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Global Climate Model Selection for Analysis of Uncertainty in Climate Change Impact Assessments of Hydro-Climatic Extremes

机译:全球气候模式选择,用于分析极端水文气候变化影响评估中的不确定性

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Regional climate change impact assessments are becoming increasingly important for developing adaptation strategies in an uncertain future with respect to hydro-climatic extremes. There are a number of Global Climate Models (GCMs) and emission scenarios providing predictions of future changes in climate. As a result, there is a level of uncertainty associated with the decision of which climate models to use for the assessment of climate change impacts. The IPCC has recommended using as many global climate model scenarios as possible; however, this approach may be impractical for regional assessments that are computationally demanding. Methods have been developed to select climate model scenarios, generally consisting of selecting a model with the highest skill (validation), creating an ensemble, or selecting one or more extremes. Validation methods limit analyses to models with higher skill in simulating historical climate, ensemble methods typically take multi model means, median, or percentiles, and extremes methods tend to use scenarios which bound the projected changes in precipitation and temperature. In this paper a quantile regression based validation method is developed and applied to generate a reduced set of GCM-scenarios to analyze daily maximum streamflow uncertainty in the Upper Thames River Basin, Canada, while extremes and percentile ensemble approaches are also used for comparison. Results indicate that the validation method was able to effectively rank and reduce the set of scenarios, while the extremes and percentile ensemble methods were found not to necessarily correlate well with the range of extreme flows for all calendar months and return periods.
机译:区域气候变化影响评估对于在不确定的未来针对水文气候极端事件制定适应战略方面变得越来越重要。有许多全球气候模型(GCM)和排放情景提供了对未来气候变化的预测。结果,在决定使用哪种气候模型来评估气候变化影响时存在一定程度的不确定性。 IPCC建议使用尽可能多的全球气候模式情景;但是,这种方法对于计算要求很高的区域评估可能不切实际。已经开发出用于选择气候模型情景的方法,该方法通常包括选择具有最高技能(验证)的模型,创建整体或选择一个或多个极端。验证方法将分析限制在具有较高技能的模型中,以模拟历史气候,集成方法通常采用多种模型均值,中位数或百分位数,而极端方法则倾向于使用限制降水和温度预计变化的方案。本文提出了一种基于分位数回归的验证方法,并将其应用于生成简化的GCM场景集,以分析加拿大上泰晤士河流域的每日最大流量不确定性,同时还使用了极限和百分位数集成方法进行比较。结果表明,验证方法能够有效地对情景进行排序和减少,而极端值和百分位数合奏方法未必与所有历月和回报期的极端流量范围很好地相关。

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