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Towards Long-Range ENSO Prediction with an Explainable Deep Learning Model

25 March 2025
Qi Chen
Yinghao Cui
Guobin Hong
Karumuri Ashok
Yuchun Pu
Xiaogu Zheng
Xuanze Zhang
Wei Zhong
Peng Zhan
Zehua Wang
    AI4Cl
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Abstract

El Niño-Southern Oscillation (ENSO) is a prominent mode of interannual climate variability with far-reaching global impacts. Its evolution is governed by intricate air-sea interactions, posing significant challenges for long-term prediction. In this study, we introduce CTEFNet, a multivariate deep learning model that synergizes convolutional neural networks and transformers to enhance ENSO forecasting. By integrating multiple oceanic and atmospheric predictors, CTEFNet extends the effective forecast lead time to 20 months while mitigating the impact of the spring predictability barrier, outperforming both dynamical models and state-of-the-art deep learning approaches. Furthermore, CTEFNet offers physically meaningful and statistically significant insights through gradient-based sensitivity analysis, revealing the key precursor signals that govern ENSO dynamics, which align with well-established theories and reveal new insights about inter-basin interactions among the Pacific, Atlantic, and Indian Oceans. The CTEFNet's superior predictive skill and interpretable sensitivity assessments underscore its potential for advancing climate prediction. Our findings highlight the importance of multivariate coupling in ENSO evolution and demonstrate the promise of deep learning in capturing complex climate dynamics with enhanced interpretability.

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@article{chen2025_2503.19502,
  title={ Towards Long-Range ENSO Prediction with an Explainable Deep Learning Model },
  author={ Qi Chen and Yinghao Cui and Guobin Hong and Karumuri Ashok and Yuchun Pu and Xiaogu Zheng and Xuanze Zhang and Wei Zhong and Peng Zhan and Zhonglei Wang },
  journal={arXiv preprint arXiv:2503.19502},
  year={ 2025 }
}
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