Preprint / Version 1

Fracture Conductivity Prediction Based on Machine Learning in Shale – Support Vector Regression

##article.authors##

  • Ella Meyer Independent

DOI:

https://doi.org/10.31224/3765

Keywords:

Shale formations, Flow and fracture, Machine Learning, Fracture Conductivity

Abstract

Hydraulic fracturing extracts oil and gas from deep underground, with fracture conductivity being crucial for efficient production. Traditional lab techniques for measuring conductivity are costly and time-consuming. This paper explores using machine learning, specifically support vector regression, to predict fracture conductivity based on experimental data like Poisson’s ratio and proppant size. Optimizing these models can enhance hydraulic fracturing efficiency in shale formations.

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Posted

2024-06-17