A Synthetic Image Generation and Deep Learning Framework for Entrained Droplet Detection

dc.contributor.authorNoser-Munoz, Jeremiah Samuelen
dc.contributor.committeechairLiu, Yangen
dc.contributor.committeememberHaghighat, Alirezaen
dc.contributor.committeememberFreeman, David Wayneen
dc.contributor.departmentMechanical Engineeringen
dc.date.accessioned2026-06-12T08:04:13Zen
dc.date.available2026-06-12T08:04:13Zen
dc.date.issued2026-06-11en
dc.description.abstractAccurate prediction of two-phase annular flow behavior is essential for the safe operation of nuclear power plants and other thermal-hydraulic systems, where the entrained droplet field within the gas core directly influences mass, momentum, and energy transfer between phases. Despite decades of research, the characterization of entrained droplets continues to rely on empirical correlations developed from limited experimental datasets, and traditional droplet measurement techniques remain labor-intensive and limited in their ability to resolve the full droplet size distribution simultaneously. To address this limitation, this research develops a synthetic image generation pipeline coupled with a YOLO-based convolutional neural network for the automated detection and segmentation of entrained droplets in high-speed annular flow imagery. A physics-based droplet rendering model was developed to reproduce the characteristic backlit droplet appearance observed in experimental images, including the central caustic peak, the dark annular ring produced by total internal reflection, the gravitational shadow crescent, and the Gaussian defocus blur. Three generation methods were implemented: a constant size and blur testing pipeline, a probabilistically-sampled random generation pipeline, and a correlation-grounded Kataoka generation pipeline that uses the Kataoka droplet size distribution, the Sawant-Ishii-Mori entrainment fraction correlation, and a cosine-distributed defocus blur derived from the depth-of-field geometry of a circular pipe cross-section. A gradient contrast exclusion methodology based on the Sobel operator was developed to identify in-focus droplets for inclusion in the YOLO training labels, with the exclusion threshold calibrated against depth-of-field experimental images. YOLO model training was conducted in two campaigns. An initial campaign on a personal NVIDIA GeForce RTX 3050 Ti GPU compared the YOLOv8 and YOLOv11 nano segmentation architectures and identified an exclusion threshold of 0.6 as optimal for a 1.0 mm depth-of-field selection. An additional campaign on the Virginia Tech Advanced Research Computing Tinkercliffs cluster trained the YOLOv11 medium segmentation model on 1,000 synthetic training images and 400 validation images at 1024 x 1024 resolution, over 400 epochs and 32 batches. The cosine blur distribution with σmax = 6.0 pixels produced a YOLOv11m-seg model with bounding box precision and recall of 0.968 and 0.983 respectively, and bounding box mAP50 of 0.990 against the synthetic validation set. Synthetic-to-real droplet realism was quantified through a four-step intensity profile normalization pipeline that progressively isolates spatial scale, absolute intensity, and central-peak asymmetry contributions to the synthetic-real mismatch, and through a Laplacian of Gaussian scale-space analysis that compares the dominant defocus level present in the synthetic and real datasets without requiring per-droplet localization. The Laplacian of Gaussian calibration recovered a dominant blur level of 6.41 pixels in the real RPI dataset and 6.45 pixels in the cosine-blur synthetic dataset, which represents a σmax = 6.0 in the synthetic generation pipeline. The framework demonstrates that physically grounded synthetic image generation, when coupled with rigorous calibration against experimental imagery, produces training data of sufficient fidelity to support automated YOLO-based droplet measurement in annular two-phase flow, with direct applicability to thermal-hydraulic safety analysis in light water reactor systems.en
dc.description.abstractgeneralIn nuclear power plants, water and steam flow together through pipes in patterns that look like fast-moving fog than clean pools and bubbles. One of the most important of these patterns is called annular flow, where steam rushes through the center of a pipe and water travels along the walls and as tiny droplets carried inside the steam. How those droplets behave directly affects whether the fuel inside the reactor stays safely cool. Therefore, measuring the droplets is important for predicting reactor safety, but doing so is difficult because they are small, fast, and there can be hundreds of them in a single high-speed camera frame. This research develops a system that uses artificial intelligence to find and measure droplets in annular flow images automatically. The challenge is that AI models need thousands of labeled example images to learn from, and that kind of labeled droplet data does not exist. To get around this, a computer program was built that creates realistic fake images of droplets, complete with all the visual details that real droplets show in a high-speed camera, such as the bright spot in the middle, the dark ring around the edge, and the soft blurriness that comes from being slightly out of focus. The fake images come with perfect labels because the program knows exactly where every droplet was placed. These synthetic images were then used to train a popular AI model called YOLO, which is the same kind of vision model used in self-driving cars and security systems. Training was done first on a regular laptop and then on Virginia Tech's research supercomputer to handle the much larger datasets needed for the final model. Throughout the project, careful comparisons were made between the synthetic droplets and real droplets photographed in a two-phase flow facility, so that the fake images could be tuned to look as much like the real ones as possible. By the end of the project, the synthetic droplets and real droplets matched closely enough that the AI model trained only on fake images could successfully find and measure real droplets in actual experimental photographs. The broader impact of this work is that it shows a path forward for using modern AI to study fluid flow safely and quickly, without relying on slow manual analysis or physically intrusive measurement instruments. The same approach could eventually help engineers improve the safety codes used to design and license nuclear reactors, and it shows that carefully generated synthetic data can be a credible substitute for hard-to-obtain experimental data in scientific research.en
dc.description.degreeMaster of Scienceen
dc.format.mediumETDen
dc.identifier.othervt_gsexam:47347en
dc.identifier.urihttps://hdl.handle.net/10919/143381en
dc.language.isoenen
dc.publisherVirginia Techen
dc.rightsIn Copyrighten
dc.rights.urihttp://rightsstatements.org/vocab/InC/1.0/en
dc.subjectdeep learningen
dc.subjectannular flowen
dc.subjectdropleten
dc.subjectentrainmenten
dc.subjectdata generationen
dc.subjecttwo-phase flowen
dc.titleA Synthetic Image Generation and Deep Learning Framework for Entrained Droplet Detectionen
dc.typeThesisen
thesis.degree.disciplineNuclear Engineeringen
thesis.degree.grantorVirginia Polytechnic Institute and State Universityen
thesis.degree.levelmastersen
thesis.degree.nameMaster of Scienceen

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