Probabilistic Forecasting of El Niño Using Neural Network Models

Publication date

2020-03-13

Authors

Petersik, Paul Johannes
Dijkstra, H. A.ISNI 0000000023267948

Editors

Advisors

Supervisors

Document Type

Article
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License

taverne

Abstract

We apply Gaussian density neural network and quantile regression neural network ensembles to predict the El Niño–Southern Oscillation. Both models are able to assess the predictive uncertainty of the forecast by predicting a Gaussian distribution and the quantiles of the forecasts, respectively. This direct estimation of the predictive uncertainty for each given forecast is a novel feature in the prediction of the El Niño–Southern Oscillation by statistical models. The predicted mean and median, respectively, show a high-correlation skill for long lead times (r=0.5, 12 months) for the 1963–2017 evaluation period. For the 1982–2017 evaluation period, the probabilistic forecasts by the Gaussian density neural network can better estimate the predictive uncertainty than a standard method to assess the predictive uncertainty of statistical models.

Keywords

El Niño, machine learning, neural networks, prediction, probabilistic forecasting, Taverne, Geophysics, General Earth and Planetary Sciences

Citation

Petersik, P J & Dijkstra, H A 2020, 'Probabilistic Forecasting of El Niño Using Neural Network Models', Geophysical Research Letters, vol. 47, no. 6, e2019GL086423. https://doi.org/10.1029/2019GL086423