Abstract

A new method is hereby presented to reduce motion blur induced error of time-resolved particle image velocimetry. The Monte-Carlo method (MCM) was applied to synthetic images to quantify the error due to blurred particle images. As the size of the streaks grew, it caused large errors in estimating displacements and increased the frequency of outliers beyond 20% for some cases. The mean displacement error was also about 0.2 – 0.55 px, which is larger than the nominally accepted PIV uncertainty of 0.1 px. A novel deblur filter (i.e., the generator) using a generative adversarial network (GAN) was developed, using 1 million synthetic images. The generator was verified using unlearned data from the MCM. The frequency of outliers, which was originally higher than 20% for the worst case, decreased to about 6%, and the displacement error was reduced to less than 0.3 px. The generator was applied to actual experimental images of a synthetic jet that had image blur and resulted in a substantial reduction of outliers. We also checked the performance of the generator in a uniform channel flow, and found that the deblurred images resulted in less PIV velocity error, and was closer to the results from the sharp images than those from the blurry images.Graphic abstract

Highlights

  • Time-resolved particle image velocimetry (TR-PIV) utilizes high-speed photography to evaluate continuous fluid motion in a non-intrusive manner

  • Research has been ongoing to improve the capability of TR-PIV (She et al 2021; Beresh et al 2021)

  • The study showed that generative adversarial network (GAN) removes blur from images more effectively than conventional convolutional neural network (CNN)

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Summary

Introduction

Time-resolved particle image velocimetry (TR-PIV) utilizes high-speed photography to evaluate continuous fluid motion in a non-intrusive manner Unsteady flow phenomena such as turbulence can be measured with this technique. The cross-correlation map was asymmetric because of the blur effect They noted that this could cause errors in the PIV analysis. The study showed that GAN removes blur from images more effectively than conventional CNN This suggests that this type of deblurring could possibly be implemented for PIV. This study focuses on quantifying the blur effect and developing a deblur filter which can reduce blur induced PIV errors.

Synthetic image
PIV analysis
Blur effect estimation
Learning procedure
Learning results
Deblur effect quantification
Findings
Experimental setup
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