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Application of offset‐free Koopman‐based model predictive control to a batch pulp digester

Sang Hwan Son, Hyun‐Kyu Choi, Joseph Sang‐Il Kwon

2021AIChE Journal63 citationsDOI

Abstract

Abstract This work presents the application of a Koopman operator approach to a batch pulp digester. To manufacture paper products with desired properties, it is essential to consider both macroscopic and microscopic attributes of pulp. However, the complexity of multiscale dynamics of pulping processes hinders proper control system design. Therefore, we utilize extended dynamic mode decomposition (EDMD), which is based on Koopman operator theory, to derive a global linear representation of a pulp digester. Then, we design an offset‐free Koopman‐based model predictive control (KMPC) system to regulate the Kappa number and cell wall thickness (CWT) of fibers at a batch pulp digester while compensating for the influence of plant‐model mismatch and disturbance during operation. The numerical experiments demonstrate that the linear state‐space model, obtained via EDMD, properly predicts the behavior of a batch pulp digester, and the designed offset‐free KMPC system successfully drives the Kappa number and CWT to set‐point values.

Topics & Concepts

Offset (computer science)Pulp (tooth)Control theory (sociology)Model predictive controlMathematicsKappa numberComputer scienceBiological systemProcess engineeringPulp and paper industryEngineeringControl (management)Artificial intelligenceKraft paperKraft processProgramming languagePathologyMedicineBiologyModel Reduction and Neural NetworksProbabilistic and Robust Engineering DesignLattice Boltzmann Simulation Studies
Application of offset‐free Koopman‐based model predictive control to a batch pulp digester | Litcius