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Kernel Density-Based Algorithm for Despiking ADV Data

机译:基于核密度的ADV数据派发算法

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摘要

Acoustic doppler velocimeter (ADV) data can be contaminated by spikes from various sources. Available despiking methods were found to encounter difficulties in despiking ADV data from a turbulent jet flow. An iteration-free despiking algorithm was developed for highly contaminated ADV data by applying a bivariate kernel density function and its gradient to separate the data cluster from the spike clusters. It is shown that the new method overcomes some of the deficiencies of the existing despiking methods.
机译:声学多普勒测速仪(ADV)数据可能会受到来自各种来源的尖峰的污染。发现可用的发送方法在从湍流射流发送ADV数据时遇到困难。通过应用双变量核密度函数及其梯度将数据簇与峰簇分离,开发了针对高度污染的ADV数据的无迭代降峰算法。结果表明,新方法克服了现有派生方法的某些缺陷。

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