ConvNet-Based Prediction of Droplet Collision Dynamics in Microchannels
SM Abdullah Al Mamun, Samaneh Farokhirad

TL;DR
This paper introduces a CNN-based method to predict droplet collision outcomes in microchannels, significantly improving speed and accuracy over traditional simulation techniques.
Contribution
The study presents a novel application of convolutional neural networks to predict droplet collision results, reducing computational time and enhancing scalability.
Findings
Prediction accuracy of 97.2% on test data
CNN model outperforms traditional methods in speed and scalability
Effective in varied physical parameter conditions
Abstract
The dynamics of droplet collisions in microchannels are inherently complex, governed by multiple interdependent physical and geometric factors. Understanding and predicting the outcomes of these collisions-whether coalescence, reverse-back, or pass-over-pose significant challenges, particularly due to the deformability of droplets and the influence of key parameters such as viscosity ratios, density ratios, confinement, and initial offset of droplets. Traditional methods for analyzing these collisions, including computational simulations and experimental techniques, are time-consuming and resource-intensive, limiting their scalability for real-time applications. In this work, we explore a novel data-driven approach to predict droplet collision outcomes using convolutional neural networks (CNNs). The CNN-based approach presents a significant advantage over traditional methods, offering…
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Taxonomy
TopicsFluid Dynamics and Heat Transfer · Particle Dynamics in Fluid Flows · Surface Modification and Superhydrophobicity
