Flood Predicting in Karkheh River Basin Using Stochastic ARIMA Model

K. H. Machekposhti, H. Sedghi, Abdolrasoul Telvari, H. Babazadeh
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引用次数: 1

Abstract

Floods have huge environmental and economic impact. Therefore, flood prediction is given a lot of attention due to its importance. This study analysed the annual maximum streamflow (discharge) (AMS or AMD) of Karkheh River in Karkheh River Basin for flood predicting using ARIMA model. For this purpose, we use the Box-Jenkins approach, which contains four-stage method model identification, parameter estimation, diagnostic checking and forecasting (predicting). The main tool used in ARIMA modelling was the SAS and SPSS software. Model identification was done by visual inspection on the ACF and PACF. SAS software computed the model parameters using the ML, CLS and ULS methods. The diagnostic checking tests, AIC criterion, RACF graph and RPACF graphs, were used for selected model verification. In this study, the best ARIMA models for Annual Maximum Discharge (AMD) time series was (4,1,1) with their AIC value of 88.87. The RACF and RPACF showed residuals’ independence. To forecast AMD for 10 future years, this model showed the ability of the model to predict floods of the river under study in the Karkheh River Basin. Model accuracy was checked by comparing the predicted and observation series by using coefficient of determination (R2). Keywords—Time series modelling, stochastic processes, ARIMA model, Karkheh River.
基于随机ARIMA模型的卡尔赫河流域洪水预测
洪水对环境和经济造成巨大影响。因此,洪水预报由于其重要性而受到人们的高度重视。本研究利用ARIMA模型分析了卡尔赫河流域的年最大流量(流量)(AMS或AMD)进行洪水预测。为此,我们使用Box-Jenkins方法,该方法包含四阶段方法模型识别,参数估计,诊断检查和预测(预测)。ARIMA建模的主要工具是SAS和SPSS软件。通过目视检查ACF和PACF来进行模型识别。SAS软件采用ML、CLS和ULS方法计算模型参数。采用AIC标准、RACF图和RPACF图对所选模型进行验证。在本研究中,年度最大流量(AMD)时间序列的最佳ARIMA模型为(4,1,1),其AIC值为88.87。RACF和RPACF具有残差独立性。为了预测未来10年的AMD,该模型显示了该模型对卡尔赫河流域所研究河流洪水的预测能力。采用决定系数(R2)对预测序列与观测序列进行比较,检验模型的准确性。关键词:时间序列建模;随机过程;ARIMA模型;
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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