论文标题

概念证明研究稀疏加工粒子图像实时流量观察的粒子图像

Proof-of-concept Study of Sparse Processing Particle Image Velocimetry for Real Time Flow Observation

论文作者

Kanda, Naoki, Abe, Chihaya, Goto, Shintaro, Yamada, Keigo, Nakai, Kumi, Saito, Yuji, Asai, Keisuke, Nonomura, Taku

论文摘要

在本文中,我们概述,评估和证明了使用粒子图像速率法(PIV)作为实时流场估计方法稀疏的加工粒子图像速率(SPPIV),而先前提出了SPPIV,而其可行性研究及其实时示范是在这项研究中进行的。在风洞测试中,对NACA0015机翼模型周围的流速场进行了使用SPPIV的PIV测量和实时测量。测试的离线分析结果表明,通过应用SPPIV,可以从少量处理点估算流速度场,并说明了SPPIV的以下特征。随着处理点的数量增加,估计精度会提高,而每步的处理时间与处理点的数量成比例增加。因此,有必要设置最佳的处理点。此外,Kalman滤波器的应用可以显着提高估计精度,同时抑制处理时间。当使用具有不同攻击角度的流速速度场作为带有测试数据的训练数据时,如果训练和测试数据之间的攻击角度差异等于或小于2 dEG,则发现使用SPPIV的估计是合理的,并且训练数据的流量现象与测试数据的流动现象相似。因此,至少应每4度准备培训数据。最后,首次进行了SPPIV作为实时流量观察的演示。在此演示中,发现实时测量是可能以2000 Hz的抽样率在20个或更少的处理点中,在前10个模式估计中,这是离线分析所预期的。

In this paper, we overview, evaluate, and demonstrate the sparse processing particle image velocimetry (SPPIV) as a real-time flow field estimation method using the particle image velocimetry (PIV), whereas SPPIV was previously proposed with its feasibility study and its real-time demonstration is conducted for the first time in this study. In the wind tunnel test, the PIV measurement and real-time measurement using SPPIV were conducted for the flow velocity field around the NACA0015 airfoil model. The off-line analysis results of the test show that the flow velocity field can be estimated from a small number of processing points by applying SPPIV, and also illustrates the following characteristics of SPPIV. The estimation accuracy improves as the number of processing points increases, whereas the processing time per step increases in proportion to the number of processing points. Therefore, it is necessary to set an optimal number of processing points. In addition, the application of the Kalman filter significantly improves the estimation accuracy with a small number of processing points while suppressing the processing time. When the flow velocity fields with different angles of attack are used as the training data with that of test data, the estimation using SPPIV is found to be reasonable if the difference in angle of attack between the training and test data is equal to or less than 2 deg and the flow phenomena of the training data are similar to that of the test data. For this reason, training data should be prepared at least every 4 deg. Finally, the demonstration of SPPIV as a real-time flow observation was conducted for the first time. In this demonstration, the real-time measurement is found to be possible at a sampling rate of 2000 Hz at 20 or less processing points in the top 10 modes estimation as expected by the off-line analyses.

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