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Development and comparative evaluation of a stochastic analog method to downscale daily GCM precipitation

机译:每日GCM降水降尺度的随机模拟方法的开发和比较评估

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There are a number of statistical techniques that downscale coarse climate information from general circulation models (GCMs). However, many of them do not reproduce the small-scale spatial variability of precipitation exhibited by the observed meteorological data, which is an important factor for predicting hydrologic response to climatic forcing. In this study a new downscaling technique (Bias- Correction and Stochastic Analog method; BCSA) was developed to produce stochastic realizations of bias-corrected daily GCM precipitation fields that preserve both the spatial autocorrelation structure of observed daily precipitation sequences and the observed temporal frequency distribution of daily rainfall over space. We used the BCSA method to downscale 4 different daily GCM precipitation predictions from 1961 to 1999 over the state of Florida, and compared the skill of the method to results obtained with the commonly used bias-correction and spatial disaggregation (BCSD) approach, a modified version of BCSD which reverses the order of spatial disaggregation and bias-correction (SDBC), and the bias-correction and constructed analog (BCCA) method. Spatial and temporal statistics, transition probabilities, wet/dry spell lengths, spatial correlation indices, and variograms for wet (June through September) and dry (October through May) seasons were calculated for each method. Results showed that (1) BCCA underestimated mean daily precipitation for both wet and dry seasons while the BCSD, SDBC and BCSA methods accurately reproduced these characteristics, (2) the BCSD and BCCA methods underestimated temporal variability of daily precipitation and thus did not reproduce daily precipitation standard deviations, transition probabilities or wet/dry spell lengths as well as the SDBC and BCSA methods, and (3) the BCSD, BCCA and SDBC methods underestimated spatial variability in daily precipitation resulting in underprediction of spatial variance and overprediction of spatial correlation, whereas the new stochastic technique (BCSA) replicated observed spatial statistics for both the wet and dry seasons. This study underscores the need to carefully select a downscaling method that reproduces all precipitation characteristics important for the hydrologic system under consideration if local hydrologic impacts of climate variability and change are going to be reasonably predicted. For low-relief, rainfall-dominated watersheds, where reproducing small-scale spatiotemporal precipitation variability is important, the BCSA method is recommended for use over the BCSD, BCCA, or SDBC methods.
机译:有许多统计技术可以降低来自一般循环模型(GCM)的粗略气候信息的规模。然而,它们中的许多都没有再现观测到的气象数据所显示的小范围降水空间变异性,这是预测水文对气候强迫的响应的重要因素。在这项研究中,开发了一种新的降尺度技术(Bias校正和随机模拟方法; BCSA),以产生偏差校正的日GCM降水场的随机实现,该场既保留了观测到的每日降水序列的空间自相关结构,又保留了观测到的时间频率分布空间的每日降雨量我们使用BCSA方法对佛罗里达州从1961年到1999年的4种不同的每日GCM降水预测进行了缩减,并将该方法的技巧与通过常用的偏差校正和空间分解(BCSD)方法获得的结果进行了比较。版本的BCSD,它颠倒了空间分解和偏差校正(SDBC)的顺序,以及偏差校正和构造的模拟(BCCA)方法。对于每种方法,计算了湿季(6月至9月)和旱季(10月至5月)的时空统计数据,过渡概率,湿/干法术长度,空间相关指数以及变异函数图。结果表明:(1)BCCA低估了干季和湿季的平均日降水量,而BCSD,SDBC和BCSA方法准确地再现了这些特征;(2)BCSD和BCCA方法低估了日降水量的时间变化性,因此没有每日重现。降水标准偏差,过渡概率或干/湿法术长度以及SDBC和BCSA方法,以及(3)BCSD,BCCA和SDBC方法低估了每日降水中的空间变异性,从而导致对空间变化的低估和对空间相关性的高估,而新的随机技术(BCSA)复制了观测到的湿季和旱季的空间统计数据。这项研究强调,如果要合理预测气候变化和变化对当地水文的影响,则需要仔细选择一种降尺度方法,该方法应再现对正在考虑的水文系统重要的所有降水特征。对于低浮雕,降雨为主的流域,在其中重现小规模时空降水变异性很重要的地方,建议将BCSA方法用于BCSD,BCCA或SDBC方法。

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