Prediction of Sandstone Porosity based on Machine Learning

Authors

  • Yinliang Cheng

DOI:

https://doi.org/10.54097/tgwhkf56

Keywords:

Machine Learning; Porosity Prediction; Sandstone.

Abstract

Porosity is a critical property of sandstone, influencing its ability to store and transmit fluids. Accurate prediction of porosity is essential for various applications, including hydrocarbon exploration, groundwater management, and civil engineering. Traditional methods for porosity estimation often involve labor-intensive and time-consuming laboratory tests. However, with the advent of machine learning (ML) techniques, there is potential for more efficient and accurate prediction of sandstone porosity. This paper explores the application of machine learning models to predict sandstone porosity using various geological and petrophysical features.

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References

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Published

20-08-2024

Issue

Section

Articles

How to Cite

Cheng, Y. (2024). Prediction of Sandstone Porosity based on Machine Learning. Academic Journal of Science and Technology, 12(1), 181-183. https://doi.org/10.54097/tgwhkf56