Generation of rainfall data series by using the Markov Chain model in three selected sites in the Kurdistan Region, Iraq

Evan Hajani, Gaheen Sarma
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Abstract

Rainfall forecasting can play a significant role in the planning and management of water resource systems. This study employs a Markov chain model to examine the patterns, distributions and forecast of annual maximum rainfall (AMR) data collected at three selected stations in the Kurdistan Region of Iraq using 32 years of 1990 to 2021 rainfall data. A stochastic process is used to formulate three states (i.e., decrease—"d"; stability—"s"; and increase—"i") in a given year for estimating quantitatively the probability of making a transition to any other one of the three states in the following year(s) and in the long run. In addition, the Markov model is also used to forecast the AMR data for the upcoming five years (i.e., 2022–2026). The results indicate that in the upcoming 5 years, the probability of the annual maximum rainfall becoming decreased is 44%, that becoming stable is 16%, and that becoming increased is 40%. Furthermore, it is shown that for the AMR data series, the probabilities will drop slowly from 0.433 to 0.409 in about 11 years, as indicated by the average data of the three stations. This study reveals that the Markov model can be used as an appropriate tool to forecast future rainfalls in such semi-arid areas as the Kurdistan Region of Iraq.

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利用马尔可夫链模型在伊拉克库尔德斯坦地区三个选定地点生成降水数据序列
降雨预报可以在水资源系统的规划和管理中发挥重要作用。本研究采用马尔可夫链模型,利用1990年至2021年32年的降雨数据,对伊拉克库尔德斯坦地区3个站点收集的年最大降雨量(AMR)数据进行了模式、分布和预测。使用随机过程来表示三种状态(即,减少-“d”;稳定——“s”;并在给定年份增加-“i”),以定量估计在接下来的一年或长期内过渡到三种状态中的任何一种状态的可能性。此外,马尔可夫模型还用于预测未来五年(即2022-2026年)的AMR数据。结果表明,未来5年,年最大降水量减少的概率为44%,稳定的概率为16%,增加的概率为40%。此外,从3个台站的平均数据来看,AMR数据序列的概率在11年左右的时间内从0.433缓慢下降到0.409。该研究表明,马尔可夫模型可以作为预测伊拉克库尔德斯坦地区等半干旱地区未来降雨量的适当工具。
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