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Evaluation of snow water equivalent datasets over the Saint‐ Maurice river basin region of southern Québec

机译:魁北克南部圣莫里斯河流域地区的雪水当量数据集评估

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A 10-km gridded snow water equivalent (SWE) dataset is developed over the Saint-Maurice River basin region in southern Quebec from kriging of observed snow survey data for evaluation of SWE products. The gridded SWE dataset covers 1980-2014 and is based on manual gravimetric snow surveys carried out on February 1, March 1, March 15, April 1, and April 15 of each snow season, which captures the annual maximum SWE (SWEM) with a mean interpolation error of +/- 19%. The dataset is used to evaluate SWEM from a range of sources including satellite retrievals, reanalyses, Canadian regional climate models, and the Canadian Meteorological Centre operational snow depth analysis. We also evaluate a number of solid precipitation datasets to determine their contribution to systematic errors in estimated SWEM. None of the evaluated datasets is able to provide estimates of SWEM that are within operational requirements of +/- 15% error, and insufficient solid precipitation is determined to be one of the main reasons. The Climate System Forecast Reanalysis is the only dataset where snowfall is sufficiently large to generate SWEM values comparable to observations. Inconsistencies in precipitation are also found to have a strong impact on yearto-year variability in SWEM dataset performance and spread. Version 3.6.1 of the Canadian Land Surface Scheme land surface scheme driven with ERA-Interim output downscaled by Version 5.0.1 of the Canadian Regional Climate Model was the best physically based model at explaining the observed spatial and temporal variability in SWEM (root-mean-square error [RMSE] = 33%) and has potential for lower error with adjusted precipitation. Operational snow products relying on the real-time snow depth observing network performed poorly due to a lack of real-time data and the strong local scale variability of point snow depth observations. The results underscore the need for more effort to be invested in improving solid precipitation estimates for use in snow hydrology applications.
机译:在魁北克省南部的圣莫里斯河流域地区,根据观测到的积雪调查数据的克里金法开发了一个10公里的网格化雪水当量(SWE)数据集,以评估SWE产品。网格化的SWE数据集涵盖了1980-2014年,并基于每个雪季的2月1日,3月1日,3月15日,4月1日和4月15日进行的手动重力积雪调查,该数据捕获了年度最大SWE(SWEM),平均插值误差为+/- 19%。该数据集用于评估来自包括卫星检索,再分析,加拿大区域气候模型以及加拿大气象中心运行降雪深度分析在内的各种来源的SWEM。我们还评估了许多固体降水数据集,以确定它们对估计SWEM中系统误差的贡献。没有一个评估的数据集能够提供SWEM的估计值,这些估计值的误差在+/- 15%的操作要求之内,并且固体沉淀不足被认为是主要原因之一。气候系统预报再分析是唯一降雪量足够大以产生与观测值相当的SWEM值的数据集。还发现降水不一致对SWEM数据集性能和分布的年际变化有很大影响。以ERA-Interim输出为依据(按加拿大区域气候模型5.0.1版缩减)的《加拿大陆地表面方案》第3.6.1版是解释SWEM(根源-均方误差[RMSE] = 33%),并有可能在调整降水量的情况下降低误差。由于缺乏实时数据以及点雪深观测的局部尺度变化较大,依赖实时雪深观测网络的可操作雪产品的性能较差。结果强调需要投入更多的精力来改善用于雪水文学应用的固体降水估算。

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