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Performance of multiple probability distributions in generating daily precipitation for the simulation of hydrological extremes

机译:用于模拟极端水文的多概率分布在产生每日降水中的性能

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Stochastic weather generators are statistical models widely used to produce climate time series with similar statistical properties to observed data. They are also used as downscaling tools to generate climate change scenarios for impact studies. Precipitation is one of the main variables simulated by weather generators and is also a key variable for impact studies, especially for hydrology. Precipitation is usually simulated by multiple precipitation models which have been proposed for simulating site-specific precipitation. However, these models' performance in simulating watershed-averaged extreme precipitation, especially in representing hydrological extremes, has not been well-investigated. Accordingly, this study compares the performance of six probability distributions (exponential, gamma, skewed normal, mixed exponential, hybrid exponential/Pareto, and Weibull distributions) and a polynomial curve-fitting method in generating precipitation for simulating hydrological extremes over three basins using a set of extreme indices. The results show that except for the exponential distribution (EXP), all of the methods produce the distribution of observed precipitation at the daily, monthly and annual scales reasonably well for all three river basins. Although the three-parameter hybrid exponential/Pareto distribution (EXPP) overestimates precipitation extremes, other three-parameter models produce extremes accurately. The three-parameter mixed exponential (MEXP) distribution outperforms other models for simulating precipitation extremes. However, with respect to representing hydrological extremes, the MEXP distribution is not the best model. When simulating extreme streamflows with synthetic weather data, the EXP distribution shows the worst performance, while the curve fitting method (PN) performs the best. The inferiority of the EXPP distribution in generating extreme precipitation does not propagate to extreme flow simulations. Meanwhile, the performance of WEB is moderate in terms of representing hydrological extremes. Overall, finding the model that best reproduces precipitation for simulating hydrological extremes is not as clear-cut, since the performance of each model is extreme-indices dependent. Taking all of the indices into account, the MEXP and the PN appear to be superior in representing extreme precipitation and hydrological extremes.
机译:随机气象发生器是广泛用于产生气候时间序列的统计模型,这些气候时间序列的统计特性与观测数据相似。它们还用作缩小规模的工具,以生成影响研究的气候变化情景。降水是天气产生者模拟的主要变量之一,也是影响研究尤其是水文学研究的关键变量。降水通常通过多种降水模型进行模拟,这些模型已经提出用于模拟特定地点的降水。但是,这些模型在模拟流域平均极端降水中的性能,特别是在代表水文极端事件方面的性能,尚未得到充分研究。因此,本研究比较了六个概率分布(指数,伽马,偏正态,混合指数,混合指数/帕累托和威布尔分布)的性能,以及多项式曲线拟合方法生成降水来模拟三个流域的水文极端现象。极端指数集。结果表明,除了指数分布(EXP)以外,所有这三种方法都对三个河流域的日,月和年尺度的观测降水产生了合理的分布。尽管三参数混合指数/帕累托分布(EXPP)高估了降水的极端值,但其他三参数模型会精确地产生极端值。三参数混合指数(MEXP)分布优于模拟极端降水的其他模型。但是,就代表水文极端而言,MEXP分布不是最佳模型。当使用合成天气数据模拟极端流量时,EXP分布显示最差的性能,而曲线拟合方法(PN)表现最佳。 EXPP分布在生成极端降水中的劣势不会传播到极端流动模拟中。同时,就表示水文极端事件而言,WEB的性能中等。总体而言,由于每个模型的性能都取决于极端指数,因此找到最能重现降水以模拟水文极端现象的模型并不是那么明确。考虑到所有指标,MEXP和PN在表示极端降水和水文极端事件方面似乎更胜一筹。

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