Material-Agnostic Zero-Shot Thermal Inference for Metal Additive Manufacturing via a Parametric PINN Framework

arXiv cs.LG / 4/17/2026

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Key Points

  • The paper presents a parametric physics-informed neural network (PINN) framework for zero-shot thermal modeling in metal additive manufacturing that generalizes across arbitrary materials without labeled data, retraining, or pre-training.
  • It uses a decoupled architecture that separately encodes material properties and spatiotemporal coordinates, then fuses them via conditional modulation to reflect the multiplicative influence of material parameters in the governing equations and boundary conditions.
  • To improve physical consistency and training stability, the method incorporates physics-guided output scaling based on Rosenthal’s analytical solution and applies a hybrid optimization strategy.
  • Experiments on laser powder bed fusion (LPBF) with multiple metal alloys (including out-of-distribution materials) show strong zero-shot generalization and improved training efficiency, achieving up to a 64.2% reduction in relative L2 error versus a non-parametric baseline.
  • Ablation results indicate the key components of the approach are broadly transferable to other PINN-based methods, supporting scalability and practical deployment for material-agnostic thermal inference in metal AM.

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 the governing equation and boundary conditions. Physics-guided output scaling derived from Rosenthal's analytical solution and a hybrid optimization strategy are further incorporated to enhance physical consistency, training stability, and convergence. Experiments on bare plate laser powder bed fusion (LPBF) across diverse metal alloys, including both in-distribution and out-of-distribution cases, demonstrate effective zero-shot generalizability along with superior training efficiency. Specifically, the proposed framework achieved up to a 64.2% reduction in relative L2 error compared to the non-parametric baseline while surpassing its performance within only 4.4% of the baseline training epochs. Ablation studies confirm that the proposed framework's components are broadly applicable to other PINN-based approaches. Overall, the proposed framework provides an efficient and scalable material-agnostic solution for zero-shot thermal modeling, contributing to more flexible and practical deployment in metal AM.