Publication: Machine learning-augmented fluid dynamics simulations for micromixer educational module
dc.contributor.coauthor | Alseed, M. Munzer | |
dc.contributor.coauthor | Yetisen, Ali K. | |
dc.contributor.department | KUTTAM (Koç University Research Center for Translational Medicine) | |
dc.contributor.department | KUIS AI (Koç University & İş Bank Artificial Intelligence Center) | |
dc.contributor.department | KUAR (KU Arçelik Research Center for Creative Industries) | |
dc.contributor.department | Department of Mechanical Engineering | |
dc.contributor.department | Graduate School of Sciences and Engineering | |
dc.contributor.kuauthor | Ahmadpour, Abdollah | |
dc.contributor.kuauthor | Taşoğlu, Savaş | |
dc.contributor.kuauthor | Birtek, Mehmet Tuğrul | |
dc.contributor.kuauthor | Sarabi, Misagh Rezapour | |
dc.contributor.schoolcollegeinstitute | College of Engineering | |
dc.contributor.schoolcollegeinstitute | GRADUATE SCHOOL OF SCIENCES AND ENGINEERING | |
dc.contributor.schoolcollegeinstitute | Research Center | |
dc.date.accessioned | 2025-01-19T10:29:29Z | |
dc.date.issued | 2023 | |
dc.description.abstract | Micromixers play an imperative role in chemical and biomedical systems. Designing compact micromixers for laminar flows owning a low Reynolds number is more challenging than flows with higher turbulence. Machine learning models can enable the optimization of the designs and capabilities of microfluidic systems by receiving input from a training library and producing algorithms that can predict the outcomes prior to the fabrication process to minimize development cost and time. Here, an educational interactive microfluidic module is developed to enable the design of compact and efficient micromixers at low Reynolds regimes for Newtonian and non-Newtonian fluids. The optimization of Newtonian fluids designs was based on a machine learning model, which was trained by simulating and calculating the mixing index of 1890 different micromixer designs. This approach utilized a combination of six design parameters and the results as an input data set to a two-layer deep neural network with 100 nodes in each hidden layer. A trained model was achieved with R2 = 0.9543 that can be used to predict the mixing index and find the optimal parameters needed to design micromixers. Non-Newtonian fluid cases were also optimized using 56700 simulated designs with eight varying input parameters, reduced to 1890 designs, and then trained using the same deep neural network used for Newtonian fluids to obtain R2 = 0.9063. The framework was subsequently used as an interactive educational module, demonstrating a well-structured integration of technology-based modules such as using artificial intelligence in the engineering curriculum, which can highly contribute to engineering education. | |
dc.description.indexedby | WOS | |
dc.description.indexedby | Scopus | |
dc.description.indexedby | PubMed | |
dc.description.issue | 4 | |
dc.description.publisherscope | International | |
dc.description.sponsoredbyTubitakEu | N/A | |
dc.description.sponsorship | S. T. acknowledges Tubitak 2232 International Fellowship for Outstanding Researchers Award (No. 118C391), Alexander von Humboldt Research Fellowship for Experienced Researchers, Marie Skłodowska-Curie Individual Fellowship (No. 101003361), and Royal Academy Newton-Katip Çelebi Transforming Systems Through Partnership Award (No. 120N019) for the financial support of this research. Opinions, interpretations, conclusions, and recommendations are those of the author and are not necessarily endorsed by the TÜBİTAK. This work was partially supported by Science Academy's Young Scientist Awards Program (BAGEP), Outstanding Young Scientists Awards (GEBİP), and Bilim Kahramanlari Dernegi the Young Scientist Award. This study was conducted using the service and infrastructure of Koç University Translational Medicine Research Center (KUTTAM). The authors have no other relevant affiliations or financial involvement with any organization or entity with a financial interest in or financial conflict with the subject matter or materials discussed in the manuscript apart from those disclosed. Some elements in have been designed using free resources from flaticon.com. | |
dc.description.volume | 17 | |
dc.identifier.doi | 10.1063/5.0146375 | |
dc.identifier.issn | 1932-1058 | |
dc.identifier.quartile | Q2 | |
dc.identifier.scopus | 2-s2.0-85164297061 | |
dc.identifier.uri | https://doi.org/10.1063/5.0146375 | |
dc.identifier.uri | https://hdl.handle.net/20.500.14288/25875 | |
dc.identifier.wos | 1133588200001 | |
dc.keywords | Deep neural networks | |
dc.keywords | Engineering education | |
dc.keywords | Flow measurement | |
dc.keywords | Learning systems | |
dc.keywords | Microfluidics | |
dc.language.iso | eng | |
dc.publisher | American Institute of Physics Inc. | |
dc.relation.grantno | Royal Academy, (120N019); Alexander von Humboldt-Stiftung, AvH, (101003361); Bilim Akademisi | |
dc.relation.ispartof | Biomicrofluidics | |
dc.subject | Biochemical research methods | |
dc.subject | Biophysics | |
dc.subject | Nanoscience and nanotechnology | |
dc.subject | Physics, fluids and plasmas | |
dc.title | Machine learning-augmented fluid dynamics simulations for micromixer educational module | |
dc.type | Journal Article | |
dspace.entity.type | Publication | |
local.contributor.kuauthor | Birtek, Mehmet Tuğrul | |
local.contributor.kuauthor | Sarabi, Misagh Rezapour | |
local.contributor.kuauthor | Ahmadpour, Abdollah | |
local.contributor.kuauthor | Taşoğlu, Savaş | |
local.publication.orgunit1 | GRADUATE SCHOOL OF SCIENCES AND ENGINEERING | |
local.publication.orgunit1 | College of Engineering | |
local.publication.orgunit1 | Research Center | |
local.publication.orgunit2 | Department of Mechanical Engineering | |
local.publication.orgunit2 | KUTTAM (Koç University Research Center for Translational Medicine) | |
local.publication.orgunit2 | KUIS AI (Koç University & İş Bank Artificial Intelligence Center) | |
local.publication.orgunit2 | KUAR (KU Arçelik Research Center for Creative Industries) | |
local.publication.orgunit2 | Graduate School of Sciences and Engineering | |
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