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The prediction of aquifer groundwater level based on spatial clustering approach using machine learning

机译:采用机器学习的空间聚类方法预测含水层地下水位

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摘要

Water resources management requires a proper understanding of the status of available and exploitable water. One of the useful management tools is the use of simulation models that are highly efficient in spite of the complex problems in the groundwater sector. In the present study, three data-based models, namely, group method of data handling (GMDH), Bayesian network (BN), and artificial neural network (ANN), have been investigated to simulate the groundwater levels and assess the quantitative status of aquifers. Five observation wells were selected in Birjand aquifer using spatial clustering to analyze and evaluate the aquifer. To determine the effective variables in predicting groundwater level, 10 scenarios were developed by combining several variables, including groundwater level in the previous month, aquifer exploitation, surface recharge, precipitation, temperature, and evaporation. Results showed that the GMDH model with three input variables, i.e., the groundwater level in the previous month, aquifer exploitation, and precipitation, had the highest prediction performance, RMSE, NASH, MAPE, and R-2 of which were obtained equal to 0.074, 0.97, 0.0037, and 0.97, respectively. Furthermore, Taylor's diagram showed that the predicted values using the GMDH model had the highest correlation with the observational data. Hydrograph simulation was performed for 6 years to analyze the condition of the aquifer. The results showed that the groundwater level is in critical condition in this aquifer, and a 1.2-m groundwater loss was predicted for this aquifer. The findings of this study show that the management of the studied aquifer is necessary to improve its current situation.
机译:水资源管理需要了解可用和可利用水的地位。其中一项有用的管理工具是使用仿真模型,尽管地下水部门的复杂问题仍然是高效的。在本研究中,已经研究了三种基于数据处理(GMDH)的基于数据处理(GMDH)的组方法,贝叶斯网络(BN)和人工神经网络(ANN),以模拟地下水位并评估定量状态含水层。使用空间聚类在Birjand Aquifer中选择五个观察孔,分析和评估含水层。为了确定预测地下水位的有效变量,通过组合多个变量,包括上个月地下水位,含水层剥削,表面充电,降水,温度和蒸发来开发10个情景。结果表明,具有三个输入变量的GMDH模型,即前个月的地下水位,含水层剥削和降水,具有等于0.074的最高预测性能,RMSE,NASH,MAPE和R-2 ,0.97,0.0037和0.97分别。此外,泰勒的图表明,使用GMDH模型的预测值与观察数据具有最高的相关性。进行6年的水文模拟以分析含水层的状况。结果表明,地下水位在该含水层的危重状态下,对该含水层预测了1.2m-m的地下水损失。本研究的调查结果表明,研究了含水层的管理是提高其当前情况的必要条件。

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