Litcius/Paper detail

A First Approach towards Adsorption-Oriented Physics-Informed Neural Networks: Monoclonal Antibody Adsorption Performance on an Ion-Exchange Column as a Case Study

Vinícius V. Santana, Marlon de Souza Gama, José M. Loureiro, Alı́rio E. Rodrigues, Ana M. Ribeiro, Frederico W. Tavares, Evaristo C. Biscaia, Idelfonso B. R. Nogueira

2022ChemEngineering30 citationsDOIOpen Access PDF

Abstract

Adsorption systems are characterized by challenging behavior to simulate any numerical method. A novel field of study emerged within the numerical method in the last two years: the physics-informed neural network (PINNs), the application of artificial intelligence to solve partial differential equations. This is a complete new standpoint for solving engineering first-principle models, which up to that date was not explored in the field of adsorption systems. Therefore, this work proposed the evaluation of PINN to address the numerical solutions of a fixed-bed column where a monoclonal antibody is purified. The PINNs solution is compared with a traditional numerical method. The results show the accuracy of the proposed PINNs when compared with the numerical method. This points towards the potential of this technique to address complex numerical problems found in chemical engineering.

Topics & Concepts

AdsorptionColumn (typography)Artificial neural networkNumerical analysisField (mathematics)Computer simulationIonPartial differential equationComputer scienceMonoclonal antibodyMaterials scienceChemistryArtificial intelligenceMechanical engineeringMathematicsEngineeringSimulationPhysical chemistryOrganic chemistryMathematical analysisAntibodyBiologyImmunologyPure mathematicsConnection (principal bundle)Model Reduction and Neural NetworksHeat Transfer and OptimizationMicrofluidic and Bio-sensing Technologies