2024
DOI: 10.3390/app15010100
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Evaluation of Machine Learning Assisted Phase Behavior Modelling of Surfactant–Oil–Water Systems

Daulet Magzymov,
Meruyert Makhatova,
Zhassulan Dairov
et al.

Abstract: This paper evaluates the ability of machine learning (ML) algorithms to capture and reproduce complex multiphase behavior in surfactant–oil–water systems. The main objective of the paper is to evaluate the ability of machine learning algorithms to capture complex phase behavior of a surfactant–oil–water system in a controlled environment of known data generated via physical models. We evaluated several machine learning algorithms including decision trees, support vector machines (SVMs), k-nearest neighbors, an… Show more

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