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首页> 外文期刊>Journal of Climate >A Multimodel Ensemble Pattern Regression Method to Correct the Tropical Pacific SST Change Patterns under Global Warming
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A Multimodel Ensemble Pattern Regression Method to Correct the Tropical Pacific SST Change Patterns under Global Warming

机译:全球变暖下纠正热带太平洋海表温度变化模式的多模型集合模式回归方法

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This study develops a new observational constraint method, called multimodel ensemble pattern regression (EPR), to correct the projections of regional climate change by the conventional unweighted multimodel mean (MMM). The EPR method first extracts leading modes of historical bias using intermodel EOF analysis, then builds up the linear correlated modes between historical bias and change bias using multivariant linear regression, and finally estimates the common change bias induced by common historical bias. Along with correcting common change bias, the EPR method implicitly removes the intermodel uncertainty in the change projection deriving from the intermodel diversity in background simulation.
机译:这项研究开发了一种新的观测约束方法,称为多模型集成模式回归(EPR),以通过常规的非加权多模型平均值(MMM)校正区域气候变化的预测。 EPR方法首先使用模型间EOF分析提取历史偏差的主导模式,然后使用多元线性回归建立历史偏差和变化偏差之间的线性相关模式,最后估算由共同历史偏差引起的共同变化偏差。除了校正常见的变化偏差外,EPR方法还隐式消除了背景模拟中因模型间多样性而产生的变化投影中的模型间不确定性。

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