JpGU-AGU Joint Meeting 2020

講演情報

[E] 口頭発表

セッション記号 A (大気水圏科学) » A-OS 海洋科学・海洋環境

[A-OS17] 季節内から十年規模の気候変動と予測可能性

コンビーナ:望月 崇(九州大学 大学院理学研究院)、V Ramaswamy(NOAA GFDL)、森岡 優志(海洋研究開発機構)

[AOS17-10] Seasonal-to-multiyear prediction of ENSO using machine deep learning technique

*Jing-Jia Luo1Fenghua Ling1Yoo-Geun Ham2Jeong-Hwan Kim2 (1.ICAR Institute for Climate and Application Research, NUIST、2.Chonnam National University,South Korea)

キーワード:ENSO, machine learning, seasonal to multi-year climate prediction

Variations in the El Niño/Southern Oscillation (ENSO) are associated with a wide array of regional climate extremes and ecosystem impacts. Robust, long-lead forecasts would therefore be valuable for managing policy responses. But despite decades of effort, forecasting ENSO events at lead times of more than one year remains problematic. Here we show that a statistical forecast model employing a deep-learning approach produces skilful ENSO forecasts for lead times of up to one and a half years. To circumvent the limited amount of observation data, we use transfer learning to train a convolutional neural network (CNN) first on historical simulations and subsequently on reanalysis from 1871 to 1973. During the validation period from 1984 to 2017, the all-season correlation skill of the Nino3.4 index of the CNN model is much higher than those of current state-of-the-art dynamical forecast systems. The CNN model is also better at predicting the detailed zonal distribution of sea surface temperatures, overcoming a weakness of dynamical forecast models. A heat map analysis indicates that the CNN model predicts ENSO events using physically reasonable precursors. The CNN model is thus a powerful tool for both the prediction of ENSO events and for the analysis of their associated complex mechanisms.