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首页> 外文期刊>Hydrology and Earth System Sciences >Monitoring and quantifying future climate projections of dryness and wetness extremes: SPI bias
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Monitoring and quantifying future climate projections of dryness and wetness extremes: SPI bias

机译:监测和量化极端干旱和极端潮湿的未来气候预测:SPI偏差

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摘要

The adequacy of the gamma distribution (GD) for monthly precipitation totals is reconsidered. The motivation for this study is the observation that the GD fails to represent precipitation in considerable areas of global observed and simulated data. This misrepresentation may lead to erroneous estimates of the Standardised Precipitation Index (SPI), evaluations of models, and assessments of climate change. In this study, the GD is compared to the Weibull (WD), Burr Type III (BD), exponentiated Weibull (EWD) and generalised gamma (GGD) distribution. These distributions extend the GD in terms of possible shapes (skewness and kurtosis) and the behaviour for large arguments. The comparison is based on the Akaike information criterion, which maximises information entropy and reveals a trade-off between deviation and the numbers of parameters used. We use monthly sums of observed and simulated precipitation for 12 calendar months of the year. Assessing observed and simulated data, (i) the Weibull type distributions give distinctly improved fits compared to the GD and (ii) the SPI resulting from the GD overestimates (underestimates) extreme dryness (wetness).
机译:重新考虑了伽马分布(GD)对于月降水总量的适当性。这项研究的动机是观察到,GD无法代表全球观测和模拟数据中相当大的区域的降水。这种错误陈述可能导致对标准降水指数(SPI)的错误估计,对模型的评估以及对气候变化的评估。在这项研究中,将GD与Weibull(WD),Burr III型(BD),指数Weibull(EWD)和广义伽玛(GGD)分布进行比较。这些分布根据可能的形状(偏度和峰度)和大参数的行为扩展了GD。比较是基于Akaike信息准则,该准则使信息熵最大化,并揭示了偏差与所用参数数量之间的折衷。我们使用一年中12个日历月的每月观测和模拟降水总和。评估观察和模拟的数据,(i)威布尔型分布与GD相比拟合度显着提高,并且(ii)GD过度估计(低估)极端干燥(湿润)导致的SPI。

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