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Designing Underactuated Graspers with Dynamically Variable Geometry Using Potential Energy Map Based Analysis

14 March 2022
Connor L. Yako
Shenli Yuan
J. Kenneth Salisbury
ArXiv (abs)PDFHTML
Main:7 Pages
10 Figures
Bibliography:1 Pages
1 Tables
Abstract

In this paper we present a potential energy map based approach that provides a framework for the design and control of a robotic grasper. Unlike other potential energy map approaches, our framework is able to consider friction for a more realistic perspective on grasper performance. Our analysis establishes the importance of including variable geometry in a grasper design, namely with regards to palm width, link lengths, and transmission ratio. We demonstrate the use of this method specifically for a two-phalanx tendon-pulley underactuated grasper, and show how various design parameters - palm width, link lengths, and transmission ratios - impact the grasping and manipulation performance of a specific design across a range of object sizes and friction coefficients. Optimal grasping designs have palms that scale with object size, and transmission ratios that scale with the coefficient of friction. Using a custom manipulation metric we compared a grasper that only dynamically varied its geometry to a grasper with a variable palm and distinct actuation commands. The analysis revealed the advantage of the compliant reconfiguration ability intrinsic to underactuated mechanisms; by varying only the geometry of the grasper, manipulation of a wide range of objects could be performed.

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@article{yako2025_2203.07456,
  title={ Designing Underactuated Graspers with Dynamically Variable Geometry Using Potential Energy Map Based Analysis },
  author={ Connor L. Yako and Shenli Yuan and J. Kenneth Salisbury },
  journal={arXiv preprint arXiv:2203.07456},
  year={ 2025 }
}
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