THE BERLIN OIL CHANNEL FOR DRAG REDUCTION RESEARCH

被引:50
|
作者
BECHERT, DW
HOPPE, G
VANDERHOEVEN, JGT
MAKRIS, R
机构
[1] Deutsche Forschungsanstalt für Luft- und Raumfahrt (DLR), Abt. Turbulenzforschung, Berlin, 12, Müller-Breslau-Str. 8
关键词
D O I
10.1007/BF00187303
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
For drag reduction research an oil channel has been designed and built. It is also well suited for investigations on turbulent flow and in particular on the dynamics of the viscous sublayer near the wall. The thickness of the viscous sublayer (y+ = 5) can be varied between 1 and 4 mm. Surfaces with longitudinal ribs ("riblets"), which are known to reduce drag, can have fairly large dimensions. The lateral spacing of the ribs can lie between 3 and 10 mm, as compared to about 0.5 mm spacing for conventional wind tunnels. It has been proved by appropriate tests that the oil channel data are completely equivalent to data from other facilities and with other mean flow geometries. However, the shear stress data from the new oil channel are much more accurate than previous data due to a novel differential shear force balance with an accuracy of +/- 0.2%. In addition to shear stress measurements, velocity fluctuation measurements can be carried out with hot wire or hot film probes. In order to calibrate these probes, a moving sled permits to emulate the flow velocities with the fluid in the channel at rest. A number of additional innovations contribute to the improvement of the measurements, such as, e.g., (i) novel adjustable turbulators to maintain equilibrium turbulence in the channel, (ii) a "bubble trap" to avoid bubbles in the channel at high flow velocities, (iii) a simple method for the precision calibration of manometers, and (iv) the elimination of (Coulomb) friction in ball bearings. This latter fairly general invention is used for the wheels of the calibration unit of the balance. The channel has a cross section of 25 x 85 cm and is 11 m long. It is filled with about 4.5 metric tons of baby oil (white paraffine oil), which is transparent and odorless like water. The kinematic viscosity of the oil is nu = 1.2 x 10(-5) m2/s, and the highest (average) velocity is 1.29 m/s. Thus, the Reynolds number range (calculated with the channel width, 0.25 m) lies between 5,000 and 26,800 for fully established turbulent flow.
引用
收藏
页码:251 / 260
页数:10
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