Initial study of application of Neural Networks to predict flow patterns in multiphase flow
DOI:
https://doi.org/10.14808/sci.plena.2022.084802Keywords:
multiphase flow, flow pattern, neural networkAbstract
The study of flow patterns in multiphase flow is widely used in the oil industry. Many tools are being developed to help predict these flow patterns. Artificial Intelligence is a tool with high performance and great use to characterize physical phenomena and can be used to predict these flow patterns in multiphase flow. We developed an Artificial Neural Network to recognize and predict the flow patterns of multiphase flow using an experimental database. In addition to using the neural network, data processing was also carried out to improve the tool's effectiveness. For a complete analysis, we trained the network with several combinations of the patterns, the patterns being: intermittent, annular and stratified. We did not use the bubble pattern due to the difference in the amount of data available between this and the other patterns. The net was up to 90% effective in some combinations of the analysis between flow patterns. Analyzing the 3 patterns together, the network showed an efficiency of approximately 67%. We analyzed the results of the net error behavior during its training and the hit rate after training. In this article, we used the artificial neural network as a tool to predict the flow pattern in the multiphase flow, with the maximum available flow parameters.
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Copyright (c) 2022 Jair Rodrigues Neyra, Thiago Rafael da Silva Moura
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