Publication | Open Access
Spatiotemporal Model Based on Deep Learning for ENSO Forecasts
27
Citations
38
References
2021
Year
Forecasting MethodologyEngineeringSpatiotemporal Data FusionWeather ForecastingClimate ModelingRecurrent Neural NetworkEarth ScienceSocial SciencesEnso PredictionNumerical Weather PredictionEvent UnderstandingData ScienceEl NiñoClimate ForecastingHydrometeorologySpatiotemporal DiagnosticsGeographyForecastingDeep LearningClimatologySouthern OscillationHigh-resolution Modeling
El Niño and Southern Oscillation (ENSO) is closely related to a series of regional extreme climates, so robust long-term forecasting is of great significance for reducing economic losses caused by natural disasters. Here, we regard ENSO prediction as an unsupervised spatiotemporal prediction problem, and design a deep learning model called Dense Convolution-Long Short-Term Memory (DC-LSTM). For a more sufficient training model, we will also add historical simulation data to the training set. The experimental results show that DC-LSTM is more suitable for the prediction of a large region and a single factor. During the 1994–2010 verification period, the all-season correlation skill of the Nino3.4 index of the DC-LSTM is higher than that of the current dynamic model and regression neural network, and it can provide effective forecasts for lead times of up to 20 months. Therefore, DC-LSTM can be used as a powerful tool for predicting ENSO events.
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