Adaptive Human Force Scaling Via Admittance Control for Physical Human-Robot Interaction

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Date

2021

Journal Title

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Volume Title

Publisher

IEEE

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HYBRID

Green Open Access

Yes

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Top 10%
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Top 10%
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Abstract

The goal of this article is to design an admittance controller for a robot to adaptively change its contribution to a collaborative manipulation task executed with a human partner to improve the task performance. This has been achieved by adaptive scaling of human force based on her/his movement intention while paying attention to the requirements of different task phases. In our approach, movement intentions of human are estimated from measured human force and velocity of manipulated object, and converted to a quantitative value using a fuzzy logic scheme. This value is then utilized as a variable gain in an admittance controller to adaptively adjust the contribution of robot to the task without changing the admittance time constant. We demonstrate the benefits of the proposed approach by a pHRI experiment utilizing Fitts’ reaching movement task. The results of the experiment show that there is a) an optimum admittance time constant maximizing the human force amplification and b) a desirable admittance gain profile which leads to a more effective co-manipulation in terms of overall task performance.

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Keywords

Fitts' task, Admittance, Acceleration, Force, Collaboration, Adaptive force amplification, Admittance control, Collaborative manipulation, Physical human-robot interaction, Task analysis, Human intention, Robots, Damping, Fuzzy Logic, Movement, Task Performance and Analysis, Humans, Female, Robotics

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Fields of Science

0209 industrial biotechnology, 02 engineering and technology

Citation

Hamad, Y. M., Aydin, Y., & Basdogan, C. (2021). Adaptive Human Force Scaling via Admittance Control for Physical Human-Robot Interaction. IEEE Transactions on Haptics, 14(4), 750–761. https://doi.org/10.1109/toh.2021.3071626

WoS Q

Q2

Scopus Q

Q2
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OpenCitations Citation Count
32

Source

IEEE Transactions on Haptics

Volume

14

Issue

4

Start Page

750–761

End Page

761
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Scopus : 49

PubMed : 4

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49

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41

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Page Views

284

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Downloads

436

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