Atomistic Simulation Guided Convolutional Neural Networks for Thermal Modeling of Friction Stir Welding
Akshansh Mishra

TL;DR
This paper develops a convolutional neural network trained on atomistic simulation data to accurately predict temperature evolution in friction stir welding, bridging atomic scale insights with thermal modeling.
Contribution
It introduces a novel approach combining molecular dynamics simulations with CNNs for thermal prediction in welding, capturing atomic-scale phenomena.
Findings
Achieved R^2 of 0.9439 in temperature prediction
Model emphasizes regions near the tool interface
Demonstrated spatial learning from atomistic data
Abstract
Accurate prediction of temperature evolution is essential for understanding thermomechanical behavior in friction stir welding. In this study, molecular dynamics simulations were performed using LAMMPS to model aluminum friction stir welding at the atomic scale, capturing material flow, plastic deformation, and heat generation during tool plunge, traverse, and retraction. Atomic positions and velocities were extracted from simulation trajectories and transformed into physics based two dimensional spatial grids. These grids represent local height variation, velocity components, velocity magnitude, and atomic density, preserving spatial correlations within the weld zone. A two-dimensional convolutional neural network was developed to predict temperature directly from the spatially resolved atomistic data. Hyperparameter optimization was carried out to determine an appropriate network…
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Taxonomy
TopicsAdvanced Welding Techniques Analysis · Machine Learning in Materials Science · Block Copolymer Self-Assembly
