Neural network prediction model of fluid displacements in porous media

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作者
Kuwait Univ, Safat, Kuwait [1 ]
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来源
Comput Chem Eng | / Suppl pt A卷 / S515-S520期
关键词
Flow of fluids - Materials handling - Mathematical models - Mixtures - Neural networks - Petroleum chemistry - Porous materials - Recovery - Reservoirs (water) - Water;
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摘要
This paper presents the development and design of an artificial neural network that is able to predict the breakthrough oil recovery of immiscible displacement of oil by water in a two-dimensional vertical cross section. The data used in training the neural network was obtained from the results of fine-mesh numerical simulations. Several network architectures were investigated and trained using the back propagation with momentum algorithm. The neural network that gave the best predictive performance was a two-hidden layer network with 8 neurons in the first hidden layer and 8 neurons in the second hidden layer. This network also performed well against a cross validation test. The reservoir simulation data used so far in the training process was for a homogeneous reservoir, the more general case is still under investigation.
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