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Mechanism Characteristics Identification and Anti-Disturbance Control for Door-Opening Using Supernumerary Robotic Limbs

  • Harbin Institute of Technology

Research output: Contribution to journalArticlepeer-review

Abstract

Supernumerary robotic limbs (SRLs) are wearable robots that serve as extra limbs, assisting wearers in task completion. The strong coupling between SRLs and wearers results in wearer movements influencing SRLs' actions and the forces exerted on mechanisms during operations. The wearer's movements lead to uncertain and uncontrollable base movements, making operational control of the SRLs challenging. This study proposes a full-process assisted door-opening method using SRLs, integrating a task model and an anti-disturbance door-opening controller. Multimodal information from the SRLs system is utilized to facilitate task state transitions. The anti-disturbance door-opening controller consists of compliant controller, online identification of mechanism characteristics, end-effector trajectory generator, and notch filter. This method enables the SRLs to complete the door-opening task under motion disturbances caused by the wearer, without prior knowledge of the door's resistance, radius, or axis direction. Experimental results show that the SRLs can successfully open doors, with estimates converging to actual values under various radius and axis direction conditions (with radius estimation error less than 0.01m and axial estimation error less than 3.8°). The effectiveness of the proposed control framework is validated in daily environments.

Original languageEnglish
JournalIEEE Robotics and Automation Letters
DOIs
StateAccepted/In press - 2024

Keywords

  • Human Performance Augmentation
  • Human-Robot Collaboration
  • Wearable Robotics

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