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Numerical validation of velocity gradient tensor particle tracking velocimetry for highly deformed flow fields

机译:高变形流场中速度梯度张量粒子跟踪测速的数值验证

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摘要

Particle tracking velocimetry (PTV) has recently been recognized as quite an effective engineering research tool for understanding multi-dimensional fluid flow structures. There are, however, still a number of unsettled problems in the practical use of PTV, i.e. the lack of generality of the PTV algorithm for various types of flows and the measurement uncertainty with respect to spatial resolution. The authors have developed a generalized PTV algorithm named the velocity gradient tensor (VGT) method in order to accurately track the tracer particles in a flow field with strong local deformation rates. The performance of the VGT method has already been examined for several simple flow fields, such as linear shearing and Taylor-Green vortex flows. In this paper, the applicability of the VGT method for complicated flows, which include a wide dynamic range in wavenumber, is quantitatively examined by simulation of Rankine vortex flows, Karman vortex-shedding flows around a rectangular cylinder and homogeneous turbulent flows, which are numerically solved by using the unsteady Navier-Stokes equations. The results show that the VGT technique, using only two frames to estimate velocity, performs better than does the four-frame PTV technique and has a remarkably higher tracking performance than those of typical conventional PTV algorithms.
机译:最近,粒子跟踪测速(PTV)被公认为是了解多维流体流动结构的一种非常有效的工程研究工具。然而,在PTV的实际使用中仍然存在许多未解决的问题,即,对于各种类型的流缺乏PTV算法的通用性以及关于空间分辨率的测量不确定性。作者已经开发了一种通用的PTV算法,称为速度梯度张量(VGT)方法,以便在具有强局部变形率的流场中精确跟踪示踪剂颗粒。 VGT方法的性能已经针对几种简单的流场进行了检验,例如线性剪切和泰勒-格林涡流。本文通过对兰金旋涡流,矩形圆柱体周围的卡曼涡旋脱落流和均相湍流进行数值模拟,定量地研究了VGT方法在波数动态范围宽的复杂流中的适用性。通过使用非定常的Navier-Stokes方程求解。结果表明,仅使用两个帧来估计速度的VGT技术比四帧PTV技术的性能要好,并且跟踪性能比典型的常规PTV算法要高得多。

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