Abstract

Fundamentally, all mathematical models employed in analysis of water-flooding performance implied assumptions to exclude one or more forces to cope with the reservoir heterogeneity. In the beginning of the survey, a series of sensitivity investigations were undertaken to examine the parameters that affect the water-flooding performance in stratified reservoirs. The factors were designed to measure the impact of each force that contributed in water-flooding process. The forces are: viscous force, the force of gravity and capillary forces. Additionally, the cross flow phenomena which result from the viscosity and gravity segregation are investigated. The parameters that affected performance to a high degree were sampled randomly to create a knowledge domain with specific inputs and target outputs. In this case, it was the final oil recovery factor by reservoir simulator tool. This domain is used as input (supplied solved problems) to the proxy model (artificial neural network) for adjusting the magnitude of the connections between the neurons during training process to generate a model that can predict the performance of the water-flooding in such reservoirs within a limited range with very minor percentage of error. This model can anticipate the performance of the water-flooding process in heterogeneous reservoir when supplied with 12 key parameters (mobility ratio, density of fluids, dipping angle, permeability ordering, heterogeneity degree, injection rate, reservoir thickness, porosity, and permeability in 3D and reservoir depth). The average absolute percentage of error is about 4.6% particularly and error standard deviation about 8.7% with correlation coefficient between result collected from simulation and ANN is about 99.1%, when the system parameters are within the range of data that was used during the training. Key words: Secondary recovery techniques, water flooding, Neural Network, Stratified reservoirs.

Highlights

  • Water-flooding is a popular secondary recovery method which is responsible for most oil produced beyond the primary recovery mechanisms (Willhite, 1986)

  • Water flooding is used in oil reservoirs to increase the rate of oil production and oil recovery

  • ElKhatib (1985) presented an extension to Hiatt’s work by publishing a model which takes into account the variation in the other rock parameters other than the variation in permeability. He investigated the difference between the communicating and the non-communicating system and compared their impacts on the water-flooding performance

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Summary

Full Length Research

All mathematical models employed in analysis of water-flooding performance implied assumptions to exclude one or more forces to cope with the reservoir heterogeneity. The parameters that affected performance to a high degree were sampled randomly to create a knowledge domain with specific inputs and target outputs In this case, it was the final oil recovery factor by reservoir simulator tool. It was the final oil recovery factor by reservoir simulator tool This domain is used as input (supplied solved problems) to the proxy model (artificial neural network) for adjusting the magnitude of the connections between the neurons during training process to generate a model that can predict the performance of the water-flooding in such reservoirs within a limited range with very minor percentage of error.

INTRODUCTION
THEORETICAL FRAMEWORK
THE PROCESS
Simulation model description
Sensitivity cases description
ANALYSIS OF SIMULATION RESULT
Kro Krw sin
Random distribution of permeability
NEURAL NETWORK DESCRIPTION
Degree of heterogeneity
Conclusion
ANN recovery factor Values
Future studies
Findings
Normal regression simulation values
Full Text
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