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Reanalysis data underestimate significant changes in growing season weather in Kazakhstan

机译:再分析数据低估了哈萨克斯坦生长季节天气的重大变化

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We present time series analyses of recently compiled climate station data which allowed us to assess contemporary trends in growing season weather across Kazakhstan as drivers of a significant decline in growing season normalized difference vegetation index (NDVI) recently observed by satellite remote sensing across much of Central Asia. We used a robust nonparametric time series analysis method, the seasonal Kendall trend test to analyze georeferenced time series of accumulated growing season precipitation (APPT) and accumulated growing degree-days (AGDD). Over the period 2000–2006 we found geographically extensive, statistically significant (p0.05) decreasing trends in APPT and increasing trends in AGDD. The temperature trends were especially apparent during the warm season and coincided with precipitation decreases in northwest Kazakhstan, indicating that pervasive drought conditions and higher temperature excursions were the likely drivers of NDVI declines observed in Kazakhstan over the same period. We also compared the APPT and AGDD trends at individual stations with results from trend analysis of gridded monthly precipitation data from the Global Precipitation Climatology Centre (GPCC) Full Data Reanalysis v4 and gridded daily near surface air temperature from the National Centers for Climate Prediction Reanalysis v2 (NCEP R2). We found substantial deviation between the station and the reanalysis trends, suggesting that GPCC and NCEP data substantially underestimate the geographic extent of recent drought in Kazakhstan. Although gridded climate products offer many advantages in ease of use and complete coverage, our findings for Kazakhstan should serve as a caveat against uncritical use of GPCC and NCEP reanalysis data and demonstrate the importance of compiling and standardizing daily climate data from data-sparse regions like Central Asia.
机译:我们提供了对最近汇编的气候站数据的时间序列分析,这些数据使我们能够评估哈萨克斯坦整个生长季节天气的当代趋势,这是最近在中部大部分地区通过卫星遥感观测到的生长季节归一化差异植被指数(NDVI)显着下降的驱动力亚洲。我们使用了健壮的非参数时间序列分析方法,季节性Kendall趋势检验来分析累积生长季降水量(APPT)和累积生长日数(AGDD)的地理参考时间序列。在2000年至2006年期间,我们发现APPT的地理分布广泛,统计学意义显着(p <0.05)下降趋势和AGDD的上升趋势。温度趋势在暖季期间尤为明显,并与哈萨克斯坦西北部的降水减少相吻合,这表明在同一时期在哈萨克斯坦观察到普遍的干旱条件和较高的温度偏移是NDVI下降的可能驱动因素。我们还比较了各个站点的APPT和AGDD趋势,以及来自全球降水气候中心(GPCC)完整数据再分析v4的网格月降水数据趋势分析和来自国家气候预测再分析v2的每日近地面气温网格趋势分析结果。 (NCEP R2)。我们发现该站与再分析趋势之间存在较大偏差,这表明GPCC和NCEP数据大大低估了哈萨克斯坦最近干旱的地理范围。尽管网格气候产品在易于使用和完全覆盖方面提供了许多优势,但我们在哈萨克斯坦的发现应作为对GPCC和NCEP再分析数据的非关键使用的警告,并证明了从数据稀疏地区(例如,中亚。

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