2022
DOI: 10.18421/tem111-12
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Random Forest Regression to Predict Catalyst Deactivation in Industrial Catalytic Process

Abstract: Catalyst deactivation has become a great concern in an industry with heterogenous catalystbased production. An accurate model to predict catalyst performance is needed to optimize the maintenance schedule, avoid an unplanned shutdown, and ensure reliable operation. This research work applies a machine learning model to predict catalyst deactivation based on actual data from relevant multitube-reactor sensors. The product conversion is a crucial indicator of the catalyst performance degradation over time. Rando… Show more

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Cited by 3 publications
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