日合成降水序列的生成:在拉普拉塔河流域的分析与应用

D. H. M. Detzel, M. Mine
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引用次数: 12

摘要

降水分析是水利工程建设和维护的一系列重要水文研究的一部分。然而,记录中的缺陷和限制是研究人员经常遇到的障碍。克服这些障碍的一个可行的解决方案是生成合成系列。这项工作的主要目标是构建和验证一个模型,用于生成日尺度的合成降雨序列。建立了一个参数模型,其中的发生率由随机马尔可夫过程决定,累积降雨量使用混合指数概率分布计算。由于文献中没有发现使用本文提出的概率分布在拉普拉塔盆地的研究,为了验证模型的准确性,我们使用了几个显著性检验和相关标准。该方法在位于巴西南部和东南部的巴拉那河和乌拉圭河流域的11个雨量站进行了研究,取得了良好的效果。本文还对与极端事件和干旱有关的模式性能作了进一步分析。
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Generation of Daily Synthetic Precipitation Series: Analyses and Application in La Plata River Basin
Precipitation analysis is embedded in a range of important hydrological studies for hydraulic works construction and maintenance. However, flaws and limitations in records are obstacles often encountered by researchers. One feasible solution for overcoming these obstacles is to generate synthetic series. The main objective of this work is to structure and validate a model for generating synthetic rainfall series at a daily scale. A parametric model has been constructed, where the occurrences are determined by a stochastic Markov process and the cumulative rainfall quantities are computed using a mixed exponential probability distribution. Since no previous studies using the proposed probability distribution in La Plata Basin were found in the literature, several significance tests and relevant criteria were applied, in order to verify the model accuracy. The approach was studied in 11 rainfall stations inside Parana and Uruguay rivers basins, located in Brazilian South and Southeast regions, obtaining good results. Additional analyses of the model performance related to extreme events and droughts are also present.
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