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A novel method to improve temperature simulations of general circulation models based on ensemble empirical mode decomposition and its application to multi-model ensembles

机译:基于集成经验模态分解的通用循环模型温度模拟新方法及其在多模型集合中的应用

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摘要

A novel method based on the ensemble empirical mode decomposition (EEMD) method was developed to improve model performance. This method was evaluated by applying it to global surface air temperatures, which were simulated by eight general circulation models from the Coupled Model Intercomparison Project Phase 5 (CMIP5). The temperature simulations of the eight models were separated into their different components by EEMD. The model's performance improved after the first high-frequency component was removed from the original simulations by EEMD for each model, on both the global and continental scale. Moreover, EEMD was more effective in improving the model's performance compared to the wavelet transform method. The multi-model ensembles (MMEs) were calculated based on the EEMD-improved model simulations using the Average Ensemble Mean, Multiple Linear Regression, Singular Value Decomposition and Bayesian Model Averaging methods. The results showed that the MME forecasts performed better when the calculations were based on the EEMD-improved simulations as opposed to the original simulations on both the global and continental scale. Therefore, the results of the MME were further improved by using the EEMD-improved model simulations. This new method provides a simple way to improve model performance and can be easily applied to further improve MME simulations.
机译:提出了一种基于整体经验模态分解(EEMD)方法的新方法来提高模型性能。通过将该方法应用于全球地面空气温度进行了评估,该温度由耦合模型比较项目第5阶段(CMIP5)的八个通用循环模型进行了模拟。 EEMD将八个模型的温度模拟分为不同的组件。在EEMD针对原始模型从全球和大陆范围内删除了第一个高频分量之后,模型的性能得到了改善。此外,与小波变换方法相比,EEMD在改善模型性能方面更为有效。多模型合奏(MME)是基于EEMD改进的模型模拟而计算的,其中使用了平均合奏平均数,多元线性回归,奇异值分解和贝叶斯模型平均法。结果表明,当基于EEMD改进的模拟进行计算时,与原始的全球和大陆模拟相比,MME预测的效果更好。因此,通过使用EEMD改进的模型仿真可以进一步改善MME的结果。这种新方法提供了一种改善模型性能的简单方法,并且可以轻松地应用于进一步改善MME仿真。

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