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- Publisher :Korean Society for Computational Fluids Engineering
- Publisher(Ko) :한국전산유체공학회
- Journal Title :Journal of Computational Fluids Engineering
- Journal Title(Ko) :한국전산유체공학회지
- Volume : 29
- No :4
- Pages :217-232
- Received Date : 2024-10-07
- Revised Date : 2024-11-22
- Accepted Date : 2024-11-25
- DOI :https://doi.org/10.6112/kscfe.2024.29.4.217


Journal of Computational Fluids Engineering








