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A prediction model for the level of well water

机译:井水水位预测模型

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There is a nonlinear relationship between rainfall and well water levels. This is one of the most complicated hydrologic phenomena to understand due to the existence of spatial and temporal incoherent geomorphic and climatic factors. The aim of this study is to predict the well water level by the artificial neural networks. A well is located on the campus area of Izmir Institute of Technology, Izmir, Turkey. While precipitation, outside temperature, and evaporation formed the input vector, the water levels were the target outputs. Precipitation and evaporation data were also recorded on the same campus area. The feed forward back propagation neural network is employed using the package program, called NeuroSolutions for Excel, due to its success in learning process, creating graphics for the results and sensitivity analysis. The findings of this study show that the model can successfully predict water levels in the well, with mean absolute error (MAE) of 37 cm and correlation coefficient (R) of 0.91 in the training stage and MAE = 0.40 cm and R = 0.80 in the testing stage. The sensitivity analysis results revealed that the outside temperature is the most effective parameter and theevaporation was least.
机译:降雨与井水位之间存在非线性关系。由于存在时空不连贯的地貌和气候因素,这是最复杂的水文现象之一。这项研究的目的是通过人工神经网络预测井水位。一口井位于土耳其伊兹密尔的伊兹密尔技术学院的校园内。虽然降水,外界温度和蒸发形成了输入矢量,但水位却是目标输出。降水和蒸发数据也记录在同一校园区域。由于其在学习过程中的成功,为结果和灵敏度分析创建图形的功能,因此使用名为Excel的NeuroSolutions软件包程序来使用前馈传播神经网络。这项研究的结果表明,该模型可以成功预测井中的水位,训练阶段的平均绝对误差(MAE)为37 cm,相关系数(R)为0.91,MAE = 0.40 cm,R = 0.80。测试阶段。灵敏度分析结果表明,外界温度是最有效的参数,蒸发最小。

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