Sim-to-Real Transfer for Muscle-Actuated Robots via Generalized Actuator Networks
arXiv cs.RO / 4/13/2026
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Key Points
- Soft, tendon-driven muscle-actuated robots face nonlinearities like friction and hysteresis that have historically made sim-to-real policy transfer difficult.
- The paper introduces a sim-to-real pipeline called Generalized Actuator Network (GeAN) that learns a neural actuation model from joint position trajectories rather than torque sensors.
- GeAN combines the learned actuator model with conventional rigid-body simulation for arm dynamics and environment interaction to enable more reliable control transfer.
- Experiments on the PAMY2 four-DOF pneumatic artificial muscle robot demonstrate successful deployment of both goal-reaching and dynamic ball-in-a-cup policies trained entirely in simulation.
- The authors claim this is the first successful sim-to-real transfer for a four-DOF muscle-actuated robot arm using the proposed approach.
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