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July 1975
This article was originally published in
Journal of Engineering for Power
Technical Briefs
The Experimental Cascade Performance of NACA Compressor Profiles at Low Reynolds Number
W. B. Roberts
W. B. Roberts
General Compressor Development Group, Strategic Systems Engineering, Westinghouse Electric Corp., Sunnyvale, Calif.
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W. B. Roberts
General Compressor Development Group, Strategic Systems Engineering, Westinghouse Electric Corp., Sunnyvale, Calif.
J. Eng. Power. Jul 1975, 97(3): 454-459 (6 pages)
Published Online: July 1, 1975
Article history
Received:
April 23, 1975
Online:
July 14, 2010
Citation
Roberts, W. B. (July 1, 1975). "The Experimental Cascade Performance of NACA Compressor Profiles at Low Reynolds Number." ASME. J. Eng. Power. July 1975; 97(3): 454–459. https://doi.org/10.1115/1.3446031
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