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Spine-like Joint Link Mechanism to Design Wearable Assistive Devices with Comfort and Support

2021-11-27 11:21:31
Jungyeong Kim, Jungsan Cho, Jinhyeon Kim, Jin Tak Kim, Sangchul Han, Sangshin Park, Han Ul Yoon

Abstract

When we develop wearable assistive devices comfort and support are two main issues needed to be considered. In conventional design approaches, the degree of freedom of wearer's joint movement tends to be oversimplified. Accordingly, the wearer's motion becomes restrained and bone/ligament injuries might occur in case of unexpected fall. To mitigate those issues, this letter proposes a novel joint link mechanism inspired by a human spine structure as well as functionalities. The key feature of the proposed spine-like joint link mechanism is that hemispherical blocks are concatenated via flexible synthetic fiber lines so that their concatenation stiffness can be adjusted according to a tensile force. This feature has a great potentiality for designing a wearable assistive devices that can support aged people's sit-to-stand action or augment a spinal motion by regulating the concatenation stiffness. In addition, the concatenated hemispherical blocks enables the wearer to move his/her joint with the full degree of freedom, which in turn, increases wearer's mobility and prevents joint misalignment. The experimental results with a testbed and a pilot wearer substantiated that the spine-like joint link mechanism can serve as a key component to design the wearable assistive devices for better mobility and safety.

Abstract (translated)

URL

https://arxiv.org/abs/2111.13868

PDF

https://arxiv.org/pdf/2111.13868.pdf


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