Extreme Value Modelling of Rainfall Using Poisson-generalized Pareto Distribution: A Case Study Tanzania

E. Iyamuremye, J. Mung'atu, P. Mwita
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引用次数: 3

Abstract

Extreme rainfall events have caused significant damage to agriculture, ecology and infrastructure, disruption of human activities, injury and loss of life. They have also significant social, economical and environmental consequences because they considerably damage urban as well as rural areas. Early detection of extreme maximum rainfall helps to implement strategies and measures, before they occur. Extreme value theory has been used widely in modelling extreme rainfall and in various disciplines, such as financial markets, insurance industry, failure cases. Climatic extremes have been analysed by using either generalized extreme value (GEV) or generalized Pareto (GP) distributions which provides evidence of the importance of modelling extreme rainfall from different regions of the world. In this paper, we focus on Peak Over Thresholds approach where the Poisson-generalized Pareto distribution is considered as the proper distribution for the study of the exceedances. This research considers also use of the generalized Pareto (GP) distribution with a Poisson model for arrivals to describe peaks over a threshold. The research used statistical techniques to fit models that used to predict extreme rainfall in Tanzania. The results indicate that the proposed Poisson-GP distribution provide a better fit to maximum monthly rainfall data. Further, the Poisson-GP models are able to estimate various return levels. Research found also a slowly increase in return levels for maximum monthly rainfall for higher return periods and further the intervals are increasingly wider as the return period is increasing.
基于泊松-广义帕累托分布的降雨极值模型:以坦桑尼亚为例
极端降雨事件对农业、生态和基础设施造成重大破坏,扰乱人类活动,造成人员伤亡。它们还具有严重的社会、经济和环境后果,因为它们对城市和农村地区都造成了严重破坏。早期发现极端最大降雨量有助于在战略和措施发生之前实施这些战略和措施。极值理论已被广泛应用于极端降雨的建模和各个学科,如金融市场、保险业、破产案例。利用广义极值(GEV)或广义帕累托(GP)分布对极端气候进行了分析,这证明了模拟世界不同地区极端降雨的重要性。本文主要讨论峰值超过阈值的方法,认为泊松-广义帕累托分布是研究峰值超过阈值的合适分布。本研究还考虑使用广义帕累托(GP)分布和泊松模型来描述超过阈值的峰值。这项研究使用统计技术来拟合用于预测坦桑尼亚极端降雨的模型。结果表明,所提出的泊松- gp分布能较好地拟合最大月降雨量数据。此外,泊松- gp模型能够估计各种回报水平。研究还发现,在较高的回归期,最大月降雨量的回归水平缓慢增加,而且随着回归期的增加,间隔也越来越宽。
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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