Pangeo-Enabled ESM Pattern Scaling (PEEPS): A customizable dataset of emulated Earth System Model output

Ben Kravitz, Abigail C. Snyder
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Abstract

Emulation through pattern scaling is a well-established method of rapidly producing climate fields (like temperature or precipitation) from existing Earth System Model (ESM) output that, while inaccurate, is often useful for a variety of downstream purposes. Conducting pattern scaling has historically been a laborious process, in large part due to the increasing volume of ESM output data that has often required downloading and storing locally to train on. Here we describe the Pangeo-Enabled ESM Pattern Scaling (PEEPS) dataset, a repository of trained annual and monthly patterns from CMIP6 outputs. This manuscript describes and validates these updated patterns so that users can save effort calculating and reporting error statistics in manuscripts focused on the use of patterns. The trained patterns are available as NetCDF files on Zenodo for ease of use in the impact community, and are reproducible with the code provided via GitHub in both Jupyter notebook and Python script formats. Because all training data for the PEEPS data set is cloud-based, users do not need to download and house the ESM output data to reproduce the patterns in the zenodo archive, should that be more efficient. Validating the PEEPS data set on the CMIP6 archive for annual and monthly temperature, precipitation, and near-surface relative humidity, pattern scaling performs well over a variety of future scenarios except for regions in which there are strong, potentially nonlinear climate feedbacks. Although pattern scaling is normally conducted on annual mean ESM output data, it works equally well on monthly mean ESM output data. We identify several downstream applications of the PEEPS data set, including impacts assessment and evaluating certain types of Earth system uncertainties.
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Pangeo-Enabled ESM Pattern Scaling (PEEPS):可定制的仿真地球系统模型输出数据集
通过模式标度进行模拟是一种行之有效的方法,可以从现有的地球系统模型(ESM)输出中快速生成气候场(如温度或降水),虽然不准确,但通常对各种下游目的都很有用。进行模式缩放历来是一个费力的过程,这在很大程度上是由于ESM输出数据量的增加,通常需要下载并存储在本地进行训练。在这里,我们描述了Pangeo-Enabled ESM模式缩放(PEEPS)数据集,这是一个来自CMIP6输出的经过训练的年度和月度模式的存储库。本文描述并验证了这些更新的模式,以便用户可以节省计算和报告错误统计数据的工作,这些统计数据主要集中在模式的使用上。经过训练的模式可以在Zenodo上以NetCDF文件的形式获得,以便于在影响社区中使用,并且可以通过GitHub以Jupyter笔记本和Python脚本格式提供的代码进行复制。因为PEEPS数据集的所有训练数据都是基于云的,所以用户不需要下载和存储ESM输出数据来重现zenodo存档中的模式,这样做会更有效率。验证CMIP6存档的PEEPS数据集的年和月温度、降水和近地表相对湿度,模式尺度化在各种未来情景中表现良好,除了存在强烈的潜在非线性气候反馈的区域。虽然模式缩放通常是在年平均ESM输出数据上进行的,但它在月平均ESM输出数据上同样有效。我们确定了PEEPS数据集的几个下游应用,包括影响评估和评估某些类型的地球系统不确定性。
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