2023
DOI: 10.1021/acsomega.3c05227
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Feasibility of the Optimal Design of AI-Based Models Integrated with Ensemble Machine Learning Paradigms for Modeling the Yields of Light Olefins in Crude-to-Chemical Conversions

A. G. Usman,
Abdulkadir Tanimu,
S. I. Abba
et al.

Abstract: The prediction of the yields of light olefins in the direct conversion of crude oil to chemicals requires the development of a robust model that represents the crude-tochemical conversion processes. This study utilizes artificial intelligence (AI) and machine learning algorithms to develop single and ensemble learning models that predict the yields of ethylene and propylene. Four single-model AI techniques and four ensemble paradigms were developed using experimental data derived from the catalytic cracking ex… Show more

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Cited by 5 publications
(1 citation statement)
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“…The two types of basic linear regression (LR) are simple regression, which estimates one predictor with one variable, and multiple regression, which estimates many predictors with one variable (multiple regression) (Abba, Usman, Abdulazeez, Lawal, Baig, et al, 2023;Alotaibi et al, 2023;Ghali, Usman, et al, 2020;A. G. Usman, Tanimu, et al, 2023).…”
Section: Linear Regression (Lr)mentioning
confidence: 99%
“…The two types of basic linear regression (LR) are simple regression, which estimates one predictor with one variable, and multiple regression, which estimates many predictors with one variable (multiple regression) (Abba, Usman, Abdulazeez, Lawal, Baig, et al, 2023;Alotaibi et al, 2023;Ghali, Usman, et al, 2020;A. G. Usman, Tanimu, et al, 2023).…”
Section: Linear Regression (Lr)mentioning
confidence: 99%