Neural Network Modeling of Hydrocarbon Recovery at Petroleum Contaminated Sites

  • Li, J.B. (Faculty of Engineering, University of Regina) ;
  • Huang, G.H. (Faculty of Engineering, University of Regina) ;
  • Huang, Y.F. (Faculty of Engineering, University of Regina) ;
  • Chakma, A. (Faculty of Engineering, University of Regina) ;
  • Zeng, G.M. (Department of Environmental Engineering, Hunan University)
  • Published : 2002.07.01

Abstract

A recurrent artificial neural network (ANN) model is developed to simulate hydrocarbon recovery process at petroleum-contaminated site. The groundwater extraction rate, vacuum pressure, and saturation hydraulic conductivity are selected as the input variables, while the cumulative hydrocarbon recovery volume is considered as the output variable. The experimental data fer establishing the ANN model are from implementation of a multiphase flow model for dual phase remediation process under different input variable conditions. The complex nonlinear and dynamic relationship between input and output data sets are then identified through the developed ANN model. Reasonable agreements between modeling results and experimental data are observed, which reveals high effectiveness and efficiency of the neural network approach in modeling complex hydrocarbon recovery behavior.

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