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Coupling statistical and dynamical methods for spatial downscaling of precipitation

机译:降水空间缩减的统计和动力学耦合方法

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The resolution of General Circulation Models (GCMs) is too coarse for climate change impact studies at the catchment or site-specific scales. To overcome this problem, both dynamical and statistical downscaling methods have been developed. Each downscaling method has its advantages and drawbacks, which have been described in great detail in the literature. This paper evaluates the improvement in statistical downscaling (SD) predictive power when using predictors from a Regional Climate Model (RCM) over a GCM for downscaling site-specific precipitation. Our approach uses mixed downscaling, combining both dynamic and statistical methods. Precipitation, a critical element of hydrology studies that is also much more difficult to downscale than temperature, is the only variable evaluated in this study. The SD method selected here uses a stepwise linear regression approach for precipitation quantity and occurrence (similar to the well-known Statistical Downscaling Model (SDSM) and called SDSM-like herein). In addition, a discriminant analysis (DA) was tested to generate precipitation occurrence, and a weather typing approach was used to derive statistical relationships based on weather types, and not only on a seasonal basis as is usually done. The existing data record was separated into a calibration and validation periods. To compare the relative efficiency of the SD approaches, relationships were derived at the same sites using the same predictors at a 300km scale (the National Center for Environmental Prediction (NCEP) reanalysis) and at a 45km scale with data from the limited-area Canadian Regional Climate Model (CRCM) driven by NCEP data at its boundaries. Predictably, using CRCM variables as predictors rather than NCEP data resulted in a much-improved explained variance for precipitation, although it was always less than 50 % overall. For precipitation occurrence, the SDSM-like model slightly overestimated the frequencies of wet and dry periods, while these were well-replicated by the DA-based model. Both the SDSM-like and DA-based models reproduced the percentage of wet days, but the wet and dry statuses for each day were poorly downscaled by both approaches. Overall, precipitation occurrence downscaled by the DA-based model was much better than that predicted by the SDSM-like model. Despite the added complexity, the weather typing approach was not better at downscaling precipitation than approaches without classification. Overall, despite significant improvements in precipitation occurrence prediction by the DA scheme, and even going to finer scales predictors, the SD approach tested here still explained less than 50 % of the total precipitation variance. While going to even smaller scale predictors (10-15 km) might improve results even more, such smaller scales would basically transform the direct outputs of climate models into impact models, thus negating the need for statistical downscaling approaches.
机译:对于流域或特定地点规模的气候变化影响研究,一般环流模型(GCM)的分辨率太粗糙。为了克服这个问题,已经开发了动态和统计缩减方法。每种缩小尺寸的方法都有其优点和缺点,这些优点和缺点已在文献中详细描述。当使用区域气候模型(RCM)的预测因子对GCM进行降尺度处理时,本文评估了统计降尺度(SD)预测能力的提高。我们的方法使用混合降尺度,将动态和统计方法结合在一起。降水是水文学研究的关键要素,降尺度也比温度困难得多,是这项研究评估的唯一变量。此处选择的SD方法对降水量和降水量采用逐步线性回归方法(类似于众所周知的统计缩减模型(SDSM),在此称为类SDSM)。此外,还对判别分析(DA)进行了测试以产生降水,并且使用了天气类型化方法来基于天气类型(而不是像通常那样在季节性基础上)得出统计关系。现有数据记录分为校准和验证期。为了比较SD方法的相对效率,使用相同的预测变量在300 km范围(美国国家环境预测中心(NCEP)重新分析)和45 km范围内使用来自加拿大有限区域的数据在相同的地点得出关系由NCEP数据驱动的区域气候模型(CRCM)。可以预见的是,使用CRCM变量而不是NCEP数据作为预测变量,虽然总的降水量总是小于50%,但导致降水的解释方差大大改善。对于降水的发生,类似SDSM的模型略微高估了干燥和潮湿时期的频率,而基于DA的模型则很好地复制了这些频率。类似于SDSM的模型和基于DA的模型都再现了湿天的百分比,但是两种方法均无法很好地缩小每天的干湿状态。总体而言,基于DA的模型降尺度的降水发生远好于类似于SDSM的模型所预测的。尽管增加了复杂性,但天气分类方法在降低降水规模方面并不比没有分类的方法更好。总体而言,尽管通过DA方案对降水发生的预测有了显着改善,甚至采用了更精细的尺度预测因子,但此处测试的SD方法仍不足总降水量变化的50%。尽管使用更小规模的预测器(10-15 km)可能会进一步改善结果,但这种较小的尺度将基本上将气候模型的直接输出转换为影响模型,从而无需采用统计缩减方法。

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