Day 1 Mon, November 11, 2019 2019
DOI: 10.2118/197444-ms
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Compressing Time-Dependent Reservoir Simulations Using Graph-Convolutional Neural Network G-CNN

Abstract: Reservoir simulation results currently provide the basis for important reservoir engineering decisions; grid complexity and non-linearity of these models demand high computational time and memory. The physics-based simulation process must be repeated to increase model prediction accuracy or to perform history matching; consequently, the simulation process is often time-consuming. This paper describes a new methodology based on a deep neural network (DNN) technique, the graph convolutional neural network (G-CNN… Show more

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