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Hard vs soft constraints in the full field reconstruction of incompressible flow kinematics from noisy scattered velocimetry data

机译:从嘈杂的散射测速数据中不可压缩流运动学全场重建中的硬约束和软约束

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High quality flow kinematics reconstruction from noisy and spatially scattered data requires the use of regularization techniques but remains a challenge. We set out to test the effect and practical relevance of additional incompressibility constraints. To this end, we present two methods for reconstructing smooth velocity and velocity gradient fields from such data in an incompressible two-dimensional complex flow. One is based on a generalized Tikhonov regularization combined with a finite element approximation and uses a stream function formulation, which enforces incompressibility (hard constraint). This approach is compared to that in which incompressibility is asymptotically achieved by adding a divergence penalty term in the regularization expression (soft constraint). The methods are compared on synthetic velocity data, obtained for an incompressible Oldroyd-B fluid in a cross-slot channel with added noise. For such data sets, both methods are seen to lead to essentially identical results. However, for a given grid size, the stream function formulation uses a single regularization parameter and less degrees of freedom to provide the required continuity of the gradient fields. The fidelity of the reconstruction is investigated in terms of the quality of the streamlines and velocity gradient history. Incompressibility constraints turn into significant and valuable improvement for applications as we demonstrate by analyzing the stress and optical signal fields obtained by applying a constitutive equation to the reconstructed flow fields.
机译:从嘈杂和空间分散的数据中进行高质量的流运动学重构需要使用正则化技术,但仍然是一个挑战。我们着手测试其他不可压缩约束的效果和实际相关性。为此,我们提出了两种在不可压缩的二维复数流中根据此类数据重建平滑速度​​和速度梯度场的方法。一种基于广义Tikhonov正则化结合有限元逼近,并使用流函数公式化,这种形式强制执行不可压缩性(硬约束)。将这种方法与通过在正则表达式(软约束)中添加发散罚分项渐近实现不可压缩性的方法进行比较。在合成速度数据上对这些方法进行了比较,该数据是在交叉通道中添加了噪声的不可压缩Oldroyd-B流体获得的。对于这样的数据集,这两种方法都可以导致基本相同的结果。但是,对于给定的网格大小,流函数公式使用单个正则化参数和较小的自由度来提供所需的梯度场连续性。根据流线的质量和速度梯度历史来研究重建的保真度。正如我们通过分析应力和光信号场所证明的那样,不可压缩性约束条件对于应用程序而言是重大而有价值的改进,这是通过对重构流场应用本构方程来获得的应力和光信号场的结果。

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