首页> 外文期刊>Hydrology and Earth System Sciences >Intercomparison of different uncertainty sources in hydrological climate change projections for an alpine catchment (upper Clutha River, New Zealand)
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Intercomparison of different uncertainty sources in hydrological climate change projections for an alpine catchment (upper Clutha River, New Zealand)

机译:高山流域水文气候变化预测中不同不确定性源的比对(新西兰克鲁萨河上游)

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As climate change is projected to alter both temperature and precipitation, snow-controlled mid-latitude catchments are expected to experience substantial shifts in their seasonal regime, which will have direct implications for water management. In order to provide authoritative projections of climate change impacts, the uncertainty inherent to all components of the modelling chain needs to be accounted for. This study assesses the uncertainty in potential impacts of climate change on the hydro-climate of a headwater sub-catchment of New Zealand's largest catchment (the Clutha River) using a fully distributed hydrological model (WaSiM) and unique ensemble encompassing different uncertainty sources: general circulation model (GCM), emission scenario, bias correction and snow model. The inclusion of snow models is particularly important, given that (1)?they are a rarely considered aspect of uncertainty in hydrological modelling studies, and (2)?snow has a considerable influence on seasonal patterns of river flow in alpine catchments such as the Clutha. Projected changes in river flow for the 2050s and 2090s encompass substantial increases in streamflow from May to October, and a decline between December and March. The dominant drivers are changes in the seasonal distribution of precipitation (for the 2090s +29 to +84?% in winter) and substantial decreases in the seasonal snow storage due to temperature increase. A quantitative comparison of uncertainty identified GCM structure as the dominant contributor in the seasonal streamflow signal (44–57?%) followed by emission scenario (16–49?%), bias correction (4–22?%) and snow model (3–10?%). While these findings suggest that the role of the snow model is comparatively small, its contribution to the overall uncertainty was still found to be noticeable for winter and summer.
机译:由于预计气候变化会同时改变温度和降水,因此控雪的中纬度集水区的季节性状况预计将发生重大变化,这将对水资源管理产生直接影响。为了提供关于气候变化影响的权威性预测,需要考虑建模链所有组成部分固有的不确定性。这项研究使用完全分布式的水文模型(WaSiM)和涵盖不同不确定性来源的独特集合,评估了气候变化对新西兰最大流域(克鲁萨河)上游水源流域水文气候的潜在不确定性:循环模型(GCM),排放情景,偏差校正和降雪模型。考虑到(1)在水文模型研究中很少考虑不确定性,并且(2)雪对高山流域(例如,克鲁萨预计2050年代和2090年代的河流流量变化包括5月至10月的水流量大幅增加,以及12月至3月的水流量减少。主导因素是降水的季节性分布变化(在2090年代冬季为+29至+ 84%),以及由于温度升高而导致的季节性积雪大量减少。不确定性的定量比较确定了GCM结构是季节性流量信号的主要贡献者(44–57%),其次是排放情景(16–49%),偏差校正(4–22%)和降雪模型(3 –10%)。尽管这些发现表明,降雪模型的作用相对较小,但在冬季和夏季,其对总体不确定性的贡献仍然很明显。

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