FLARE: A Data-Efficient Surrogate for Predicting Displacement Fields in Directed Energy Deposition
arXiv cs.LG / 4/21/2026
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Key Points
- The paper presents FLARE, a data-efficient surrogate modeling framework to predict post-cooling displacement fields in directed energy deposition (DED) using geometric and process parameters.
- Instead of relying on expensive thermo-mechanical finite element simulations, FLARE uses an implicit neural field representation and regularizes network weights to reflect an affine relationship in the input parameter space.
- The authors build an open-source finite element simulation workflow for predefined-geometry DED and generate a dataset spanning variations in geometry, laser power, and deposition velocity, with full-field displacement, stress, strain, and temperature outputs.
- Experiments on a DED benchmark show FLARE achieves higher accuracy than baseline methods in both in-distribution prediction and extrapolation to unseen parameter combinations.
- The study suggests the affine weight-space reconstruction idea can generalize beyond displacement prediction to other physical-field surrogate modeling tasks that are costly to simulate.
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