Efficient numerical schemes for multidimensional population balance models
Author(s)
Inguva, Pavan K; Braatz, Richard D
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Multidimensional population balance models (PBMs) describe chemical and biological processes having a
distribution over two or more intrinsic properties (such as size and age, or two independent spatial variables).
The incorporation of additional intrinsic variables into a PBM improves its descriptive capability and can be
necessary to capture specific features of interest. As most PBMs of interest cannot be solved analytically,
computationally expensive high-order finite difference or finite volume methods are frequently used to obtain
an accurate numerical solution. We propose a finite difference scheme based on operator splitting and solving
each sub-problem at the limit of numerical stability that achieves a discretization error that is zero for
certain classes of PBMs and low enough to be acceptable for other classes. In conjunction to employing
specially constructed meshes and variable transformations, the scheme exploits the commutative property of
the differential operators present in many classes of PBMs. The scheme has very low computational cost –
potentially as low as just memory reallocation. Multiple case studies demonstrate the performance of the
proposed scheme.
Date issued
2023-02Department
Massachusetts Institute of Technology. Department of Chemical EngineeringJournal
Computers & Chemical Engineering
Publisher
Elsevier BV
Citation
Inguva, Pavan K and Braatz, Richard D. 2023. "Efficient numerical schemes for multidimensional population balance models." Computers & Chemical Engineering, 170.
Version: Author's final manuscript