4.5 Article

Implementing radial basis function neural networks for prediction of saturation pressure of crude oils

期刊

PETROLEUM SCIENCE AND TECHNOLOGY
卷 34, 期 5, 页码 454-463

出版社

TAYLOR & FRANCIS INC
DOI: 10.1080/10916466.2016.1141217

关键词

Saturation pressure; condensate; oil; genetic algorithm; GA-RBF

资金

  1. departments of research and technology of the National Iranian Oil Company
  2. Iranian Offshore Oil Company

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This study highlights the application of radial basis function (RBF) neural networks for perdition of saturation pressure of gas condensates and oils. The experimental data were collected from literature and cover a vast geographic distribution. Genetic algorithm (GA) was used to determine the optimum values of spread and maximum number of neurons for developed RBF model. The input parameters of the model were the C-1 through C7+ fraction of gas condensates, crude oil, nonhydrocarbon fraction of crude oil (nitrogen [N-2], carbon dioxide [CO2], and hydrogen sulfide [H2S]), specific gravity and molecular weight of C7+ (SG(C7+), MWC7+) and temperature. The output of model was the saturation pressure of crude oil. Different statistical and graphical methods were utilized to examine the accuracy of implemented GA-RBF model. Results of modeling study showed that the GA-RBF model is effective and robust in reproducing the whole data points with an acceptable accuracy.

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