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A Novel Spatiotemporal Statistical Downscaling Method for Hourly Rainfall

机译:一种新型的时空时空统计降尺度方法

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Finer spatiotemporal resolution rainfall data is essential for assessing hydrological impacts of climate change on medium and small basins. However, existing methods pay less attention to the inter-day correlation and diurnal cycle, which can strongly influence the hydrological cycle. To address this problem, we present a spatiotemporal downscaling method that is capable of reproducing the inter-day correlation, the diurnal cycle, and rainfall statistics on daily and hourly scales. The large-scale datasets, which we obtained from the National Centers for Environmental Prediction/National Center for Atmospheric Research (NCEP/NCAR) reanalysis dataset (NNR) and general circulation model (GCM) outputs, and local rainfall data are analyzed to assess the impacts of climate change on rainfall. Our proposed method consists of two steps: spatial downscaling and temporal downscaling. We apply spatial downscaling first to obtain the relationship between large-scale datasets and daily rainfall at a site scale using a k-nearest neighbor method (KNN). Then, we conduct an hourly downscaling of daily rainfall in the second step using a genetic algorithm-based KNN (GAKNN) with the inter-day correlation and the diurnal cycle. Furthermore, we analyzed changes in rainfall statistics for the periods 2046-2065 and 2081-2100 under the A2, A1B, and B1 scenarios of the third generation Coupled Global Climate Model (CGCM3.1) and Bergen Climate Model version 2 (BCM2.0). An application of our proposed method to the Shihmen Reservoir basin (Taiwan) has shown that it could accurately reproduce local rainfall and its statistics on daily and hourly scales. Overall, the results demonstrated that the proposed spatiotemporal method is a powerful tool for downscaling hourly rainfall data from a large-scale dataset. The understanding of future changes of rainfall characteristics through our proposed method is also expected to assist the planning and management of water resources systems.
机译:精细的时空分辨率降雨数据对于评估气候变化对中小盆地的水文影响至关重要。然而,现有的方法很少关注日间相关性和昼夜周期,这会强烈影响水文周期。为了解决这个问题,我们提出了一种时空缩减方法,该方法能够以日和小时为单位重现日间相关性,昼夜周期和降雨统计数据。我们从国家环境预测中心/国家大气研究中心(NCEP / NCAR)重新分析数据集(NNR)和一般循环模型(GCM)输出中获得了大规模数据集,并分析了当地的降雨数据以评估气候变化对降雨的影响。我们提出的方法包括两个步骤:空间缩减和时间缩减。我们首先应用空间缩减,以使用k最近邻法(KNN)获得大型数据集与站点规模的每日降雨量之间的关系。然后,在第二步中,我们使用基于遗传算法的KNN(GAKNN)(具有日间相关性和昼夜周期)对每小时降雨量进行小时缩减。此外,我们分析了第三代全球耦合气候模型(CGCM3.1)和卑尔根气候模型第2版(BCM2.0)在A2,A1B和B1情景下2046-2065和2081-2100时期的降雨统计变化。 )。我们的方法在石门水库盆地(台湾)中的应用表明,该方法可以准确地再现当地降雨及其日,小时尺度的统计数据。总体而言,结果表明,所提出的时空方法是从大型数据集中缩减小时降雨量数据的有力工具。通过我们提出的方法了解未来降雨特征的变化,也有望有助于水资源系统的规划和管理。

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