Development of machine learning model for the prediction of selectivity to light olefins from catalytic cracking of hydrocarbons

dc.contributor.authorMafat, I.H.
dc.contributor.authorSharma, S.K.
dc.contributor.authorSurya, D.V.
dc.contributor.authorSankar Rao, C.S.
dc.contributor.authorMaity, U.
dc.contributor.authorBarupal, A.
dc.contributor.authorJasra, R.
dc.date.accessioned2026-02-03T13:20:16Z
dc.date.issued2025
dc.description.abstractLight olefins are the primary building block for the production of petrochemicals and polymers. Light olefins are largely produced from steam/catalytic cracking of naphtha or ethane/propane. Selectivity to light olefins is significantly dependent on the reaction conditions. In this article, several machine learning models are developed and tested to predict the selectivity of ethylene and propylene using seven input features. For this study, a total of eight ML models consisting of adaptive boost, extreme gradient boost, categorical boost, light gradient boost, decision tree with bagging, random forest, k-nearest neighbour, and artificial neural models are developed. The extreme gradient boost model gave the highest prediction accuracy for the ethylene selectivity, while the light gradient boost gave the highest R2 for the propylene selectivity. The SHAP analysis showed the input parameter's importance ranking for ethylene predictions as temperature > number of carbon atoms > Si/Al ratio > acidity > weight hourly space velocity > effect of diluent > number of hydrogen atoms. The importance ranking of input parameters for propylene selectivity was observed as weight hourly space velocity > acidity > temperature > Si/Al ratio > effect of diluent > number of carbon atoms > number of hydrogen atoms. © 2024 Elsevier Ltd
dc.identifier.citationFuel, 2025, 381, , pp. -
dc.identifier.issn162361
dc.identifier.urihttps://doi.org/10.1016/j.fuel.2024.133682
dc.identifier.urihttps://idr.nitk.ac.in/handle/123456789/20444
dc.publisherElsevier Ltd
dc.subjectCatalytic cracking
dc.subjectEthylene
dc.subjectPropylene
dc.subjectInput parameter
dc.subjectLight gradients
dc.subjectLight-olefins
dc.subjectMachine learning models
dc.subjectMachine-learning
dc.subjectNeural-networks
dc.subjectNumber of carbon atoms
dc.subjectPropylene selectivity
dc.subjectSi/Al ratio
dc.subjectWeight hourly space velocity
dc.subjectDecision trees
dc.titleDevelopment of machine learning model for the prediction of selectivity to light olefins from catalytic cracking of hydrocarbons

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