Trajectory-based actuator identification via differentiable simulation

arXiv cs.RO / 4/14/2026

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Key Points

  • The paper introduces a torque-sensor-free, trajectory-based actuator identification approach that fits system-level actuator models using differentiable simulation and encoder motion data only.
  • It formulates identification as trajectory matching, optimizing both actuator and simulator parameters by backpropagating through the simulator without requiring current/voltage sensing or motor-control internals.
  • The framework supports multiple actuator model classes, from compact structured parameterizations to neural actuator mappings, all within a unified optimization pipeline.
  • On held-out real-robot trajectories, the method achieves significantly tighter alignment than a supervised baseline trained on stand data, reducing mean absolute position error from 14.20 mrad to as low as 7.54 mrad.
  • Using the refined actuator model improves a downstream locomotion policy, increasing travel distance by 46% and reducing rotational deviation by 75% versus the baseline.

Abstract

Accurate actuation models are critical for bridging the gap between simulation and real robot behavior, yet obtaining high-fidelity actuator dynamics typically requires dedicated test stands and torque sensing. We present a trajectory-based actuator identification method that uses differentiable simulation to fit system-level actuator models from encoder motion alone. Identification is posed as a trajectory-matching problem: given commanded joint positions and measured joint angles and velocities, we optimize actuator and simulator parameters by backpropagating through the simulator, without torque sensors, current/voltage measurements, or access to embedded motor-control internals. The framework supports multiple model classes, ranging from compact structured parameterizations to neural actuator mappings, within a unified optimization pipeline. On held-out real-robot trajectories under identical commands, the proposed torque-sensor-free identification achieves much tighter trajectory alignment than a supervised stand-trained baseline dominated by steady-state data, reducing mean absolute position error from 14.20 mrad to as low as 7.54 mrad (1.88 times). Finally, we demonstrate downstream impact in a real-robot locomotion study: training policies with the refined actuator model increases travel distance by 46% and reduces rotational deviation by 75% relative to the baseline.