RAFL: Generalizable Sim-to-Real of Soft Robots with Residual Acceleration Field Learning

arXiv

Dong Heon Cho, Boyuan Chen

RAFL overview

Summary

Differentiable simulators enable gradient-based optimization of soft robots over material parameters, control, and morphology, but accurately modeling real systems remains challenging due to the sim-to-real gap. This issue becomes more pronounced when geometry is itself a design variable. System identification reduces discrepancies by fitting global material parameters to data; however, when constitutive models are misspecified or observations are sparse, identified parameters often absorb geometry-dependent effects rather than reflect intrinsic material behavior. More expressive constitutive models can improve accuracy but substantially increase computational cost, limiting practicality.
We propose a residual acceleration field learning (RAFL) framework that augments a base simulator with a transferable, element-level corrective dynamics field. Operating on shared local features, the model is agnostic to global mesh topology and discretization. Trained end-to-end through a differentiable simulator using sparse marker observations, the learned residual generalizes across shapes. In both sim-to-sim and sim-to-real experiments, our method achieves consistent zero-shot improvements on unseen morphologies, while system identification frequently exhibits negative transfer. The framework also supports continual refinement, enabling simulation accuracy to accumulate during morphology optimization.

Citation

Cho, Dong Heon, and Boyuan Chen. “RAFL: Generalizable Sim-to-Real of Soft Robots with Residual Acceleration Field Learning.” arXiv preprint arXiv:2603.22039 (2026).

BibTex

@article{cho2026rafl, title={RAFL: Generalizable Sim-to-Real of Soft Robots with Residual Acceleration Field Learning}, author={Cho, Dong Heon and Chen, Boyuan}, journal={arXiv preprint arXiv:2603.22039}, year={2026} }

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