Partitioning model uncertainty in multi-model ensemble river flow projections

IF 4.8 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Gordon Aitken, Lindsay Beevers, Simon Parry, Katie Facer-Childs
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Abstract

Abstract Floods are the largest natural disaster currently facing the UK, whilst the incidents of droughts have increased in recent years. Floods and droughts can have devastating consequences on society, resulting in significant financial damage to the economy. Climate models suggest that precipitation and temperature changes will exacerbate future hydrological extremes (i.e., floods and droughts). Such events are likely to become more frequent and intense in the future; thus to develop adaptation plans climate model projections feed hydrological models to provide future water resource projections. ‘eFLaG’ is one set of future river flow projections produced for the UK driven by UKCP18 climate projections from the UK Met Office. The UKCP18-derived eFLaG dataset provides state-of-the-art projections for a single GCM driven by RCP 8.5 across the entire UK. A QE-ANOVA approach has been used to partition contributing sources of uncertainty for two flow quantiles (Q5 high flows and Q95 low flows), at near and far future time scales, for each of the 186 GB catchments in the eFLaG dataset. Results suggest a larger hydrological model uncertainty associated with low flows and greater regional climate model uncertainty for high flows which remains stationary between flow indicators. Total uncertainty increases from near to far future and highly uncertain catchments have been identified with a high concentration in South-East England.

Abstract Image

多模式集合河流量预测中划分模式的不确定性
洪水是目前英国面临的最大的自然灾害,而近年来干旱事件有所增加。洪水和干旱会对社会造成毁灭性的后果,对经济造成重大的财政损失。气候模式表明,降水和温度变化将加剧未来的水文极端事件(即洪水和干旱)。这类事件在未来可能会变得更加频繁和激烈;因此,为了制定适应计划,气候模型预测可以为水文模型提供未来水资源预测。“eFLaG”是英国气象局在UKCP18气候预测的推动下为英国制作的一套未来河流流量预测。ukcp18衍生的eFLaG数据集为整个英国的rcp8.5驱动的单一GCM提供了最先进的预测。QE-ANOVA方法被用于划分两个流量分位数(Q5高流量和Q95低流量)的不确定性贡献源,在近期和遥远的未来时间尺度上,对于eFLaG数据集中的186 GB集水区中的每个集水区。结果表明,低流量的水文模型不确定性较大,高流量的区域气候模型不确定性较大,在流量指标之间保持平稳。总不确定性从近期到远期增加,高度不确定性的集水区在英格兰东南部高度集中。
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来源期刊
Climatic Change
Climatic Change 环境科学-环境科学
CiteScore
10.20
自引率
4.20%
发文量
180
审稿时长
7.5 months
期刊介绍: Climatic Change is dedicated to the totality of the problem of climatic variability and change - its descriptions, causes, implications and interactions among these. The purpose of the journal is to provide a means of exchange among those working in different disciplines on problems related to climatic variations. This means that authors have an opportunity to communicate the essence of their studies to people in other climate-related disciplines and to interested non-disciplinarians, as well as to report on research in which the originality is in the combinations of (not necessarily original) work from several disciplines. The journal also includes vigorous editorial and book review sections.
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