首页> 外文期刊>International Journal of Biometeorology: Journal of the International Society of Biometeorology >Statistical downscaling of general-circulation-model-simulated average monthly air temperature to the beginning of flowering of the dandelion (Taraxacum officinale) in Slovenia
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Statistical downscaling of general-circulation-model-simulated average monthly air temperature to the beginning of flowering of the dandelion (Taraxacum officinale) in Slovenia

机译:斯洛文尼亚的一般循环模型模拟的平均每月气温到蒲公英(蒲公英)开花开始的统计缩减

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Phenological observations are a valuable source of information for investigating the relationship between climate variation and plant development. Potential climate change in the future will shift the occurrence of phenological phases. Information about future climate conditions is needed in order to estimate this shift. General circulation models (GCM) provide the best information about future climate change. They are able to simulate reliably the most important mean features on a large scale, but they fail on a regional scale because of their low spatial resolution. A common approach to bridging the scale gap is statistical downscaling, which was used to relate the beginning of flowering of Taraxacum officinale in Slovenia with the monthly mean near-surface air temperature for January, February and March in Central Europe. Statistical models were developed and tested with NCAR/NCEP Reanalysis predictor data and EARS predictand data for the period 1960-1999. Prior to developing statistical models, empirical orthogonal function (EOF) analysis was employed on the predictor data. Multiple linear regression was used to relate the beginning of flowering with expansion coefficients of the first three EOF for the Janauary, Febrauary and March air temperatures, and a strong correlation was found between them. Developed statistical models were employed on the results of two GCM (HadCM3 and ECHAM4/OPYC3) to estimate the potential shifts in the beginning of flowering for the periods 1990-2019 and 2020-2049 in comparison with the period 1960-1989. The HadCM3 model predicts, on average, 4 days earlier occurrence and ECHAM4/OPYC3 5 days earlier occurrence of flowering in the period 1990-2019. The analogous results for the period 2020-2049 are a 10- and 11-day earlier occurrence.
机译:物候观测是研究气候变化与植物发育之间关系的有价值的信息来源。未来的潜在气候变化将改变物候期的发生。为了估计这种变化,需要有关未来气候条件的信息。通用循环模型(GCM)提供有关未来气候变化的最佳信息。它们能够可靠地大规模模拟最重要的平均特征,但由于其空间分辨率低,因此无法在区域范围内模拟。缩小规模差距的一种常用方法是统计缩小,该方法用于将斯洛文尼亚蒲公英的开花开始与中欧1月,2月和3月的月平均近地表气温联系起来。开发了统计模型,并使用1960-1999年期间的NCAR / NCEP再分析预测数据和EARS预测数据进行了测试。在开发统计模型之前,对预测数据使用经验正交函数(EOF)分析。使用多元线性回归将开花的开始与1月,2月和3月气温的前三个EOF的膨胀系数相关联,并且发现二者之间存在很强的相关性。对两个GCM(HadCM3和ECHAM4 / OPYC3)的结果采用发达的统计模型,以估计与1960-1989年相比1990-2019年和2020-2049年开花初期的潜在变化。 HadCM3模型平均预测1990-2019年期间开花的前4天,ECHAM4 / OPYC3平均发生的前5天。 2020-2049年期间的类似结果是提前10天和11天。

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