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A model-based site selection approach associated with regional frequency analysis for modeling extreme rainfall depths in Minas Gerais state, Southeast Brazil

机译:基于模型的站点选择方法与区域频率分析相结合,为巴西东南部米纳斯吉拉斯州的极端降雨深度建模

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摘要

Extreme rainfall data are usually scarce due to the low frequency of these events. However, prior knowledge of the precipitation depth and return period of a design event is crucial to water resource management and engineering. This study presents a model-based selection approach associated with regional frequency analysis to examine the lack of maximum daily rainfall data in Brazil. A generalized extreme values (GEV) distribution was hierarchically fitted using a Bayesian approach and data that were collected from rainfall gauge stations. The GEV model parameters were submitted to a model-based cluster analysis, resulting in regions of homogeneous rainfall regimes. Time-series data of the individual rainfall gauges belonging to each identified region were joined into a new dataset, which was divided into calibration and validation sets to estimate new GEV parameters and to evaluate model performance, respectively. The results identified two distinct rainfall regimes in the region: more and less intense rainfall extremes in the southeast and northwest regions, respectively. According to the goodness of fit measures that were used to evaluate the models, the aggregation level of the parameters in clustering influenced their performance.
机译:由于这些事件的发生频率较低,因此通常很少有极端降雨数据。但是,对设计事件的降水深度和返回期的事先了解对于水资源管理和工程至关重要。这项研究提出了一种基于模型的选择方法,该方法与区域频率分析相关联,以检查巴西缺乏最大的每日降雨量数据。使用贝叶斯方法和从雨量计站收集的数据分层拟合了广义极值(GEV)分布。 GEV模型参数已提交给基于模型的聚类分析,从而产生了均匀降雨区域。将属于每个已识别区域的各个雨量计的时间序列数据合并到一个新的数据集中,该数据集分为校准集和验证集,以分别估算新的GEV参数和评估模型性能。结果确定了该地区两种截然不同的降雨方式:东南部和西北部地区的极端强降雨分别减弱或减弱。根据用于评估模型的拟合度量的优劣,聚类中参数的聚合水平会影响其性能。

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