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- Title
Development of a Prediction Model for Gas Hydrate Formation in Multiphase Pipelines by Artificial Intelligence.
- Authors
Sayani, Jai Krishna Sahith; Sivabalan, Vinayagam; Foo, Khor Siak; Pedapati, Srinivasa Rao; Lal, Bhajan
- Abstract
A prediction model is developed by means of artificial neural networks (ANNs) to determine the gas hydrate formation kinetics in multiphase gas dominant pipelines with crude oil. Experiments are conducted to determine the rate of formation and reaction kinetics of hydrates formation in multiphase systems. Based on the results, an artificial intelligence model is proposed to predict the gas hydrate formation rate in multiphase transmission pipelines. Two ANN models are suggested with single‐layer perceptron (SLP) and multilayer perceptron (MLP). The MLP shows more accurate prediction when compared to SLP. The models were predicted accurately with high prediction accuracy both for the pure and multiphase systems.
- Subjects
GAS hydrates; ARTIFICIAL intelligence; PREDICTION models; NATURAL gas pipelines; PETROLEUM pipelines; ARTIFICIAL neural networks
- Publication
Chemical Engineering & Technology, 2022, Vol 45, Issue 8, p1482
- ISSN
0930-7516
- Publication type
Article
- DOI
10.1002/ceat.202100359