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Empirical Probability Models to Predict Precipitation Levels over Puerto Rico Stations

机译:预测波多黎各气象站降水水平的经验概率模型

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摘要

A new algorithm is proposed to predict the level of rainfall (above normal, normal, and below normal) in Puerto Rico that relies on probability and empirical models. The algorithm includes a theoretical probability model in which parameters are expressed as regression equations containing observed meteorological variables. Six rainfall stations were used in this study to implement and assess the reliability of the models. The stations, located throughout Puerto Rico, have monthly records that extend back 101 yr. The maximum likelihood method is used to estimate the parameters of the empirical probability models. A variable selection (VS) algorithm identifies the minimum number of variables that maximize the correlation between predictors and a predictand. The VS algorithm is used to identify the initial point and the maximum likelihood is optimized by using the sequential quadratic programming algorithm. Ten years of cross validation were applied to the results from six stations. The proposed method outperforms both climatology and damped persistence models. Results suggest that the methodology implemented here can be used as a potential tool to predict the level of rainfall at any station located on a tropical island, assuming that at least 50 yr of monthly rainfall observations are available. Model analyses show that meteorological indices can be used to predict rainfall stages.
机译:提出了一种新的算法来预测波多黎各的降雨水平(高于正常,正常和低于正常),该算法依赖于概率和经验模型。该算法包括一个理论概率模型,其中参数表示为包含观察到的气象变量的回归方程。本研究使用六个降雨站来实施和评估模型的可靠性。这些电台遍布波多黎各,每个月的记录可以追溯到101年。最大似然法用于估计经验概率模型的参数。变量选择(VS)算法可识别使预测变量与被预测变量之间的相关性最大化的最小数量的变量。 VS算法用于识别初始点,并通过使用顺序二次规划算法来优化最大似然。六个站的结果应用了十年的交叉验证。所提出的方法优于气候学模型和阻尼持久性模型。结果表明,假设可获得至少50年的每月降雨观测值,此处实施的方法可作为预测热带岛屿上任何站点降水量的潜在工具。模型分析表明,气象指数可用于预测降雨阶段。

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