Creating streamtubes based on mass conservative streamlines

Article


Raj, Nawin and Li, Zhenquan. 2008. "Creating streamtubes based on mass conservative streamlines." International Journal of Mathematical, Physical and Engineering Sciences. 2 (1), pp. 41-45. https://doi.org/10.5281/zenodo.1081061
Article Title

Creating streamtubes based on mass conservative streamlines

Article CategoryArticle
AuthorsRaj, Nawin (Author) and Li, Zhenquan (Author)
Journal TitleInternational Journal of Mathematical, Physical and Engineering Sciences
Journal Citation2 (1), pp. 41-45
Number of Pages5
Year2008
Place of PublicationTurkey
Digital Object Identifier (DOI)https://doi.org/10.5281/zenodo.1081061
Abstract

Streamtube is used to visualize expansion, contraction
and various properties of the fluid flow. These are useful in fluid mechanics, engineering and geophysics. The streamtube constructed in this paper only reveals the flow expansion rate along streamline. Based on the mass conservative streamline, we will show how to construct the streamtube.

Keywordsflow visualization, mass conservative, streamline, streamtube
ANZSRC Field of Research 2020490399. Numerical and computational mathematics not elsewhere classified
Public Notes

© 2007 WASET.ORG. Deposited with blanket permission of publisher.

Byline AffiliationsUniversity of the South Pacific, Fiji
Event2007 World Academy of Science, Engineering and Technology (WASET 2007)
World Academy of Science, Engineering and Technology Conference
Institution of OriginUniversity of Southern Queensland
Event Details
2007 World Academy of Science, Engineering and Technology (WASET 2007)
Event Details
World Academy of Science, Engineering and Technology Conference
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