Material-Agnostic Zero-Shot Thermal Inference for Metal Additive Manufacturing via a Parametric PINN Framework
Hyeonsu Lee, Jihoon Jeong

TL;DR
This paper presents a parametric PINN framework enabling zero-shot thermal modeling across different metal AM materials without retraining, improving efficiency and generalization.
Contribution
A novel decoupled parametric PINN architecture with physics-guided scaling for material-agnostic zero-shot thermal inference in metal additive manufacturing.
Findings
Achieved up to 64.2% reduction in relative L2 error compared to non-parametric baseline.
Demonstrated effective zero-shot generalization on diverse metal alloys.
Surpassed baseline performance within only 4.4% of training epochs.
Abstract
Accurate thermal modeling in metal additive manufacturing (AM) is essential for understanding the process-structure-performance relationship. While prior studies have explored generalization across unseen process conditions, they often require extensive datasets, costly retraining, or pre-training. Generalization across different materials also remains relatively unexplored due to the challenges posed by distinct material-dependent thermal behaviors. This paper introduces a parametric physics-informed neural network (PINN) framework for zero-shot generalization across arbitrary materials without labeled data, retraining, or pre-training. The framework adopts a decoupled parametric PINN architecture that separately encodes material properties and spatiotemporal coordinates, fusing them through conditional modulation to better align with the multiplicative role of material parameters in…
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