Using machine learning to construct velocity fields from OH-PLIF images
Shivam Barwey, Malik Hassanaly, Venkat Raman, Adam Steinberg

TL;DR
This paper demonstrates that convolutional neural networks can effectively reconstruct three-component velocity fields from OH-PLIF images in a combustor, with local models outperforming global ones especially in detached flame regimes.
Contribution
It introduces a CNN-based method for converting OH-PLIF images into PIV velocity fields, highlighting the advantages of local over global models and the ability to generalize across domain symmetries.
Findings
Local CNNs outperform global CNNs in detached regimes.
CNNs are more accurate for attached flames.
Time history input yields minor improvements.
Abstract
This work utilizes data-driven methods to morph a series of time-resolved experimental OH-PLIF images into corresponding three-component planar PIV fields in the closed domain of a premixed swirl combustor. The task is carried out with a fully convolutional network, which is a type of convolutional neural network (CNN) used in many applications in machine learning, alongside an existing experimental dataset which consists of simultaneous OH-PLIF and PIV measurements in both attached and detached flame regimes. Two types of models are compared: 1) a global CNN which is trained using images from the entire domain, and 2) a set of local CNNs, which are trained only on individual sections of the domain. The locally trained models show improvement in creating mappings in the detached regime over the global models. A comparison between model performance in attached and detached regimes shows…
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