Real time optimization of distillation columns using data‐driven models
Carlos Rodriguez,
Prashant Mhaskar,
Vladimir Mahalec
Abstract:This work presents a data‐driven model of a two‐product distillation tower that is suitable for real‐time optimization (RTO) of distillation columns. The proposed model accurately predicts product mass fractions using operating variables and tray temperatures by integrating a linear data‐driven inferential composition model (based on two tray temperatures in each section of the tower, reflux/distillate ratio, and reboiler duty/bottoms flow ratio) with a neural network (NN) model that predicts tray temperatures… Show more
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