Matilda v1.0: An R package for probabilistic climate projections using a reduced complexity climate model

Joseph K. Brown, Leeya Pressburger, Abigail Snyder, K. Dorheim, Steven J. Smith, Claudia Tebaldi, Ben Bond-Lamberty
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Abstract

A primary advantage to using reduced complexity climate models (RCMs) has been their ability to quickly conduct probabilistic climate projections, a key component of uncertainty quantification in many impact studies and multisector systems. Providing frameworks for such analyses has been a target of several RCMs used in studies of the future co-evolution of the human and Earth systems. In this paper, we present Matilda, an open-science R software package that facilitates probabilistic climate projection analysis, implemented here using the Hector simple climate model in a seamless and easily applied framework. The primary goal of Matilda is to provide the user with a turn-key method to build parameter sets from literature-based prior distributions, run Hector iteratively to produce perturbed parameter ensembles (PPEs), weight ensembles for realism against observed historical climate data, and compute probabilistic projections for different climate variables. This workflow gives the user the ability to explore viable parameter space and propagate uncertainty to model ensembles with just a few lines of code. The package provides significant freedom to select different scoring criteria and algorithms to weight ensemble members, as well as the flexibility to implement custom criteria. Additionally, the architecture of the package simplifies the process of building and analyzing PPEs without requiring significant programming expertise, to accommodate diverse use cases. We present a case study that provides illustrative results of a probabilistic analysis of mean global surface temperature as an example of the software application.
Matilda v1.0:使用复杂性降低的气候模型进行概率气候预测的 R 软件包
使用复杂性降低的气候模式(RCMs)的一个主要优势是能够快速进行概率气候预测,这是许多影响研究和多部门系统中不确定性量化的一个关键组成部分。为此类分析提供框架一直是多个 RCM 的目标,这些 RCM 被用于人类与地球系统未来共同演化的研究。在本文中,我们介绍了 Matilda,这是一个开放科学的 R 软件包,可促进概率气候预测分析,在此使用 Hector 简单气候模型在一个无缝和易于应用的框架内实现。Matilda 的主要目标是为用户提供一种交钥匙方法,从基于文献的先验分布中建立参数集,迭代运行 Hector 以生成扰动参数集合(PPE),根据观测到的历史气候数据对集合进行加权以确保其真实性,并计算不同气候变量的概率预测。这一工作流程使用户只需几行代码就能探索可行的参数空间,并将不确定性传播到模型集合中。该软件包提供了极大的自由度,用户可以选择不同的评分标准和算法对集合成员进行加权,还可以灵活地实施自定义标准。此外,该软件包的架构简化了构建和分析 PPE 的过程,无需大量的编程专业知识,以适应不同的使用情况。我们介绍了一个案例研究,以全球平均地表温度的概率分析结果为例,说明该软件的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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