4.6 Article

Can a computer learn nonlinear chromatography?: Physics-based deep neural networks for simulation and optimization of chromatographic processes

期刊

JOURNAL OF CHROMATOGRAPHY A
卷 1672, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.chroma.2022.463037

关键词

Preparative chromatography; Process modelling; Simulation; Artificial neural networks; Machine learning; Optimization

资金

  1. Canada First Excellence Research Fund through University of Alberta's Future Energy systems
  2. Canada First Excellence Research Fund through Discovery Grants program of the Natural Sciences and Engineering Research Council of Canada (NSERC)
  3. Jaffer professorship in Process Systems and Control Engineering

向作者/读者索取更多资源

This study proposes a physics-based artificial neural network framework to simulate and optimize chromatographic processes. The approach improves computational speed and accuracy by learning the underlying PDEs and incorporating process optimization routines. The neural network models accurately predict solute separation in chromatographic columns for different isotherm systems and enable precise control of feed mixture components.
The design and optimization of chromatographic processes is essential for enabling efficient separations. To this end, hyperbolic partial differential equations (PDEs) along with nonlinear adsorption isotherms must be solved using computationally expensive numerical solvers to understand, simulate, and design the complex behavior of solute movement in chromatographic columns. In this study, physics-based artificial neural network framework for adsorption and chromatography emulation (PANACHE) is used to simulate and optimize chromatographic processes in a computationally faster and reliable manner. The proposed approach relies on learning the underlying PDEs in the form of a physics-constrained loss function to improve the accuracy of process simulations. The effectiveness of this approach is demonstrated by considering the complex dynamics of binary solute mixtures for generic pulse injections subjected to different isotherm systems, namely, the four cases of the generalized Langmuir isotherms. Unique neural network models were developed for each isotherm and the models accurately predicted the spatiotemporal concentrations of solute mixture in chromatographic columns for an arbitrary feed concentrations and injection volumes by facilitating up to 250 times computational speed-ups. Moreover, the neural network models were incorporated with process optimization routines to precisely determine the optimal injection volumes to enable baseline separation of solute components of the feed mixture. (C) 2022 Elsevier B.V. All rights reserved.

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