Stochastic Model of the Annual Maximum Rainfall Series Using Probability Distributions

IF 0.8 Q3 MULTIDISCIPLINARY SCIENCES
Nurul Azizah Musakkir, Nurtiti Sunusi, Sri Astuti Thamrin
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Abstract

Rainfall is a natural process that is often characterized by significant variability and uncertainty. Stochastic models of rainfall typically involve the use of probability distributions to describe the likelihood of different outcomes occurring. This study aimed to model the annual maximum of daily rainfall in Makassar City, Indonesia for the period 1980–2022, specifically focusing on the rainy season (November to April) using probability distributions to estimate return periods. The study used the Generalized Extreme Value (GEVD) and Gumbel distributions. The Kolmogorov-Smirnov test was used to determine the suitability of each distribution, and the likelihood ratio test was employed to determine the best-fit model. The Mann-Kendall test was used to detect any trends in the data. The results indicated that the Gumbel distribution was the best-fit model for data in November, December, January, March, and April, while GEV was appropriate for February. No trends were observed in any of the months. The study then estimated the maximum rainfall for various return periods. January produced the highest maximum rainfall estimates for the 2, 3, and 5-year return periods, while February produced the highest maximum rainfall estimates for the 10 and 20-year return periods. Information about maximum rainfall can be valuable for the government and other stakeholders in developing flood prevention strategies and mitigating the effects of heavy rainfall, particularly during the peak months of the rainy season in Makassar City, which are December, January, and February.
基于概率分布的年最大降水序列的随机模型
降雨是一个自然过程,通常具有显著的可变性和不确定性。降雨的随机模型通常涉及使用概率分布来描述不同结果发生的可能性。本研究旨在模拟1980-2022年印度尼西亚望加锡市的年最大日降雨量,特别关注雨季(11月至4月),使用概率分布来估计回归期。本研究采用广义极值分布(GEVD)和甘贝尔分布。采用Kolmogorov-Smirnov检验确定各分布的适宜性,采用似然比检验确定最佳拟合模型。曼-肯德尔检验用于检测数据中的任何趋势。结果表明,对于11月、12月、1月、3月和4月的数据,Gumbel分布最适合,而对于2月的数据,GEV分布最适合。在任何月份都没有观察到趋势。然后,该研究估算了不同回归期的最大降雨量。1月对2年、3年和5年回归期的最大降雨量估计最高,而2月对10年和20年回归期的最大降雨量估计最高。有关最大降雨量的信息对于政府和其他利益攸关方制定防洪战略和减轻暴雨影响具有重要价值,特别是在望加锡市雨季的高峰期,即12月、1月和2月。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
45
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