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A Bayesian Approach for Uncertainty Quantification of Extreme Precipitation Projections Including Climate Model Interdependency and Nonstationary Bias

机译:一种贝叶斯方法,用于极端降水预测的不确定性量化,包括气候模型相关性和非平稳偏差

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摘要

Climate change impact studies are subject to numerous uncertainties and assumptions. One of the main sources of uncertainty arises from the interpretation of climate model projections. Probabilistic procedures based on multimodel ensembles have been suggested in the literature to quantify this source of uncertainty. However, the interpretation of multimodel ensembles remains challenging. Several assumptions are often required in the uncertainty quantification of climate model projections. For example, most methods often assume that the climate models are independent and/or that changes in climate model biases are negligible. This study develops a Bayesian framework that accounts for model dependencies and changes in model biases and compares it to estimates calculated based on a frequentist approach. The Bayesian framework is used to investigate the effects of the two assumptions on the uncertainty quantification of extreme precipitation projections over Denmark. An ensemble of regional climate models from the Ensemble-Based Predictions of Climate Changes and their Impacts (ENSEMBLES) project is used for this purpose.
机译:气候变化影响研究有许多不确定性和假设。不确定性的主要来源之一是气候模型预测的解释。在文献中已经提出了基于多模型集合的概率过程来量化这种不确定性来源。但是,对多模型合奏的解释仍然具有挑战性。气候模型预测的不确定性量化通常需要几个假设。例如,大多数方法经常假定气候模型是独立的和/或气候模型偏差的变化可以忽略。这项研究开发了一个贝叶斯框架,该框架考虑了模型的依赖性和模型偏差的变化,并将其与基于频繁性方法计算的估计值进行了比较。贝叶斯框架用于调查这两个假设对丹麦极端降水预测的不确定性量化的影响。为此,使用了“基于集合的气候变化及其影响预测”(ENSEMBLES)项目中的一组区域气候模型。

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