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Application of Entropy Ensemble Filter in Neural Network Forecasts of Tropical Pacific Sea Surface Temperatures

机译:熵集合滤波器在热带太平洋海表温度神经网络预测中的应用

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摘要

Recently, the Entropy Ensemble Filter (EEF) method was proposed to mitigate the computational cost of the Bootstrap AGGregatING (bagging) method. This method uses the most informative training data sets in the model ensemble rather than all ensemble members created by the conventional bagging. In this study, we evaluate, for the first time, the application of the EEF method in Neural Network (NN) modeling of El Nino-southern oscillation. Specifically, we forecast the first five principal components (PCs) of sea surface temperature monthly anomaly fields over tropical Pacific, at different lead times (from 3 to 15 months, with a three-month increment) for the period 1979–2017. We apply the EEF method in a multiple-linear regression (MLR) model and two NN models, one using Bayesian regularization and one Levenberg-Marquardt algorithm for training, and evaluate their performance and computational efficiency relative to the same models with conventional bagging. All models perform equally well at the lead time of 3 and 6 months, while at higher lead times, the MLR model’s skill deteriorates faster than the nonlinear models. The neural network models with both bagging methods produce equally successful forecasts with the same computational efficiency. It remains to be shown whether this finding is sensitive to the dataset size.
机译:最近,提出了熵集合滤波器(EEF)方法来减轻Bootstrap AGGregating(装袋)方法的计算成本。此方法使用模型集合中信息最丰富的训练数据集,而不是使用常规装袋创建的所有集合成员。在这项研究中,我们首次评估了EEF方法在El Nino-Southern振荡的神经网络(NN)建模中的应用。具体来说,我们预测了1979-2017年期间热带太平洋海表温度月度异常场的前五个主要成分(PC),处于不同的交货期(从3到15个月,有3个月递增)。我们将EEF方法应用于多线性回归(MLR)模型和两个NN模型,其中一个使用贝叶斯正则化算法和一个Levenberg-Marquardt算法进行训练,并相对于使用常规装袋的相同模型评估其性能和计算效率。所有模型在3个月和6个月的交付周期中均表现良好,而在交付周期较长时,MLR模型的技能退化速度要比非线性模型快。两种装袋方法的神经网络模型以相同的计算效率产生同样成功的预测。该发现是否对数据集大小敏感尚待证明。

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