Analysis of Stream Inflow and Peak Flow of Kainji Lake Using Stochastic Models

Saminu Ahmed, Abdullahi Sarki Zayyanu
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Abstract

The research worked on flood forecasting of Kainji Lake using stochastic models by making use of average monthly inflow data for 30 years from the period of 1990 to 2021 and average annual peak flows data for 21 years from 2000 to 2021 collected from Kainji Dam meteorological station. MINITAB and SPSS software were used for the analysis. The potential models selected for the analysis were ARIMA Models of order (2,1,2) and (2,1,0) for inflows and (1,1,1) and (1,1,0) for peak flows. The selection of these models was done by identifying their features using Auto and Partial Autocorrelation functions of having the lowest values of Mean Absolute Percentage Error (MAPE), Mean Absolute Error (MAE), Sum of Squares (SS) and Mean Squares (MS) when compared to the other models. Furthermore, the analysis of the residuals for Auto and Partial Autocorrelation functions, normal probability and Histogram plots were obtained and used for the validation of the models, the results show ARIMA of order (2,12) and (1,1,1) for in-flow and peak flow were the best. Twelve and a half (12.5) and five (5) years of forecast data for the two cases were obtained. The forecast result showed that the months of August to October 2023 have high inflow values with September having the highest inflow with a value of 3471.33 (m3/sec). This highlighted the importance and usefulness of these models in warning the communities around the study area of likely impending flood events from the months of September to October and also the land around the study area can be used for agricultural purposes during the months of March to July due to low flows.
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基于随机模型的肯济湖入流和峰值分析
利用肯吉坝气象站1990 ~ 2021年30年的月平均入水量和2000 ~ 2021年21年的年平均峰值流量数据,采用随机模型对肯吉湖进行了洪水预报。采用MINITAB和SPSS软件进行分析。为分析选择的潜在模型是流入的顺序为(2,1,2)和(2,1,0)的ARIMA模型,高峰流量的顺序为(1,1,1)和(1,1,0)。这些模型的选择是通过使用与其他模型相比具有最低的平均绝对百分比误差(MAPE),平均绝对误差(MAE),平方和(SS)和均方(MS)的自动和部分自相关函数来识别其特征来完成的。通过对自相关函数和偏自相关函数的残差、正态概率和直方图进行分析,对模型进行了验证,结果表明,流态和峰态的ARIMA(2,12)阶和(1,1,1)阶效果最好。获得了这两个病例的12年半(12.5年)和5年的预测数据。预测结果表明,2023年8 ~ 10月入流量较大,其中9月入流量最大,为3471.33 (m3/sec)。这突出了这些模型在警告研究区域周围社区9月至10月可能即将发生的洪水事件方面的重要性和实用性,并且研究区域周围的土地在3月至7月由于流量低可用于农业目的。
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