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Modeling industrial hydrocyclone operational variables by SHAP-CatBoost - A “conscious lab” approach

Saeed Chehreh Chelgani, Hamid Nasiri, A. Tohry, H.R. Heidari

2023Powder Technology66 citationsDOIOpen Access PDF

Abstract

Undoubtedly hydrocyclones play a critical role in powder technology, which can considerably affect the plants' process efficiency. However, hydrocyclones were rarely modeled on an industrial scale, where a model can be used to train operators and minimize potential scale-up errors and lab costs. The novel approach for filling such a gap would be using conscious lab “CL” as a new concept that builds based on an industrial dataset and explainable artificial intelligence (XAI). As a novel approach, this study developed a CL and explored the interactions between hydrocyclone variables by the most recent XAI method called “SHapley Additive exPlanations (SHAP)”, and a novel machine-learning model, “CatBoost”. The hydrocyclone output and the particle size of the plant magnetic separator were modeled by SHAP-CatBoost. SHAP could successfully model all the relationships, and CatBoost could predict the O80 and K80, where outcomes had a higher accuracy (R2 ∼ 0.90) than other conventional AIs.

Topics & Concepts

HydrocycloneProcess (computing)Computer scienceScale (ratio)Process engineeringSeparator (oil production)Artificial intelligenceMachine learningEngineeringPhysicsClassical mechanicsQuantum mechanicsOperating systemThermodynamicsCyclone Separators and Fluid DynamicsMetallurgical Processes and ThermodynamicsMinerals Flotation and Separation Techniques
Modeling industrial hydrocyclone operational variables by SHAP-CatBoost - A “conscious lab” approach | Litcius