Proceedings of ESCAPE 35ISSN: 2818-4734
Volume: 4 (2025)
Table of Contents
LAPSE:2025.0315
Published Article
LAPSE:2025.0315
Design of Microfluidic Mixers using Bayesian Shape Optimization
Rui Fonseca, Fernando Bernardo
June 27, 2025
Abstract
Microfluidic mixing has gained popularity in the Pharmaceutical Industry due to its application in the field of Nano-based Drug Delivery Systems (DDS). The flow conditions in Microfluidic mixers enable very efficient mixing conditions, which are crucial for the production of Nanoparticles by Flash Nanoprecipitation (FNP), as it enables reproducible production of particles with low-size variability. Mixer geometry is one of the most determinant factors, as it largely determines the flow patterns and the degree of contact between the two mixing streams. In this paper, a shape optimization methodology using Computational Fluid Dynamics (CFD) and Bayesian optimization is applied to the toroidal micromixer design, considering three different operating conditions. It consists of first defining a geometry solution space and then using Multi-Objective Bayesian optimization to explore the different designs. Mixer performance is evaluated with CFD simulations and two objective functions are considered: mixing time and pressure drop. Approximations of the Pareto front for each case study are obtained and the analysis of the best geometries enabled to derive some general geometric features of optimal mixer designs.
Keywords
Computational Fluid Dynamics, Geometry Optimization, Micromixing, Multi-objective Optimization
Suggested Citation
Fonseca R, Bernardo F. Design of Microfluidic Mixers using Bayesian Shape Optimization. Systems and Control Transactions 4:1017-1022 (2025) https://doi.org/10.69997/sct.199876
Author Affiliations
Fonseca R: CERES, University of Coimbra, Department of Chemical Engineering, Coimbra, Portugal
Bernardo F: CERES, University of Coimbra, Department of Chemical Engineering, Coimbra, Portugal
Journal Name
Systems and Control Transactions
Volume
4
First Page
1017
Last Page
1022
Year
2025
Publication Date
2025-07-01
Version Comments
Original Submission
Other Meta
PII: 1017-1022-1257-SCT-4-2025, Publication Type: Journal Article
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LAPSE:2025.0315
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References Cited
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