Hybrid Symbolic Regression and Machine Learning Approaches for Modeling Gas Lift Well Performance
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- @Article{nashed:2025:Fluids,
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author = "Samuel Nashed and Rouzbeh Moghanloo",
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title = "Hybrid Symbolic Regression and Machine Learning
Approaches for Modeling Gas Lift Well Performance",
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journal = "Fluids",
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year = "2025",
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volume = "10",
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number = "7",
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pages = "Article No. 161",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "2311-5521",
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URL = "
https://www.mdpi.com/2311-5521/10/7/161",
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DOI = "
10.3390/fluids10070161",
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abstract = "Proper determination of the bottomhole pressure in a
gas lift well is essential to enhance production,
tackle operating concerns, and use the least amount of
gas. Mechanistic models, empirical correlation, and
hybrid models are usually limited by the requirements
for calibration, large amounts of inputs, or limited
scope of work. Through this study, sixteen well-tested
machine learning (ML) models, such as genetic
programming-based symbolic regression and neural
networks, are developed and studied to accurately
predict flowing BHP at the perforation depth, using a
dataset from 304 gas lift wells. The dataset covers a
variety of parameters related to reservoirs,
completions, and operations. After careful
preprocessing and analysis of features, the models were
prepared and tested with cross-validation, random
sampling, and blind testing. Among all approaches,
using the L-BFGS optimiser on the neural network gave
the best predictions, with an R2 of 0.97, low errors,
and better accuracy than other ML methods. Upon using
SHAP analysis, it was found that the injection point
depth, tubing depth, and fluid flow rate are the main
determining factors. Further using the model on 30
unseen additional wells confirmed its reliability and
real-world utility. This study reveals that ML
prediction for BHP is an effective alternative for
traditional models and pressure gauges, as it is
simpler, quicker, more accurate, and more economical.",
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notes = "also known as \cite{fluids10070161}",
- }
Genetic Programming entries for
Samuel Nashed
Rouzbeh Moghanloo
Citations