Long-term prediction of El Ni\~no-Southern Oscillation using reservoir computing with data-driven realtime filter

Jinno, Takuya, Mitsui, Takahito, Nakai, Kengo, Saiki, Yoshitaka, Yoneda, Tsuyoshi

arXiv.org Artificial Intelligence 

In recent years, the application of machine learning approaches to time-series forecasting of climate dynamical phenomena has become increasingly active. It is known that applying a band-pass filter to a time-series data is a key to obtaining a high-quality data-driven model. Here, to obtain longer-term predictability of machine learning models, we introduce a new type of band-pass filter. It can be applied to realtime operational prediction workflows since it relies solely on past time series. We combine the filter with reservoir computing, which is a machine-learning technique that employs a data-driven dynamical system. As an application, we predict the multi-year dynamics of the El Ni\~no-Southern Oscillation with the prediction horizon of 24 months using only past time series.

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