Nonlinear mapping from EMG to prosthesis closing velocity improves force control with EMG biofeedback

Filip Gasparic, Nikola Jorgovanovic, Christian Hofer, Michael F. Russold, Mario Koppe, Darko Stanisic, Strahinja Dosen

Research output: Contribution to journalJournal articleResearchpeer-review

2 Citations (Scopus)

Abstract

When using EMG biofeedback to control the grasping force of a myoelectric prosthesis, subjects need to activate their muscles and maintain the myoelectric signal within an appropriate interval. However, their performance decreases for higher forces, because the myoelectric signal is more variable for stronger contractions. Therefore, the present study proposes to implement EMG biofeedback using nonlinear mapping, in which EMG intervals of increasing size are mapped to equal-sized intervals of the prosthesis velocity. To validate this approach, 20 non-disabled subjects performed force-matching tasks using Michelangelo prosthesis with and without EMG biofeedback with linear and nonlinear mapping. Additionally, four transradial amputees performed a functional task in the same feedback and mapping conditions. The success rate in producing desired force was significantly higher with feedback (65.4±15.9%) compared to no feedback (46.2±14.9%) as well as when using nonlinear (62.4±16.8%) versus linear mapping (49.2±17.2%). Overall, in non-disabled subjects, the highest success rate was obtained when EMG biofeedback was combined with nonlinear mapping (72%), and the opposite for linear mapping with no feedback (39.6%). The same trend was registered also in four amputee subjects. Therefore, EMG biofeedback improved prosthesis force control, especially when combined with nonlinear mapping, which showed to be an effective approach to counteract increasing variability of myoelectric signal for stronger contractions.

Original languageEnglish
Article number10179983
JournalIEEE Transactions on Haptics
Volume16
Issue number3
Pages (from-to)379-390
Number of pages12
ISSN2334-0134
DOIs
Publication statusPublished - Sept 2023

Keywords

  • Biological control systems
  • EMG biofeedback
  • Electromyography
  • Force
  • Grasping
  • Muscles
  • Prosthetics
  • Vibrations
  • grasping force control
  • linear mapping
  • myoelectric prosthesis
  • nonlinear mapping

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