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A Comparative Study of Autoregressive, Autoregressive Moving Average, Gene Expression Programming and Bayesian Networks for Estimating Monthly Streamflow

机译:自回归,自回归移动平均,基因表达程序设计和贝叶斯网络估计月流量的比较研究

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摘要

In the recent years, artificial intelligence techniques have attracted much attention in hydrological studies, while time series models are rarely used in this field. The present study evaluates the performance of artificial intelligence techniques including gene expression programming (GEP), Bayesian networks (BN), as well as time series models, namely autoregressive (AR) and autoregressive moving average (ARMA) for estimation of monthly streamflow. In addition, simple multiple linear regression (MLR) was also used. To fulfill this objective, the monthly streamflow data of Ponel and Toolelat stations located on Shafarood and Polrood Rivers, respectively in Northern Iran were used for the period of October 1964 to September 2014. In order to investigate the models' accuracy, root mean square error (RMSE), mean absolute error (MAE) and coefficient of determination (R-2) were employed as the error statistics. The obtained results demonstrated that the single AR and ARMA time series models had better performance in comparison with the single GEP, BN and MLR methods. Furthermore, in this study, six hybrid models known as GEP-AR, GEP-ARMA, BN-AR, BN-ARMA, MLR-AR and MLR-ARMA were developed to enhance the estimation accuracy of the monthly streamflow. It was concluded that the developed hybrid models were more accurate than the corresponding single artificial intelligence and time series models. The obtained results confirmed that the integration of time series models and artificial intelligence techniques could be of use to improve the accuracy of single models in modeling purposes related to the hydrological studies.
机译:近年来,人工智能技术在水文学研究中引起了很多关注,而时间序列模型在该领域却很少使用。本研究评估了人工智能技术的性能,包括基因表达编程(GEP),贝叶斯网络(BN)以及时间序列模型,即自回归(AR)和自回归移动平均(ARMA),用于估算月流量。此外,还使用了简单多元线性回归(MLR)。为了实现这一目标,分别使用了伊朗北部Shafarood河和Polrood河上Ponel和Toolelat站的月流量数据,时间为1964年10月至2014年9月。为了研究模型的准确性,均方根误差(RMSE),平均绝对误差(MAE)和测定系数(R-2)被用作误差统计量。获得的结果表明,与单个GEP,BN和MLR方法相比,单个AR和ARMA时间序列模型具有更好的性能。此外,在这项研究中,开发了六个混合模型,分别称为GEP-AR,GEP-ARMA,BN-AR,BN-ARMA,MLR-AR和MLR-ARMA,以提高月流量的估计准确性。结论是,开发的混合模型比相应的单个人工智能和时间序列模型更准确。获得的结果证实,时间序列模型和人工智能技术的集成可以用于提高单个模型在与水文研究有关的建模目的中的准确性。

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