4.5 Article

Particle image velocimetry analysis with simultaneous uncertainty quantification using Bayesian neural networks

Journal

MEASUREMENT SCIENCE AND TECHNOLOGY
Volume 32, Issue 10, Pages -

Publisher

IOP PUBLISHING LTD
DOI: 10.1088/1361-6501/abf78f

Keywords

particle image velocimetry; uncertainty; Bayesian neural networks

Funding

  1. U.S. Department of Energy through the Los Alamos National Laboratory
  2. National Nuclear Security Administration of U.S. Department of Energy [89233218CNA000001]

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Particle image velocimetry (PIV) is an effective tool for extracting flow fields, and convolutional neural networks (CNNs) have been successfully applied to PIV analysis with uncertainty quantification. By comparing different Bayesian CNN models, it is found that utilizing interrogation region cross-correlation maps as inputs improves performance. Additionally, the best performing BCNN shows promising results on both synthetic and real image pairs from the 1st International PIV Challenge, demonstrating potential for future applications in multi-pass PIV algorithms.
Particle image velocimetry (PIV) is an effective tool in experimental fluid mechanics for extracting flow fields from images. Recently, convolutional neural networks (CNNs) have been used to perform PIV analysis with accuracy on par with classical methods. Here we extend the use of CNNs to analyze PIV data while providing simultaneous uncertainty quantification on the inferred flow field. The method we apply in this paper is a Bayesian convolutional neural network (BCNN) which learns distributions of the CNN weights through variational Bayes. In order to demonstrate the utility of BCNNs for the PIV task, we compare the performance of three distinct BCNN models with simple architectures. The first network estimates flow velocity from image interrogation regions only. Our second model learns to infer velocity from both the image interrogation regions and interrogation region cross-correlation maps. Finally, our best performing network infers velocities from interrogation region cross-correlation maps only. We find that BCNNs using interrogation region cross-correlation maps as inputs perform better than those using interrogation windows only as inputs and discuss reasons why this may be the case. Additionally, we test the best performing BCNN on a full synthetic test image pair and a real image pair from the 1st International PIV Challenge. We show that similar to 98% of true particle displacements from the full synthetic image pair can be captured within the BCNN's 95% confidence intervals, and that the BCNN's performance on the real image pair is quantitatively similar to that of algorithms tested in the 1st International PIV Challenge. Finally, we show that BCNNs can be generalized to be used with multi-pass PIV algorithms with a moderate loss in accuracy, which may be overcome by future work on finetuning and training schemes. To our knowledge, this is the first use of Bayesian neural networks to perform PIV.

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