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Characterizing climate change risks by linking robust decision frameworks and uncertain probabilistic projections

机译:通过将强大的决策框架和不确定的概率预测联系起来,表征气候变化风险

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摘要

There is increasing concern that avoiding climate change impacts will require proactive adaptation, particularly for infrastructure systems with long lifespans. However, one challenge in adaptation is the uncertainty surrounding climate change projections generated by general circulation models (GCMs). This uncertainty has been addressed in different ways. For example, some researchers use ensembles of GCMs to generate probabilistic climate change projections, but these projections can be highly sensitive to assumptions about model independence and weighting schemes. Because of these issues, others argue that robustness-based approaches to climate adaptation are more appropriate, since they do not rely on a precise probabilistic representation of uncertainty. In this research, we present a new approach for characterizing climate change risks that leverages robust decision frameworks and probabilistic GCM ensembles. The scenario discovery process is used to search across a multi-dimensional space and identify climate scenarios most associated with system failure, and a Bayesian statistical model informed by GCM projections is then developed to estimate the probability of those scenarios. This provides an important advancement in that it can incorporate decision-relevant climate variables beyond mean temperature and precipitation and account for uncertainty in probabilistic estimates in a straightforward way. We also suggest several advancements building on prior approaches to Bayesian modeling of climate change projections to make them more broadly applicable. We demonstrate the methodology using proposed water resources infrastructure in Lake Tana, Ethiopia, where GCM disagreement on changes in future rainfall presents a major challenge for infrastructure planning.
机译:越来越关注的是,避免气候变化的影响将需要主动适应,特别是对于具有长寿命的基础设施系统。然而,适应的一个挑战是围绕一般循环模型(GCMS)产生的气候变化投影的不确定性。这种不确定性已经以不同的方式解决。例如,一些研究人员使用GCM的集合来产生概率的气候变化预测,但这些预测对模型独立性和加权方案的假设非常敏感。由于这些问题,其他人认为,基于鲁棒性的气候适应方法更为合适,因为它们不依赖于不确定性的精确概率表现。在这项研究中,我们提出了一种新方法,用于表征气候变化风险,这些风险利用强大的决策框架和概率的GCM合奏。方案发现过程用于跨多维空间搜索,并识别与系统故障相关的最多相关的气候情景,然后开发出GCM投影通知的贝叶斯统计模型以估计这些方案的概率。这提供了一个重要的进步,因为它可以将决策相关的气候变量纳入超出平均温度和降水的概率和降水,并以直接的方式占概率估计的不确定性。我们还建议在以前的贝叶斯建模的气候变化预测上建立若干进步,使其更广泛适用。我们展示了在埃塞俄比亚湖塔纳湖中提出的水资源基础设施的方法,其中GCM对未来降雨的变化的分歧是基础设施规划的重大挑战。

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