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首页> 外文期刊>Measurement Science & Technology >Proper orthogonal decomposition-based estimations of the flow field from particle image velocimetry wall-gradient measurements in the backward-facing step flow
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Proper orthogonal decomposition-based estimations of the flow field from particle image velocimetry wall-gradient measurements in the backward-facing step flow

机译:从正确的,基于正交分解的逆向估计中,根据粒子图像测速仪的壁梯度测量对流场进行估计

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In this paper, particle image velocimetry (PIV) results from the recirculation zone of a backward-facing step flow, of which the Reynolds number is 2800 based on bulk velocity upstream of the step and step height (h velence 16.5 mm), are used to demonstrate the capability of proper orthogonal decomposition (POD)-based measurement models. Three-component PIV velocity fields are decomposed by POD into a set of spatial basis functions and a set of temporal coefficients. The measurement models are built to relate the low-order POD coefficients, determined from an ensemble of 1050 PIV fields by the 'snapshot' method, to the time-resolved wall gradients, measured by a near-wall measurement technique called stereo interfacial PIV. These models are evaluated in terms of reconstruction and prediction of the low-order temporal POD coefficients of the velocity fields. In order to determine the estimation coefficients of the measurement models, linear stochastic estimation (LSE), quadratic stochastic estimation (QSE), principal component regression (PCR) and kernel ridge regression (KRR) are applied. We denote such approaches as LSE-POD, QSE-POD, PCR-POD and KRR-POD. In addition to comparing the accuracy of measurement models, we introduce multi-time POD-based estimations in which past and future information of the wall-gradient events is used separately or combined. The results show that the multi-time estimation approaches can improve the prediction process. Among these approaches, the proposed multi-time KRR-POD estimation with an optimized window of past wall-gradient information yields the best prediction. Such a multi-time KRR-POD approach offers a useful tool for real-time flow estimation of the velocity field based on wall-gradient data.
机译:在本文中,使用了颗粒图像测速(PIV),该图像来自向后的阶跃流的再循环区域,基于阶跃上游的堆积速度和阶跃高度(高度16.5 mm),雷诺数为2800。演示基于适当的正交分解(POD)的测量模型的功能。 POD将三分量PIV速度场分解为一组空间基函数和一组时间系数。建立测量模型时,会将通过“快照”方法从1050个PIV场的集合中确定的低阶POD系数与通过称为立体界面PIV的近壁测量技术测量的时间分辨壁梯度相关联。这些模型是根据速度场的低阶时间POD系数的重建和预测进行评估的。为了确定测量模型的估计系数,应用了线性随机估计(LSE),二次随机估计(QSE),主成分回归(PCR)和核仁岭回归(KRR)。我们将这些方法称为LSE-POD,QSE-POD,PCR-POD和KRR-POD。除了比较测量模型的准确性外,我们还引入了基于POD的多次估算,其中壁梯度事件的过去和将来信息被单独或组合使用。结果表明,多时间估计方法可以改善预测过程。在这些方法中,建议的具有过去墙梯度信息的优化窗口的多次KRR-POD估计可产生最佳预测。这种多次KRR-POD方法为基于壁梯度数据的速度场实时流量估算提供了有用的工具。

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