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A Bayesian Machine Learning Algorithm for Predicting ENSO Using Short Observational Time Series

Atmospheric and Oceanic Physics 2021-10-04 v2

Abstract

A simple and efficient Bayesian machine learning (BML) training and forecasting algorithm, which exploits only a 20-year short observational time series and an approximate prior model, is developed to predict the Ni\~no 3 sea surface temperature (SST) index. The BML forecast significantly outperforms model-based ensemble predictions and standard machine learning forecasts. Even with a simple feedforward neural network, the BML forecast is skillful for 9.5 months. Remarkably, the BML forecast overcomes the spring predictability barrier to a large extent: the forecast starting from spring remains skillful for nearly 10 months. The BML algorithm can also effectively utilize multiscale features: the BML forecast of SST using SST, thermocline, and wind burst improves on the BML forecast using just SST by at least 2 months. Finally, the BML algorithm also reduces the forecast uncertainty of neural networks and is robust to input perturbations.

Keywords

Cite

@article{arxiv.2104.01435,
  title  = {A Bayesian Machine Learning Algorithm for Predicting ENSO Using Short Observational Time Series},
  author = {Nan Chen and Faheem Gilani and John Harlim},
  journal= {arXiv preprint arXiv:2104.01435},
  year   = {2021}
}

Comments

17 pages, 8 figures

R2 v1 2026-06-24T00:49:41.856Z