Predicting Energy Budgets in Droplet Dynamics: A Recurrent Neural Network Approach
Diego A. de Aguiar, Hugo L. Fran\c{c}a, Cassio M. Oishi

TL;DR
This paper demonstrates that LSTM neural networks can accurately predict energy budgets in droplet dynamics using geometric time series data, with potential applications in various fluid mechanics fields.
Contribution
The study introduces a novel application of LSTM networks to predict energy budgets in droplet dynamics using only geometric data, bridging simulation and experimental analysis.
Findings
LSTM accurately predicts energy trends across different Reynolds and Weber numbers.
The approach effectively estimates static parameters from geometric data.
Method shows promise for experimental data application.
Abstract
Neural networks in fluid mechanics offer an efficient approach for exploring complex flows, including multiphase and free surface flows. The recurrent neural network, particularly the Long Short-Term Memory (LSTM) model, proves attractive for learning mappings from transient inputs to dynamic outputs. This study applies LSTM to predict transient and static outputs for fluid flows under surface tension effects. Specifically, we explore two distinct droplet dynamic scenarios: droplets with diverse initial shapes impacting with solid surfaces, as well as the coalescence of two droplets following collision. Using only dimensionless numbers and geometric time series data from numerical simulations, LSTM predicts the energy budget. The marker-and-cell front-tracking methodology combined with a marker-and-cell finite-difference strategy is adopted for simulating the droplet dynamics. Using a…
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Taxonomy
TopicsVehicle emissions and performance · Catalytic Processes in Materials Science
MethodsTanh Activation · Sigmoid Activation · Long Short-Term Memory
