Parameter Estimation in Groundwater Hydrology Using Artificial Neural Networks |
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Authors: | Abdalla Shigidi Luis A. Garcia |
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Affiliation: | 1Assistant Professor, Sudan Univ. of Science and Technology, P.O. Box 10179, Khartoum, Sudan. 2Associate Professor of Civil Engineering at Colorado State Univ. and Director of the Integrated Decision Support (IDS) Group, IDS Group–Civil Engineering, Colorado State Univ., Fort Collins, CO?80523.
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Abstract: | ![]() The capability of artificial neural networks to act as universal function approximators has been traditionally used to model problems in which the relation between dependent and independent variables is poorly understood. In this paper, the capability of an artificial neural network to provide a data-driven approximation of the explicit relation between transmissivity and hydraulic head as described by the groundwater flow equation is demonstrated. Techniques are applied to determine the optimal number of nodes and training patterns needed for a neural network to approximate groundwater parameters for a simulated groundwater modeling case study. Furthermore, the paper explains how such an approximation can be used for the purpose of parameter estimation in groundwater hydrology. |
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Keywords: | Artificial intelligence Ground water Neural networks Parameters Hydrologic models |
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