Arm exoskeleton - concept and development under the grant "Things are for people"

Authors

  • Izabela Rojek Kazimierz Wielki University
  • Mariusz Kaczmarek Kazimierz Wielki University
  • Piotr Kotlarz Kazimierz Wielki University
  • Marcin Kempiński Kazimierz Wielki University
  • Dariusz Mikołajewski Kazimierz Wielki University
  • Zbigniew Szczepański Kazimierz Wielki University
  • Jakub Kopowski Kazimierz Wielki University
  • Joanna Nowak Kazimierz Wielki University
  • Marek Macko Kazimierz Wielki University
  • Tomasz Schmidt
  • Paweł Leszczyński

DOI:

https://doi.org/10.34767/SIMIS.2022.03.04

Keywords:

hand; additive manufacturing; biomechanics; computer-aided design; exoskeleton.

Abstract

The Institute of Computer Science and the Faculty of Mechatronics at Kazimierz Wielki University, together with Edurewolucje Sp. z o. o. z/s in Bydgoszcz, received funding under the 'Things are for people' competition of the National Centre for Research and Development for the project entitled 'Development of a functional arm exoskeleton for active training and rehabilitation'. The aim of the project is to carry out research and development work leading to the development of an innovative technology allowing for the independent rehabilitation of
people with special needs (with the participation of rehabilitators and physiotherapists). The project envisages the construction of a prototype of a mechanical rehabilitation robot, the so-called hand exoskeleton, which will support the process of rehabilitation of people with paresis and other specific needs regarding lack of mobility in the hand area. The project will develop specialised, dedicated software that will adapt the strength and type of work of the hand exoskeleton to the current needs and goals of the patient's rehabilitation programme. The aim of
this paper is to provide an insight into the origins and development of the above concept within the project team during the project work to date.

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Published

2022-12-01