A novel approach using artificial neural networks (ANNs) for predicting temperature profiles evaluated 27 wells in the Gulf of Mexico. Two artificial neural network models were developed that predict the temperature of the flowing fluid at any depth in flowing oil wells. Back propagation was used in training the networks. The networks were tested using measured temperature profiles from the 27 oil wells. Both neural network models successfully mapped the general temperature‐profile trends of naturally flowing oil wells. The highest accuracy was achieved with a mean absolute relative percentage error of 6.0 per cent. The accuracy of the proposed neural network models to predict the temperature profile is compared to that of existing correlations. Many correlations to predict temperature profiles of the wellbore fluid, for single‐phase or multiphase flow, in producing oil wells have been developed using theoretical principles such as energy, mass and momentum balances coupled with regression analysis. The Neural Network 2 model exhibited significantly lower mean absolute relative percentage error than other correlations. Furthermore, in order to test the accuracy of the neural network models to that of Kirkpatrick’s correlation, a mathematical model was developed for Kirkpatrick’s flowing temperature gradient chart.
Article navigation
1 September 2000
Technical Paper|
September 01 2000
Predicting temperature profiles in producing oil wells using artificial neural networks Available to Purchase
Fred F. Farshad;
Fred F. Farshad
University of Louisiana, Lafayette, Louisiana, USA
Search for other works by this author on:
James D. Garber;
James D. Garber
University of Louisiana, Lafayette, Louisiana, USA
Search for other works by this author on:
Juliet N. Lorde
Juliet N. Lorde
University of Louisiana, Lafayette, Louisiana, USA
Search for other works by this author on:
Publisher: Emerald Publishing
Online ISSN: 1758-7077
Print ISSN: 0264-4401
© MCB UP Limited
2000
Engineering Computations (2000) 17 (6): 735–754.
Citation
Farshad FF, Garber JD, Lorde JN (2000), "Predicting temperature profiles in producing oil wells using artificial neural networks". Engineering Computations, Vol. 17 No. 6 pp. 735–754, doi: https://doi.org/10.1108/02644400010340651
Download citation file:
Suggested Reading
Dosing pump range extendedv
Anti-Corrosion Methods and Materials (December,2002)
MHD flow of a visco‐elastic fluid through porous medium
International Journal of Numerical Methods for Heat & Fluid Flow (November,2001)
Efficient parallel computations of flows of arbitrary fluids for all regimes of Reynolds, Mach and Grashof numbers
International Journal of Numerical Methods for Heat & Fluid Flow (September,2002)
Application of the CE/SE method to two‐dimensional flow in fluid film bearings
International Journal of Numerical Methods for Heat & Fluid Flow (March,2003)
ANN prediction of fire temperature in timber
Journal of Structural Fire Engineering (January,2019)
Related Chapters
Mapping the Intellectual Structure of Artificial Neural Network Research in Business Domain: A Retrospective Overview Using Bibliometric Review
Exploring the Latest Trends in Management Literature
A Review of Managing Water Resources in Malaysia with Big Data Approaches
Water Management and Sustainability in Asia
Artificial Neural Networks (ANN) for Stock Price Prediction: A Financial Machine Learning Analysis
Augmenting Retail Reality, Part B: Blockchain, AR, VR, and AI
Recommended for you
These recommendations are informed by your reading behaviors and indicated interests.
