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Surface Flow Visualization on a Full-Scale Passenger Car with Quantitative Tuft Image Processing

机译:具有定量簇绒图像处理的全尺寸乘用车的表面流动可视化

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Flow visualization techniques are widely used in aerodynamics to investigate the surface trace pattern. In this experimental investigation, the surface flow pattern over the rear end of a full-scale passenger car is studied using tufts. The movement of the tufts is recorded with a DSLR still camera, which continuously takes pictures. A novel and efficient tuft image processing algorithm has been developed to extract the tuft orientations in each image. This allows the extraction of the mean tuft angle and other such statistics. From the extracted tuft angles, streamline plots are created to identify points of interest, such as saddle points as well as separation and reattachment lines. Furthermore, the information about the tuft orientation in each time step allows studying steady and unsteady flow phenomena. Hence, the tuft image processing algorithm provides more detailed information about the surface flow than the traditional tuft method. The main advantages over other flow visualization methods, such as oil paint, is that experimental facilities are not contaminated and statistical data can be extracted. The investigated surface pattern shows a symmetric flow on the entire rear end section of the passenger car. The flow field on the roof, backlight, and upper trunk deck is attached almost everywhere. However, two small regions indicate the presence of two counter-rotating vortices at the lower edge of the backlight (rear window). Those vortices are also detectable in the distribution of the tuft angle standard deviation. A bifurcation line is present at each side of the trunk due to the streamwise vortices originating at the C-pillars. The tuft streamlines created with this novel tuft method are compared to a standard oil paint flow visualization to validate the calculated tuft flow pattern. A critical comparison between the methods confirms that the flow tuft analysis algorithm functions flawlessly as a highly detailed flow analysis tool without the mess of oil paint.
机译:流动可视化技术广泛用于空气动力学,以研究表面迹线图案。在该实验研究中,使用簇绒研究了全尺寸乘用车后端的表面流动图案。用DSLR静态摄像机记录簇的移动,该摄像头连续拍摄照片。已经开发了一种新颖且有效的簇图像处理算法来提取每个图像中的簇取向。这允许提取平均簇角和其他这样的统计数据。从提取的簇角,创建流线图以识别兴趣点,例如马鞍点以及分离和重新连接线。此外,每个时间步骤中的簇取向的信息允许研究稳定和不稳定的流现象。因此,簇图像处理算法提供了比传统的簇绒方法的表面流的更详细信息。与其他流动可视化方法(如油漆)的主要优点是实验设施不污染,并且可以提取统计数据。所研究的表面图案在乘用车的整个后端部分上示出了对称流。屋顶,背光和上干甲板上的流场几乎无处不在。然而,两个小区域表示在背光的下边缘(后窗)的两个反向旋转涡旋存在。这些涡流也在簇角标准偏差的分布中可检测到。由于源自C柱的流动涡流,在躯干的每一侧存在分叉管线。使用本新建簇生方法创建的簇生流线与标准油漆流量可视化进行比较,以验证计算的簇绒流程模式。该方法之间的关键比较证实了流量簇分析算法无瑕地作为高度详细的流量分析工具,而无需油漆。

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