Litcius/Paper detail

Machine learning‐based model predictive controller design for cell culture processes

Mohammad Rashedi, Mina Rafiei, Matthew Demers, Hamid Khodabandehlou, Tony Wang, Aditya Tulsyan, Cenk Ündey, Christopher Garvin

2023Biotechnology and Bioengineering22 citationsDOIOpen Access PDF

Abstract

The biopharmaceutical industry continuously seeks to optimize the critical quality attributes to maintain the reliability and cost-effectiveness of its products. Such optimization demands a scalable and optimal control strategy to meet the process constraints and objectives. This work uses a model predictive controller (MPC) to compute an optimal feeding strategy leading to maximized cell growth and metabolite production in fed-batch cell culture processes. The lack of high-fidelity physics-based models and the high complexity of cell culture processes motivated us to use machine learning algorithms in the forecast model to aid our development. We took advantage of linear regression, the Gaussian process and neural network models in the MPC design to maximize the daily protein production for each batch. The control scheme of the cell culture process solves an optimization problem while maintaining all metabolites and cell culture process variables within the specification. The linear and nonlinear models are developed based on real cell culture process data, and the performance of the designed controllers is evaluated by running several real-time experiments.

Topics & Concepts

Model predictive controlComputer scienceProcess (computing)Gaussian processArtificial neural networkProcess controlMachine learningBiopharmaceuticalController (irrigation)Reliability (semiconductor)ScalabilityArtificial intelligenceControl (management)GaussianBiotechnologyQuantum mechanicsBiologyOperating systemPhysicsPower (physics)DatabaseAgronomyViral Infectious Diseases and Gene Expression in InsectsAdvanced Control Systems OptimizationMicrobial Metabolic Engineering and Bioproduction