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Generation of multi-site stochastic daily rainfall with four weather generators: a case study of Gloucester catchment in Australia

机译:使用四个天气生成器生成多站点随机日降水量:以澳大利亚格洛斯特集水区为例

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摘要

Four weather generators, namely, R-package version of the Generalised Linear Model for daily Climate time series (RGLIMCLIM), Stochastic Climate Library (SCL), R-package multi-site precipitation generator (RGENERATRPREC) and R-package Multi-site Auto-regressive Weather GENerator (RMAWGEN), were used to generate multi-sites stochastic daily rainfall for a small catchment in Australia. The results show the following: (1) All four models produced reasonable results in terms of annual, monthly and daily rainfall occurrence and amount, as well as daily extreme, multi-day extremes and dry/wet spell length. However, they also simulated a large range of variability, which not only demonstrates the advantages of multiple weather generators rather than a single model but also is more suitable for climate change and variability impact studies. (2) Every model has its own advantages and disadvantages due to their different theories and principles. This enhances the benefits of using multiple models. (3) The models can be further calibrated/improved to have a better performance in comparison with observations. However, it was chosen not to do so in this case study for two reasons: to obtain a full range of climate variability and to acknowledge the uncertainties associated with observation data. The latter are interpolated from limited stations and therefore have high pairwise correlationsranging from 0.69 to 0.99 with a median and mean value of 0.87 and 0.88, respectively, for daily rainfall. These conclusions were drawn from a case study in Australia, but could be extended to general guidelines of using weather generators for climate change and variability studies.
机译:四个天气生成器,即每日气候时间序列的广义线性模型的R包版本(RGLIMCLIM),随机气候库(SCL),R包多站点降水生成器(RGENERATRPREC)和R包多站点自动回归天气发电机(RMAWGEN),用于为澳大利亚的一个小流域产生多地点的随机日降雨。结果表明:(1)这四个模型在年,月和日降雨量的发生和数量,日极端,多天极端和干/湿法术长度方面均产生了合理的结果。但是,他们还模拟了大范围的可变性,这不仅证明了多个天气生成器而不是单一模型的优势,而且更适合于气候变化和可变性影响研究。 (2)每个模型因其理论和原理不同而各有优缺点。这增强了使用多个模型的好处。 (3)与观测值相比,可以对模型进行进一步的校准/改进,使其具有更好的性能。但是,在本案例研究中选择不这样做有两个原因:获得全面的气候变异性并确认与观测数据相关的不确定性。后者是从有限的站进行插值的,因此具有成对的高相关性,范围从0.69到0.99,中位数和平均值分别为每日降雨的0.87和0.88。这些结论来自澳大利亚的一个案例研究,但可以扩展到使用天气发生器进行气候变化和变异性研究的一般准则。

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  • 来源
    《Theoretical and applied climatology》 |2018年第4期|1027-1046|共20页
  • 作者单位

    CSIRO Land & Water, Private Bag 5, Wembley, WA 6913, Australia;

    CSIRO Land & Water, GPO Box 1700, Canberra, ACT, Australia;

    Univ Lancaster, Lancaster Environm Ctr, Lancaster LA1 4YQ, England;

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