Journal of Bionic Engineering ›› 2022, Vol. 19 ›› Issue (5): 1374-1391.doi: 10.1007/s42235-022-00214-z

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Design and Implementation of a Rehabilitation Upper-limb Exoskeleton Robot Controlled by Cognitive and Physical Interfaces

Arturo González‑Mendoza1,2, Ivett Quiñones‑Urióstegui2, Sergio Salazar‑Cruz1, Alberto‑Isaac Perez‑Sanpablo2, Ricardo López‑Gutiérrez3, Rogelio Lozano1,4   

  1. 1 LAFMIA UMI, Center for Research and Advanced, Studies of National Polytechnic Institute, Av. Instituto Politécnico Nacional No. 2508, 07360 Mexico City, Mexico  2 Motion Analysis Lab, National Institute of Rehabilitation Luis Guillermo Ibarra Ibarra, Calz. México Xochimilco No. 289, 14389 Mexico City, Mexico  3 CONACYT-CINVESTAV, Av. Instituto Politécnico Nacional 2508, 07360 Mexico City, Mexico  4 UTC-CNRS UMR, Sorbonne Universités, UTC-CNRS UMR, 7253 Heudiasyc, Compiégne, France 
  • 收稿日期:2021-12-08 修回日期:2022-04-20 接受日期:2022-04-22 出版日期:2022-09-10 发布日期:2022-09-24
  • 通讯作者: Arturo González-Mendoza, Ivett Qui?ones-Urióstegui, Sergio Salazar-Cruz, Alberto-Isaac Perez-Sanpablo, Ricardo López-Gutiérrez & Rogelio Lozano E-mail:rrricardooolopez@gmail.com, agonzalezm@inr.gob.mx, iquinonesu@gmail.com, sesalazar@cinvestav.mx, albperezinr@gmail.com, rogelio.lozano@hds.utc.fr
  • 作者简介:Arturo González?Mendoza1,2, Ivett Qui?ones?Urióstegui2, Sergio Salazar?Cruz1, Alberto?Isaac Perez?Sanpablo2, Ricardo López?Gutiérrez3, Rogelio Lozano1,4

Design and Implementation of a Rehabilitation Upper-limb Exoskeleton Robot Controlled by Cognitive and Physical Interfaces

Arturo González‑Mendoza1,2, Ivett Quiñones‑Urióstegui2, Sergio Salazar‑Cruz1, Alberto‑Isaac Perez‑Sanpablo2, Ricardo López‑Gutiérrez3, Rogelio Lozano1,4   

  1. 1 LAFMIA UMI, Center for Research and Advanced, Studies of National Polytechnic Institute, Av. Instituto Politécnico Nacional No. 2508, 07360 Mexico City, Mexico  2 Motion Analysis Lab, National Institute of Rehabilitation Luis Guillermo Ibarra Ibarra, Calz. México Xochimilco No. 289, 14389 Mexico City, Mexico  3 CONACYT-CINVESTAV, Av. Instituto Politécnico Nacional 2508, 07360 Mexico City, Mexico  4 UTC-CNRS UMR, Sorbonne Universités, UTC-CNRS UMR, 7253 Heudiasyc, Compiégne, France
  • Received:2021-12-08 Revised:2022-04-20 Accepted:2022-04-22 Online:2022-09-10 Published:2022-09-24
  • Contact: Arturo González-Mendoza, Ivett Quiñones-Urióstegui, Sergio Salazar-Cruz, Alberto-Isaac Perez-Sanpablo, Ricardo López-Gutiérrez & Rogelio Lozano E-mail:rrricardooolopez@gmail.com, agonzalezm@inr.gob.mx, iquinonesu@gmail.com, sesalazar@cinvestav.mx, albperezinr@gmail.com, rogelio.lozano@hds.utc.fr
  • About author:Arturo González?Mendoza1,2, Ivett Qui?ones?Urióstegui2, Sergio Salazar?Cruz1, Alberto?Isaac Perez?Sanpablo2, Ricardo López?Gutiérrez3, Rogelio Lozano1,4

摘要: This paper presents an upper limb exoskeleton that allows cognitive (through electromyography signals) and physical user interaction (through load cells sensors) for passive and active exercises that can activate neuroplasticity in the rehabilitation process of people who suffer from a neurological injury. For the exoskeleton to be easily accepted by patients who suffer from a neurological injury, we used the ISO9241-210:2010 as a methodology design process. As the first steps of the design process, design requirements were collected from previous usability tests and literature. Then, as a second step, a technological solution is proposed, and as a third step, the system was evaluated through performance and user testing. As part of the technological solution and to allow patient participation during the rehabilitation process, we have proposed a hybrid admittance control whose input is load cell or electromyography signals. The hybrid admittance control is intended for active therapy exercises, is easily implemented, and does not need musculoskeletal modeling to work. Furthermore, electromyography signals classification models and features were evaluated to identify the best settings for the cognitive human–robot interaction.

关键词: Human , · Robot interaction , · Hybrid admittance control , · Surface electromyography , · Upper-limb exoskeletal robot

Abstract: This paper presents an upper limb exoskeleton that allows cognitive (through electromyography signals) and physical user interaction (through load cells sensors) for passive and active exercises that can activate neuroplasticity in the rehabilitation process of people who suffer from a neurological injury. For the exoskeleton to be easily accepted by patients who suffer from a neurological injury, we used the ISO9241-210:2010 as a methodology design process. As the first steps of the design process, design requirements were collected from previous usability tests and literature. Then, as a second step, a technological solution is proposed, and as a third step, the system was evaluated through performance and user testing. As part of the technological solution and to allow patient participation during the rehabilitation process, we have proposed a hybrid admittance control whose input is load cell or electromyography signals. The hybrid admittance control is intended for active therapy exercises, is easily implemented, and does not need musculoskeletal modeling to work. Furthermore, electromyography signals classification models and features were evaluated to identify the best settings for the cognitive human–robot interaction.

Key words: Human , · Robot interaction , · Hybrid admittance control , · Surface electromyography , · Upper-limb exoskeletal robot