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Mass-Adaptive Admittance Control for Robotic Manipulators

22 April 2025
Hossein Gholampour
Jonathon E. Slightam
Logan E. Beaver
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Abstract

Handling objects with unknown or changing masses is a common challenge in robotics, often leading to errors or instability if the control system cannot adapt in real-time. In this paper, we present a novel approach that enables a six-degrees-of-freedom robotic manipulator to reliably follow waypoints while automatically estimating and compensating for unknown payload weight. Our method integrates an admittance control framework with a mass estimator, allowing the robot to dynamically update an excitation force to compensate for the payload mass. This strategy mitigates end-effector sagging and preserves stability when handling objects of unknown weights. We experimentally validated our approach in a challenging pick-and-place task on a shelf with a crossbar, improved accuracy in reaching waypoints and compliant motion compared to a baseline admittance-control scheme. By safely accommodating unknown payloads, our work enhances flexibility in robotic automation and represents a significant step forward in adaptive control for uncertain environments.

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@article{gholampour2025_2504.16224,
  title={ Mass-Adaptive Admittance Control for Robotic Manipulators },
  author={ Hossein Gholampour and Jonathon E. Slightam and Logan E. Beaver },
  journal={arXiv preprint arXiv:2504.16224},
  year={ 2025 }
}
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