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Comparison of Three Statistical Downscaling Methods and Ensemble Downscaling Method Based on Bayesian Model Averaging in Upper Hanjiang River Basin, China

机译:三种统计缩小方法的比较基于贝叶斯模型平均在中国汉江流域平均的基于贝叶斯模型的集合镇压方法

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摘要

Many downscaling techniques have been developed in the past few years for projection of station-scale hydrological variables from large-scale atmospheric variables to assess the hydrological impacts of climate change. To improve the simulation accuracy of downscaling methods, the Bayesian Model Averaging (BMA) method combined with three statistical downscaling methods, which are support vector machine (SVM), BCC/RCG-Weather Generators (BCC/RCG-WG), and Statistics Downscaling Model (SDSM), is proposed in this study, based on the statistical relationship between the larger scale climate predictors and observed precipitation in upper Hanjiang River Basin (HRB). The statistical analysis of three performance criteria (the Nash-Sutcliffe coefficient of efficiency, the coefficient of correlation, and the relative error) shows that the performance of ensemble downscaling method based on BMA for rainfall is better than that of each single statistical downscaling method. Moreover, the performance for the runoff modelled by the SWAT rainfall-runoff model using the downscaled daily rainfall by four methods is also compared, and the ensemble downscaling method has better simulation accuracy. The ensemble downscaling technology based on BMA can provide scientific basis for the study of runoff response to climate change.
机译:过去几年已经开发了许多较低的技术,用于从大规模的大气变量从大规模的大气变量投射到评估气候变化的水文影响。为了提高较低的方法的仿真精度,贝叶斯模型平均(BMA)方法与三种统计较低的方法相结合,该方法是支持向量机(SVM),BCC / RCG天气发生器(BCC / RCG-WG)和统计缩小模型(SDSM),在本研究中提出,基于较大规模的气候预测因子与上汉江流域(HRB)的沉淀之间的统计关系。对三种性能标准的统计分析(NASH-SUTCLIFFE效率系数,相关系数和相对误差)表明,基于BMA进行降雨的集合较低方法的性能优于每个单一统计较划线方法。此外,还比较了使用四种方法使用较低的每日降雨模型的SWAT降雨模型模型的径流性能,并且集合缩小方法具有更好的模拟精度。基于BMA的集合缩减技术可以为研究气候变化的径流反应提供科学依据。

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