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Assessment of extreme flows and uncertainty under climate change: disentangling the uncertainty contribution of representative concentration pathways, global climate models and internal climate variability

机译:气候变化下极端流动和不确定性的评估:解除代表集中途径,全球气候模型和内部气候变异性的不确定性贡献

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Projections of streamflow, particularly of extreme flows under climate change, are essential for future water resources management and the development of adaptation strategies to floods and droughts. However, these projections are subject to uncertainties originating from different sources. In this study, we explored the possible changes in future streamflow, particularly for high and low flows, under climate change in the Qu?River basin, eastern China. ANOVA (analysis of variance) was employed to quantify the contribution of different uncertainty sources from RCPs (representative concentration pathways), GCMs (global climate models) and internal climate variability, using an ensemble of 4 RCP scenarios, 9 GCMs and 1000?simulated realizations of each model–scenario combination by SDRM-MCREM (a stochastic daily rainfall model coupling a Markov chain model with a rainfall event model). The results show that annual mean flow and high flows are projected to increase and that low flows will probably decrease in 2041–2070?(2050s) and 2071–2100?(2080s) relative to the historical period of 1971–2000, suggesting a higher risk of floods and droughts in the future in the Qu?River basin, especially for the late 21st century. Uncertainty in mean flows is mostly attributed to GCM uncertainty. For high flows and low flows, internal climate variability and GCM uncertainty are two major uncertainty sources for the?2050s and?2080s, while for the?2080s, the effect of RCP uncertainty becomes more pronounced, particularly for low flows. The findings in this study can help water managers to become more knowledgeable about and get a better understanding of streamflow projections and support decision making regarding adaptations to a changing climate under uncertainty in the Qu?River basin.
机译:流出的投影,尤其是气候变化下极端流动,对未来的水资源管理以及对洪水和干旱的适应策略的发展至关重要。然而,这些预测受到来自不同来源的不确定性。在这项研究中,我们探讨了中国东部地区气候变化下的未来流流量的可能变化,特别是高压和低流量。使用ANOVA(方差分析)来计算来自RCPS(代表浓度途径),GCMS(全球气候模型)和内部气候变异性的不同不确定性来源的贡献,使用4 RCP场景,9个GCM和1000?模拟的实现通过SDRM-MCREM的每个模型方案组合(通过降雨事件模型耦合马尔可夫链模型的随机日降雨模型)。结果表明,预计年平均流量和高流量增加,低流量可能会在2041-2070(2050年代)和2071-2100?(2080s)相对于1971 - 2000年的历史时期,表明更高Qu河流域未来洪水和干旱风险,特别是21世纪末。平均流量的不确定性主要归因于GCM不确定性。对于高流量和低流量,内部气候变异性和GCM不确定性是2050年代和2080年代的两个主要不确定性来源,而对于2080年代,RCP不确定性的效果变得更加明显,特别是对于低流动。本研究中的调查结果可以帮助水管理人员变得更加了解,并更好地了解流出投影和支持决策,了解在曲河流域的不确定性下改变气候的改编。

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