Temperature Distribution Prediction in Laser Powder Bed Fusion using Transferable and Scalable Graph Neural Networks
Riddhiman Raut, Amit Kumar Ball, Amrita Basak

TL;DR
This paper introduces scalable graph neural network models that accurately predict temperature distributions in laser powder bed fusion, significantly reducing computational costs and generalizing well across different geometries.
Contribution
The study develops transferable GNN surrogates for thermal simulation in L-PBF, learning from small-scale FEA data and applying to larger domains with high accuracy and efficiency.
Findings
GNN models achieve a MAPE of 3.77% on baseline simulations.
Predictions are nearly instant compared to hours of FEA.
Model calibration improves accuracy for larger geometries.
Abstract
This study presents novel predictive models using Graph Neural Networks (GNNs) for simulating thermal dynamics in Laser Powder Bed Fusion (L-PBF) processes. By developing and validating Single-Laser GNN (SL-GNN) and Multi-Laser GNN (ML-GNN) surrogates, the research introduces a scalable data-driven approach that learns fundamental physics from small-scale Finite Element Analysis (FEA) simulations and applies them to larger domains. Achieving a Mean Absolute Percentage Error (MAPE) of 3.77% with the baseline SL-GNN model, GNNs effectively learn from high-resolution simulations and generalize well across larger geometries. The proposed models capture the complexity of the heat transfer process in L-PBF while significantly reducing computational costs. For example, a thermomechanical simulation for a 2 mm x 2 mm domain typically requires about 4 hours, whereas the SL-GNN model can predict…
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Taxonomy
TopicsAdditive Manufacturing Materials and Processes
