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Prediction of Ground Water Table Using NF-GMDH Based Evolutionary Algorithms

机译:基于NF-GMDH的进化算法预测地下水位

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摘要

Groundwater, as the key element of water resources, can play inevitably substantial role in managing groundwater aquafers.In fact, a ferocious demand for acquiring precise estimation of groundwater table is of remarkable significance for analyzing water resources systems.A wide range of artificial intelligence techniques were used to predict groundwater table with highly convincing level of precision.Hence, this investigation aims to present an integration of a neuro-fuzzy (NF) system and group method of data handling (GMDH) in order to forecast the ground water table (GWT).The NF-GMDH network has been improved by means of the particle swarm optimization (PSO) and gravitational search algorithm (GSA) as evolutionary algorithms.The proposed methods were developed using records of two wells in Illinois State, USA.For this purpose, datasets related to time series of GWT have been grouped into three sections: training, testing, and validation phases.Through training and testing phases, the efficiency of the NF-GMDH methods were studied.The performances of proposed techniques were compared to the performance of radial basis function-neural network (RBF-NN).Evaluation of statistical results indicated which NF-GMDH-PSO network (R = 0.973 and RMSE = 0.545) is capable of providing higher level of precision rather than the NF-GMDH-GSA network (R = 0.969 and RMSE = 0.618) and RBF-NN (R = 0.814 and RMSE =1.41).Also, conducting an external validation for the improved NF-GMDH models showed the most permissible level of precision.
机译:地下水作为水资源的关键要素,在地下水管理中不可避免地扮演着重要的角色。事实上,对获取地下水位的精确估算的巨大需求对于分析水资源系统具有重要意义。因此,本研究旨在提出神经模糊(NF)系统和数据处理组方法(GMDH)的集成,以预测地下水位(GWT)。 )。通过粒子群优化(PSO)和重力搜索算法(GSA)作为进化算法对NF-GMDH网络进行了改进,该方法是利用美国伊利诺伊州两口井的记录开发的。 ,与GWT时间序列相关的数据集分为三个部分:训练,测试和验证阶段。通过训练和测试阶段,研究了NF-GMDH方法的效率,将所提出的技术的性能与径向基函数神经网络(RBF-NN)的性能进行了比较。统计结果的评估表明,NF-GMDH-PSO网络(R = 0.973和与NF-GMDH-GSA网络(R = 0.969和RMSE = 0.618)和RBF-NN(R = 0.814和RMSE = 1.41)相比,RMSE = 0.545)能够提供更高的精度。改进的NF-GMDH模型显示了最高的精度水平。

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