Parameter-Efficient Conditioning for Material Generalization in Graph-Based Simulators
Naveen Raj Manoharan, Hassan Iqbal, Krishna Kumar

TL;DR
This paper introduces a parameter-efficient conditioning method for graph network simulators, enabling them to generalize across different materials with minimal additional training, especially useful for inverse problems.
Contribution
It proposes a FiLM-based conditioning mechanism targeting early message-passing layers, reducing data needs and enabling material parameter adaptation in GNS models.
Findings
Fine-tuning early layers matches full model performance.
Achieves accurate predictions with only 12 short trajectories.
Successfully identifies unknown material parameters from data.
Abstract
Graph network-based simulators (GNS) have demonstrated strong potential for learning particle-based physics (such as fluids, deformable solids, and granular flows) while generalizing to unseen geometries due to their inherent inductive biases. However, existing models are typically trained for a single material type and fail to generalize across distinct constitutive behaviors, limiting their applicability in real-world engineering settings. Using granular flows as a running example, we propose a parameter-efficient conditioning mechanism that makes the GNS model adaptive to material parameters. We identify that sensitivity to material properties is concentrated in the early message-passing (MP) layers, a finding we link to the local nature of constitutive models (e.g., Mohr-Coulomb) and their effects on information propagation. We empirically validate this by showing that fine-tuning…
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