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Universal outlier detection for particle image velocimetry (PIV) and particle tracking velocimetry (PTV) data

机译:粒子图像测速(PIV)和粒子跟踪测速(PTV)数据的通用离群值检测

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摘要

A generalization of the universal outlier detection method of Westerweel and Scarano (2005 Universal outlier detection for PIV data Exp. Fluids 39 1096-100) has been made, allowing the use of the above algorithm on both gridded (PIV) and non-gridded (PTV) data. The changes include a different definition of neighbors based on Delaunay tessellation, a weighting of neighbor velocities based on the distance from the point in question and an adaptive tolerance to account for the different distances to neighbors. The new algorithm is tested on flows varying from impinging jets to turbulent boundary layers and wakes to wingtip vortices, both PIV and PTV. The residuals for these flows also show universality in their probability density functions, similarly suggesting the use of a single threshold value to identify outliers. Also the new algorithm is found to work with data up to about a 15percent spurious vector content.
机译:对Westerweel和Scarano的通用离群值检测方法(2005年PIV数据Exp.Fluids 39 1096-100的通用离群值检测)进行了概括,从而允许在网格化(PIV)和非网格化( PTV)数据。这些更改包括基于Delaunay细分的邻居的不同定义,基于距该问题点的距离的邻居速度的权重以及考虑到邻居的不同距离的自适应容差。测试了新算法在从撞击射流到湍流边界层以及从尾流到翼尖涡流(PIV和PTV)的流量。这些流的残差在它们的概率密度函数中也显示出普遍性,类似地建议使用单个阈值来识别异常值。还发现新算法可处理高达15%的杂散向量内容的数据。

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