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Analyzing El Ni?o–Southern Oscillation Predictability Using Long‐Short‐Term‐Memory Models

机译:使用长期记忆模型分析厄尔尼诺现象-南方涛动的可预测性

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El Ni?o–Southern Oscillation (ENSO) can have global impacts, affecting daily temperature and precipitation, and extreme weather, such as hurricanes and tornadoes. Because of its importance, scientists strive to understand the processes that govern ENSO and develop models to predict its evolution and changes in variability. Here long‐short‐term‐memory models (LSTMs) were compared to linear regression models (LR) to explore the benefits of simple, deep neural networks in predicting ENSO, in addition to quantifying the relative importance of the sources of ENSO's predictability. The models use central Pacific sea surface temperatures (SST), equatorial Pacific warm water volumes, and western Pacific zonal winds as predictors, individually and in combinations, on monthly and daily resolutions, from 1‐ to 11‐month leads. By using these predictors, many characteristic time scales are encompassed—from days‐to‐weeks in the atmosphere, to months‐to‐seasons in the coupled system, and interseasonal‐to‐interannual in the subsurface ocean. Results show, with monthly input, predictions from LSTM were like predictions from LR. However, with daily SST at longer leads, LSTM exhibited some advantage over LR in terms of the correlation coefficient. This suggests that daily SST may contain some nonlinear element that improves LSTM predictability compared to LR. In addition, this suggests that more information, such as gridded data and additional variables, would likely improve predictability using LSTM, but results would be more difficult to interpret. Overall, LSTM may be appealing because once the computationally expensive training of LSTM is complete, the predictions employing the trained model can be relatively cheap to perform thereafter.
机译:厄尔尼诺-南方涛动(ENSO)可能对全球产生影响,影响每天的温度和降水以及极端天气,例如飓风和龙卷风。由于其重要性,科学家们努力了解控制ENSO的过程,并开发模型以预测ENSO的演变和变异性。在这里,将长期短期记忆模型(LSTM)与线性回归模型(LR)进行了比较,以探索简单的深度神经网络在预测ENSO中的好处,此外还量化了ENSO可预测性来源的相对重要性。这些模型分别以组合的形式使用太平洋中部海表温度(SST),赤道太平洋暖水量和西太平洋纬向风作为预报因子,按月和日分辨率从1到11个月的潜在时间。通过使用这些预测变量,可以涵盖许多特征性的时标-从大气中的几天到几周,到耦合系统中的几个月到季节,以及地下海洋的季节间到年际。结果表明,按月输入,LSTM的预测与LR的预测相似。但是,由于每天SST的引线较长,因此在相关系数方面,LSTM优于LR。这表明,与LR相比,每日SST可能包含一些非线性元素,这些元素可以提高LSTM的可预测性。此外,这表明更多信息(例如网格数据和其他变量)可能会使用LSTM改善可预测性,但结果将更难以解释。总体而言,LSTM可能具有吸引力,因为一旦完成LSTM的计算昂贵的训练,采用训练后的模型进行的预测就可以相对便宜地执行。

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