2012
DOI: 10.1115/1.4003821
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Effects of Reynolds Number and Surface Roughness Magnitude and Location on Compressor Cascade Performance

Abstract: An experimental investigation has been conducted to characterize the influence of Reynolds number and surface roughness magnitude and location on compressor cascade performance. Flow field surveys have been conducted in a low-speed, linear compressor cascade. Pressure, velocity, and loss have been measured via a five-hole probe, pitot probe, and pressure taps on the blades. Four different roughness magnitudes, Ra values of 0.38 μm (polished), 1.70 μm (baseline), 2.03 μm (rough 1), and 2.89 μm (rough 2), have b… Show more

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Cited by 33 publications
(18 citation statements)
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“…The main mechanisms of corner separations are: 11 (i) strong adverse pressure gradients, (ii) secondary flows within the passage, (iii) the mixing of the boundary layers on both the end-wall and the blade suction surface, and (iv) a possible horseshoe vortex (when the a) feng.gao@buaa.edu.cn b) jerome.boudet@ec-lyon.fr blade leading edge is thick). 12 Corner separations are also influenced by many parameters, such as compressor loading, 7 inflow boundary layers, 13 free-stream turbulence intensities, 14 clearance flows, 15 Reynolds number, 16 Mach number, 17 surface roughness, 16 and real blade geometries. 18 As corner separations can reduce the compressor efficiency and can lead to negative consequences, it is requested to control or reduce corner separations.…”
Section: Introductionmentioning
confidence: 99%
“…The main mechanisms of corner separations are: 11 (i) strong adverse pressure gradients, (ii) secondary flows within the passage, (iii) the mixing of the boundary layers on both the end-wall and the blade suction surface, and (iv) a possible horseshoe vortex (when the a) feng.gao@buaa.edu.cn b) jerome.boudet@ec-lyon.fr blade leading edge is thick). 12 Corner separations are also influenced by many parameters, such as compressor loading, 7 inflow boundary layers, 13 free-stream turbulence intensities, 14 clearance flows, 15 Reynolds number, 16 Mach number, 17 surface roughness, 16 and real blade geometries. 18 As corner separations can reduce the compressor efficiency and can lead to negative consequences, it is requested to control or reduce corner separations.…”
Section: Introductionmentioning
confidence: 99%
“…Previous works also reports that transition [4] as well as the level of losses [4,1] is sensitive to surface roughness. However, since the Reynolds number related to the test case considered in this paper is quite high (Re = 7 × 10 5 ), a low level of roughness (< 11µm) 1 should not influence the near wall flow. Indeed, transition in the present compressor should be controlled mainly by the free-stream turbulence, pressure gradient and periodic incoming wakes.…”
Section: Latinmentioning
confidence: 88%
“…There are some indications in the literature that the effects of surface curvature, divergence / convergence effects, compressibility, and heat transfer in gas turbines are less significant on transition as compared to free-stream turbulence effects [12]. Previous works also reports that transition [4] as well as the level of losses [4,1] is sensitive to surface roughness. However, since the Reynolds number related to the test case considered in this paper is quite high (Re = 7 × 10 5 ), a low level of roughness (< 11µm) 1 should not influence the near wall flow.…”
Section: Latinmentioning
confidence: 99%
“…[11]. Initial average surface rough ness (Ravg) values for the bare, TiN-coated and CrAlTiN-coated upstream blades were: 1.17 pm, 1.34 pm, and 1.64 pm, respec tively.…”
Section: -4 P H S Te E L (A ) B E a N D ( B) A F -T Inc O A Te D (C )mentioning
confidence: 99%