Predicting liquid properties and behavior via droplet pinch-off and machine learning
Jingtao Wang, Qiwei Chen, C Ricardo Constante-Amores, Denise Gorse, Alfonso Arturo Castrejon-Pita, and Jose Rafael, Castrejon-Pitaa

TL;DR
This study shows that droplet pinch-off morphology contains enough physical information for machine learning models to accurately predict key fluid properties like viscosity and surface tension, offering a faster alternative to traditional measurement methods.
Contribution
The paper introduces a machine learning approach that uses droplet pinch-off images to infer fluid properties, demonstrating its effectiveness across various Newtonian fluids and flow conditions.
Findings
ML models accurately predict viscosity and surface tension.
Droplet geometry at pinch-off encodes sufficient physical information.
Unsupervised clustering reveals physical property regions in flow parameter space.
Abstract
Here we demonstrate that the time-evolving interface observed during droplet formation, and consequently the resulting morphology nearing pinch-off, encode sufficient physical information for machine-learning (ML) frameworks to accurately infer key fluid properties, including viscosity and surface tension. Snapshots of dripping drops at the moment of break-up, together with their liquid properties and the flow rate, are used to form a data set for training ML algorithms. Experiments consisted of visualizing, using high-speed imaging, the process of droplet formation and identifying the frame closest to break-up. Experiments were conducted using Newtonian fluids under controlled flow conditions. In terms of the Reynolds (Re) and Ohnesorge (Oh) numbers, our conditions cover the domains 0.001< Re< 200 and 0.01 < Oh < 20, by using silicon oils, aqueous solutions of ethanol and glycerin, and…
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Taxonomy
TopicsInnovative Microfluidic and Catalytic Techniques Innovation · Surface Modification and Superhydrophobicity · Fluid Dynamics and Heat Transfer
