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Modeling the Neuman's well function by an artificial neural network for the determination of unconfined aquifer parameters

机译:通过人工神经网络对Neuman井函数进行建模,以确定无限制含水层参数

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An artificial neural network is designed as an improved alternative approach to the conventional type-curve matching technique for the determination of unconfined aquifer parameters. The network is implemented in a six-step protocol consisted of input selection, data splitting, design of network architecture, determination of network structure, network training, and network validation. The network is trained for the well function of unconfined aquifers by the back-propagation technique, adopting the Levenberg-Marquardt optimization algorithm. By applying a principal component analysis (PCA) on the training input data and through a trial-and-error procedure, the structure of the network is optimized with the topology of (3 x 6 x 3). The replicative, predictive, and structural validity of the developed network are evaluated with synthetic and real field data. The network eliminates graphical error inherent in the type-curve matching technique and provides an automatic and fast procedure for aquifer parameter estimation, particularly when analyzing many alternative pumping tests routinely obtained from continuous data loggers/data collection systems.
机译:人工神经网络被设计为传统类型曲线匹配技术的改进替代方法,用于确定无侧限含水层参数。该网络以六步协议实现,包括输入选择,数据拆分,网络体系结构设计,网络结构确定,网络培训和网络验证。通过使用Levenberg-Marquardt优化算法,通过反向传播技术对网络进行无约束含水层的良好功能训练。通过在训练输入数据上应用主成分分析(PCA)并通过反复试验过程,使用(3 x 6 x 3)的拓扑优化网络的结构。已开发网络的复制性,预测性和结构有效性通过综合和实际数据进行评估。该网络消除了类型曲线匹配技术中固有的图形错误,并提供了自动而快速的含水层参数估算程序,尤其是在分析从连续数据记录器/数据收集系统常规获得的许多替代抽水测试时。

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