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A probabilistic model for the prediction of meteorological droughts in Venezuela

机译:委内瑞拉气象干旱的概率模型

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Droughts occur when rainfalls diminish or cease for several days, months or years. In the last five years several meteorological droughts have occurred in Venezuela, impacting negatively water supply, hydropower and agriculture sectors. In order to provide institutions with tools to manage the water resources, a probabilistic model has been developed and validated to predict in advance the occurrence of meteorological droughts in the country using monthly series of 632 rainfall stations. The standardized precipitation index (SPI) was used to identify dry events of each rainfall series. A principal component analysis associated to a geographic information system was used to define geographically continuous homogeneous sub-regions (HS) for the values of SPI. For each HS a representative station was selected (reference station, RS). A lagged correlation analysis was applied to the SPI series of the RS and the corresponding series of anomaly indices of 10 macroclimatic variables (MV). The four MV with higher correlation in each RS were organized into three levels (-1, 0 and +1), using the quartiles Q_2 and Q_4 as values of truncation. The SPI series are expressed in four ranges: non-dry, moderately dry, severely dry and extremely dry. The conditional probability of occurrence of the four ranges of SPI was determined in every combination that can occur in the four VM best correlated. The resulting model in each RS was validated using the SPI series from 20 meteorological stations operated by the Servicio de Meteorología de la Fuerza Aérea Venezolana (Meteorological Service of the Venezuelan Air Force) which were not used in the development of the models. Results indicate that models detected the occurrence of ES with an accuracy ranging from 85.19 to 100%; the success is directly proportional to the length of records used in the development of the model. This methodology could be applied in any country that has long, continuous and homogeneous rainfall series.
机译:当降雨减少或持续数天,数月或数年时,就会发生干旱。在过去的五年中,委内瑞拉发生了几次气象干旱,对供水,水电和农业部门造成了负面影响。为了向机构提供管理水资源的工具,已经开发并验证了概率模型,以使用每月632个降雨站的序列来提前预测该国气象干旱的发生。标准化降水指数(SPI)用于识别每个降雨序列的干旱事件。使用与地理信息系统相关的主成分分析来定义SPI值的地理上连续的同质子区域(HS)。对于每个HS,选择一个代表站(参考站,RS)。滞后相关分析应用于RS的SPI系列和10个大气候变量(MV)的相应系列的异常指数。使用四分位数Q_2和Q_4作为截断值,将每个RS中具有较高相关性的四个MV分为三个级别(-1、0和+1)。 SPI系列表示为四个范围:非干燥,中度干燥,重度干燥和极度干燥。在可能最佳关联的四个VM中的每种组合中,确定出现四个SPI范围的条件概率。每个RS中得到的模型都使用委内瑞拉空军气象局服务的20个气象站的SPI系列进行了验证,这些模型未在模型开发中使用。结果表明,模型检测到ES的发生的准确度范围为85.19至100%。成功与模型开发中使用的记录长度成正比。该方法可用于降雨序列较长,连续且均一的任何国家。

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