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Parameters Estimate of Autoregressive Moving Average and Autoregressive Integrated Moving Average Models and Compare Their Ability for Inflow Forecasting | Science Publications

机译:自回归移动平均线和自回归综合移动平均线模型的参数估计,并比较它们的流量预测能力科学出版物

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> In this study the ability of Autoregressive Moving Average (ARMA) and Autoregressive Integrated Moving Average (ARIMA) models in forecasting the monthly inflow of Dez dam reservoir located in Teleh Zang station in Dez dam upstream is estimated. ARIMA model has found a widespread application in many practical sciences. In addition, dam reservoir inflow forecasting is done by some methods such as ordinary linear regression, ARMA and artificial neural networks. On the other hand, application of both ARMA and ARIMA models simultaneously in order to compare their ability in autoregressive forecast of monthly inflow of dam reservoir has not been carried out in previous researches. Therefore, this paper attempts to forecast the inflow of Dez dam reservoir by using ARMA and ARIMA models while increasing the number of parameters in order to increase the forecast accuracy to four parameters and comparing them. In ARMA and ARIMA models, the polynomial was derived respectively with four and six parameters to forecast the inflow. By comparing root mean square error of the model, it was determined that ARIMA model can forecast inflow to the Dez reservoir from 12 months ago with lower error than the ARMA model.
机译: >在这项研究中,估计了自回归移动平均线(ARMA)和自回归综合移动平均线(ARIMA)模型预测位于Dez大坝上游Teleh Zang站的Dez大坝水库月入量的能力。 ARIMA模型已在许多实践科学中得到广泛应用。此外,通过常规线性回归,ARMA和人工神经网络等方法对大坝水库入库量进行预测。另一方面,以前的研究还没有同时应用ARMA模型和ARIMA模型来比较它们在大坝水库月入量的自回归预测中的能力。因此,本文尝试使用ARMA和ARIMA模型预测Dez坝水库入库流量,同时增加参数数量,以将四个参数的预测精度提高并进行比较。在ARMA和ARIMA模型中,分别使用四个和六个参数导出多项式以预测流入量。通过比较模型的均方根误差,可以确定ARIMA模型可以预测12个月前流入Dez储层的流量,其误差低于ARMA模型。

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