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

arXiv cs.RO / 3/24/2026

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Key Points

  • The paper addresses the sim-to-real gap in soft-robot simulation, especially when robot geometry is treated as a design variable, making conventional system identification unreliable when models are misspecified or observations are sparse.
  • It introduces RAFL (Residual Acceleration Field Learning), which adds a transferable, element-level learned corrective dynamics field to a base differentiable simulator.
  • RAFL is trained end-to-end with sparse marker observations and is designed to be agnostic to global mesh topology and discretization, enabling generalization across different robot shapes.
  • Experiments show RAFL delivers consistent zero-shot improvements on unseen morphologies in both sim-to-sim and sim-to-real settings, whereas system identification can suffer negative transfer.
  • The method also supports continual refinement so that simulation accuracy can improve progressively during morphology optimization.

Abstract

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.