Abstract
Robotic-assisted systems have gained significant traction in post-stroke therapies to support rehabilitation, since these systems can provide high-intensity and high-frequency treatment while allowing accurate motion-control over the patient’s progress. In this paper, we tackle how to provide active support through a robotic-assisted exoskeleton by developing a novel closed-loop architecture that continually measures electromyographic signals (EMG), in order to adjust the assistance given by the exoskeleton. We used EMG signals acquired from four patients with post-stroke hand impairments for training machine learning models used to characterize muscle effort by classifying three muscular condition levels based on contraction strength, co-activation, and muscular activation measurements. The proposed closed-loop system takes into account the EMG muscle effort to modulate the exoskeleton velocity during the rehabilitation therapy. Experimental results indicate the maximum variation on velocity was 0.7 mm/s, while the proposed control system effectively modulated the movements of the exoskeleton based on the EMG readings, keeping a reference tracking error <5%.
| Original language | English |
|---|---|
| Article number | 4372 |
| Journal | Sensors |
| Volume | 21 |
| Issue number | 13 |
| DOIs | |
| State | Published - 01 Jul 2021 |
Keywords
- Active control
- Assist-as-needed system
- EMG control
- Feedback-fuzzy
- Hand exoskeleton orthosis
- Hand motion rehabilitation
- Robotic-assisted systems
- Stroke rehabilitation
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