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Evaluating global reanalysis datasets for provision of boundary conditions in regional climate modelling

机译:评估全球再分析数据集以在区域气候模拟中提供边界条件

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Regional climate modelling studies often begin by downscaling a reanalysis dataset in order to simulate the observed climate, allowing the investigation of regional climate processes and quantification of the errors associated with the regional model. To date choice of reanalysis to perform such downscaling has been made based either on convenience or on performance of the reanalyses within the regional domain for relevant variables such as near-surface air temperature and precipitation. However, the only information passed from the reanalysis to the regional model are the atmospheric temperature, moisture and winds at the location of the boundaries of the regional domain. Here we present a methodology to evaluate reanalyses derived lateral boundary conditions for an example domain over southern Africa using satellite data. This study focusses on atmospheric temperature and moisture which are easily available. Five commonly used global reanalyses (NCEP1, NCEP2, ERA-I, 20CRv2, and MERRA) are evaluated against the Atmospheric Infrared Sounder satellite temperature and relative humidity over boundaries of two domains centred on southern Africa for the years 2003-2012 inclusive. The study reveals that MERRA is the most suitable for climate mean with NCEP1 the next most suitable. For climate variability, ERA-I is the best followed by MERRA. Overall, MERRA is preferred for generating lateral boundary conditions for this domain, followed by ERA-I. While a "better" LBC specification is not the sole precursor to an improved downscaling outcome, any reduction in uncertainty associated with the specification of LBCs is a step in the right direction.
机译:区域气候建模研究通常始于缩减再分析数据集的规模,以模拟观测到的气候,从而可以调查区域气候过程并量化与区域模型相关的误差。迄今为止,已经基于便利性或基于区域范围内针对诸如近地表空气温度和降水的相关变量的再分析的性能,来选择执行这种缩减的再分析。但是,从重新分析传递到区域模型的唯一信息是区域域边界位置处的大气温度,湿度和风。在这里,我们提出了一种方法,用于评估使用卫星数据对南部非洲示例域进行重新分析得出的横向边界条件。这项研究集中于容易获得的大气温度和湿度。针对大气红外测深仪卫星温度和相对湿度,以南部非洲为中心(2003-2012年)的两个区域边界,对五种常用的全球再分析(NCEP1,NCEP2,ERA-1、20CRv2和MERRA)进行了评估。研究表明,MERRA最适合气候平均值,NCEP1最适合气候平均值。对于气候多变性,ERA-I是最佳的,其次是MERRA。总的来说,最好使用MERRA来生成此域的横向边界条件,然后再生成ERA-1。虽然“更好的” LBC规范并不是改善降尺度结果的唯一先决条件,但与LBC规范相关的不确定性的任何降低都是朝着正确方向迈出的一步。

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