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Flow forecasting of hirakud reservoir with ARIMA model

机译:用ARIMA模型预测hirakud水库流量。

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In this article flow prediction using ARIMA model has been done and the accuracy of ARIMA model in long-term forecasting has been tested. In this study, using yearly data (since 1995-2015), obtained from Hydrometric station at Hirakud (upstream of Hirakud Dam), the Auto Regressive Integrated Moving average (ARIMA) model is used for prediction of monthly mean inflow and daily inflow to Hirakud Dam reservoir. The XLSTAT, STATA and Microsoft Excel some of the software's which were used to model ARIMA and to validate the results. The methods adopted is to predict the forecasting of the run-off in an one year short-term basis and subsequently the predicted data of that year is included as an observed data set for short-term forecasting of run off for the next year and that value again is treated as observed data base. By this process when both monthly average and daily run off for the year 2030 is predicted when the observed data set used for its prediction is 1995 to 2029, though effectively the observed data set actually available is 1995 to 2015. On the basic of comparison of the results of the various candidate models with observed data like ARIMA (1, 1, 0), ARIMA (2, 1, 0), ARIMA (4, 1, 0) and ARIMA (5, 1, 0), the performance of (5, 1, 0) model is found to be acceptable for monthly stream-flow prediction as it gives comparatively more accurate result.
机译:本文完成了使用ARIMA模型的流量预测,并测试了ARIMA模型在长期预测中的准确性。在这项研究中,使用从Hirakud大坝上游(Hirakud大坝上游)的Hirakud水文站获得的年度数据(自1995年至2015年),使用自动回归综合移动平均值(ARIMA)模型预测Hirakud的每月平均流入量和每日流入量大坝水库。 XLSTAT,STATA和Microsoft Excel的某些软件用于对ARIMA进行建模并验证结果。所采用的方法是对一年内短期径流的预报进行预测,随后将该年的预报数据作为观察数据集用于下一年的短期径流预报,并且值再次被视为观察数据库。通过此过程,当用于预测的观测数据集为1995年至2029年时,可以预测2030年的月平均径流量和日径流量,尽管实际上实际可用的观测数据集为1995年至2015年。具有ARIMA(1、1、0),ARIMA(2、1、0),ARIMA(4、1、0)和ARIMA(5、1、0)等观测数据的各种候选模型的结果发现(5,1,0)模型可以接受每月流量预测,因为它给出了相对准确的结果。

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