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首页> 外文期刊>Journal of hydrometeorology >Evaluating Stochastic Precipitation Generators for Climate Change Impact Studies of New York City's Primary Water Supply
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Evaluating Stochastic Precipitation Generators for Climate Change Impact Studies of New York City's Primary Water Supply

机译:评价纽约市初级供水的气候变化随机降水发生器

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Watersheds located in the Catskill Mountains of southeastern New York State contribute about 90% of the water to the New York City water supply system. Recent studies show that this region is experiencing increasing trends in total precipitation and extreme precipitation events. To assess the impact of this and other possible climatic changes on the water supply, there is a need to develop future climate scenarios that can be used as input to hydrological and reservoir models. Recently, stochastic weather generators (SWGs) have been used in climate change adaptation studies because of their ability to produce synthetic weather time series. This study examines the performance of a set of SWGs with varying levels of complexity to simulate daily precipitation characteristics, with a focus on extreme events. To generate precipitation occurrence, three Markov chain models (first, second, and third orders) were evaluated in terms of simulating average and extreme wet days and dry/wet spell lengths. For precipitation magnitude, seven models were investigated, including five parametric distributions, one resampling technique, and a polynomial-based curve fitting technique. The methodology applied here to evaluate SWGs combines several different types of metrics that are not typically combined in a single analysis. It is found that the first-order Markov chain performs as well as higher orders for simulating precipitation occurrence, and two parametric distribution models (skewed normal and mixed exponential) are deemed best for simulating precipitation magnitudes. The specific models that were found to be most applicable to the region may be valuable in bottom-up vulnerability studies for the watershed, as well as for other nearby basins.
机译:位于纽约州东南部卡茨基尔山脉的分水岭为纽约市供水系统贡献了约90%的水。最近的研究表明,该地区总降水量和极端降水事件呈增加趋势。为了评估这一变化和其他可能的气候变化对供水的影响,需要制定未来气候情景,作为水文和水库模型的输入。近年来,随机天气发生器(SWG)由于能够生成合成天气时间序列而被用于气候变化适应研究。本研究考察了一组复杂程度不同的SWG的性能,以模拟每日降水特征,重点关注极端事件。为了生成降水发生率,根据模拟平均和极端湿润日以及干湿期长度,对三个马尔可夫链模型(一阶、二阶和三阶)进行了评估。对于降水量,研究了七种模型,包括五种参数分布、一种重采样技术和一种基于多项式的曲线拟合技术。这里用于评估SWG的方法结合了几种不同类型的指标,这些指标通常不会在一次分析中结合。结果表明,一阶马尔可夫链与高阶马尔可夫链对降水发生的模拟效果相同,两种参数分布模型(偏正态分布和混合指数分布)被认为是模拟降水量的最佳模型。被发现最适用于该地区的具体模型可能对该流域以及附近其他流域的自下而上脆弱性研究有价值。

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