymmetry between El Ni\~no and La Ni\~na development can be captured by ResoNet. Our results could help alleviate skepticism about applying DL models for ENSO prediction and encourage more attempts to discover and predict climate phenomena using AI methods.<br />Comment: 32 pages, 5 main figures and 12 supplementary figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.10429
Document Type :
Working Paper