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Prediction of Groundwater Level in Ardebil Plain Using Support Vector Regression and M5 Tree Model

机译:基于支持向量回归和M5树模型的阿德比尔平原地下水位预测

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The Ardebil plain, which is located in northwest Iran, has been faced with a recent and severe decline in groundwater level caused by a decrease of precipitation, successive long-term droughts, and overexploitation of groundwater for irrigating the farmlands. Predictions of groundwater levels can help planners to deal with persistent water deficiencies. In this study, the support vector regression (SVR) and M5 decision tree models were used to predict the groundwater level in Ardebil plain. The monthly groundwater level data from 24 piezometers for a 17-year period (1997 to 2013) were used for training and test of models. The model inputs included the groundwater levels of previous months, the volume of entering precipitation into every cell, and the discharge of wells. The model output was the groundwater level in the current month. In order to evaluate the performance of models, the correlation coefficient (R) and the root-mean-square error criteria were used. The results indicated that both SVR and M5 decision tree models performed well for the prediction of groundwater level in the Ardebil plain. However, the results obtained from the M5 decision tree model are more straightforward, more easily applied, and simpler to interpret than those from the SVR. The highest accuracy was obtained using the SVR model to predict the groundwater level from the Ghareh Hasanloo and Khalifeloo piezometers with R = 0.996 and R = 0.983, respectively.
机译:位于伊朗西北部的阿尔德比尔平原,由于降水减少,连续的长期干旱以及用于灌溉农田的地下水的过度开采,导致地下水位近期严重下降。对地下水位的预测可以帮助规划人员应对持续的缺水问题。在这项研究中,使用支持向量回归(SVR)和M5决策树模型来预测Ardebil平原的地下水位。使用来自24个压力计的17年(1997年至2013年)的每月地下水位数据进行模型的训练和测试。模型输入包括前几个月的地下水位,每个单元的降水输入量以及井的排放量。模型输出为当月的地下水位。为了评估模型的性能,使用了相关系数(R)和均方根误差准则。结果表明,SVR和M5决策树模型在Ardebil平原的地下水位预测中均表现良好。但是,从M5决策树模型获得的结果比从SVR获得的结果更直接,更易于应用且更易于解释。使用SVR模型从Ghareh Hasanloo和Khalifeloo压力计分别预测R = 0.996和R = 0.983可获得最高的准确度。

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  • 来源
    《Ground water 》 |2018年第4期| 636-646| 共11页
  • 作者单位

    Univ Tabriz, Dept Water Engn, Tabriz, Iran;

    Shahrekord Univ, Fac Agr, Dept Water Engn, Rahbar Blvd,POB 8818634141, Shahrekord, Chaharmahal & B, Iran;

    Islamic Azad Univ, Dept Water Engn, Ahar Branch, Ahar, Iran;

    Univ St Thomas, Sch Engn, 2115 Summit Ave, St Paul, MN 55105 USA;

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