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首页> 外文期刊>Nature geoscience >Artificial intelligence reconstructs missing climate information
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Artificial intelligence reconstructs missing climate information

机译:人工智能重建缺少气候信息

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Historical temperature measurements are the basis of global climate datasets like HadCRUT4. This dataset contains many missing values, particularly for periods before the mid-twentieth century, although recent years are also incomplete. Here we demonstrate that artificial intelligence can skilfully fill these observational gaps when combined with numerical climate model data. We show that recently developed image inpainting techniques perform accurate monthly reconstructions via transfer learning using either 20CR (Twentieth-Century Reanalysis) or the CMIP5 (Coupled Model Intercomparison Project Phase 5) experiments. The resulting global annual mean temperature time series exhibit high Pearson correlation coefficients (>= 0.9941) and low root mean squared errors (<= 0.0547 degrees C) as compared with the original data. These techniques also provide advantages relative to state-of-the-art kriging interpolation and principal component analysis-based infilling. When applied to HadCRUT4, our method restores a missing spatial pattern of the documented El Nino from July 1877. With respect to the global mean temperature time series, a HadCRUT4 reconstruction by our method points to a cooler nineteenth century, a less apparent hiatus in the twenty-first century, an even warmer 2016 being the warmest year on record and a stronger global trend between 1850 and 2018 relative to previous estimates. We propose image inpainting as an approach to reconstruct missing climate information and thereby reduce uncertainties and biases in climate records.
机译:历史温度测量是哈克鲁特4这样的全球气候数据集的基础。此数据集包含许多缺少的值,特别是在二十世纪中期之前的时期,尽管近年来也不完整。在这里,我们证明人工智能可以在与数值气候模型数据结合时巧妙地填充这些观察间隙。我们表明,最近开发的图像批量技术通过使用20cc(二十世纪重新分析)或CMIP5(耦合模型离法项目5)实验来通过传输学习进行准确的每月重建。与原始数据相比,由此产生的全局年平均温度时间序列表现出高Pearson相关系数(> = 0.9941)和低根均方误差(<= 0.0547摄氏度)。这些技术还提供了相对于最先进的Kriging插值和基于主成分分析的infilling的优点。当应用于Hadcrut4时,我们的方法从1877年7月从7月7日恢复了记录的El Nino的缺失空间模式。关于全球平均温度时间序列,我们的方法的Hadcrut4重建指向十九世纪的冷却器,这是一种不太明显的中断二十一世纪,2016年普及普及最热烈的年度,而在1850年至2018年间相对于以前的估计是最高的全球趋势。我们提出了一种重建缺失气候信息的方法,从而减少气候记录中的不确定性和偏见。

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