首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Assessments of downscaled climate data with a high-resolution weather station network reveal consistent but predictable bias
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Assessments of downscaled climate data with a high-resolution weather station network reveal consistent but predictable bias

机译:通过高分辨率气象站网络评估较低的气候数据,揭示了一致但可预测的偏差

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Ecological analyses often incorporate high-resolution environmental data to capture species-environment relationships in modelling applications, and downscaled climate data are increasingly being used for such analyses. While such data products provide high precision, the accuracy of these data is seldom directly tested. Consequently, introduced bias from downscaling algorithms may propagate through analyses that incorporate these data products. Here, we utilize data from the Foothills Climate Array (FCA), a mesoscale grid of 232 weather stations in the prairies and eastern slopes of the Rocky Mountains in southern Alberta, Canada, to evaluate several publicly available downscaled climate products. We consider daily, monthly, and annual records for a suite of temperature and humidity variables. The FCA data are ideal to evaluate climate downscaling because they contain multi-year observations and cover a range of topographic conditions, from flat prairie grass- and croplands to mountainous terrain. We find that the downscaling algorithms improve the accuracy of climate variables over simple interpolations of low-resolution data, but errors are often large at validation locations (e.g., several degrees C for temperature variables), and downscaled datasets show notable elevational and seasonal bias for all variables. A bias adjustment analysis demonstrates that such bias can be greatly reduced with relatively simple regression-based models, even when only a small subset of observational data are used, provided they cover a relatively large spread of elevations. We discuss our findings in the context of climate change and ecological modelling and make general recommendations for consumers of downscaled climate data products.
机译:生态分析通常包含高分辨率环境数据,以捕获建模应用中的物种环境关系,并且越来越多地用于这种分析的较低的气候数据。虽然这种数据产品提供高精度,但这些数据的准确性很少直接测试。因此,从缩放算法引入的偏差可以通过包含这些数据产品的分析来传播。在这里,我们利用来自山麓气候阵列(FCA)的数据,在加拿大南部南部的岩石山脉和岩石山脉的232个气象站的Mescrale网站中,以评估几个公开的较低的气候产品。我们考虑日常,每月和年度记录,用于一套温度和湿度变量。 FCA数据是评估气候级别的理想选择,因为它们含有多年观测,并覆盖一系列地形条件,从平原草原草和农田到山区地形。我们发现缩小算法在低分辨率数据的简单内插上提高了气候变量的准确性,但验证位置通常很大(例如,用于温度变量的几值C),并且缩小的数据集显示出显着的高度和季节偏差所有变量。偏置调整分析表明,即使仅使用相对简单的回归的模型,也可以大大降低这种偏差,即使仅使用小的观察数据的小子集,则提供了相对大的升高的扩散。我们在气候变化和生态建模的背景下讨论了我们的调查结果,并对较次划分的气候数据产品的消费者进行了一般性建议。

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