Keywords: fuzzy control module, post-stroke patients, robotic device, algorithm, base of fuzzy decision rules
Adaptive biotechnical system with a robotic device for the restoration of motor functions of the lower extremities in post-stroke patients
UDC 004.89
DOI: 10.26102/2310-6018/2021.34.3.022
To restore the motor functions of the lower extremities in post-stroke patients, it is proposed to use a biotechnical system with a robotic device. The control is based on the analysis and classification of electromyosignals. The robotic device is controlled by a fuzzy control module, which allows maintaining three modes of rehabilitation, selecting and switching them depending on the functional state of the patient, thereby deciding on the optimal rehabilitation program for the current functional state of the patient. The control model includes three fuzzy control modules with the corresponding bases of fuzzy decision rules and it allows you to adapt the rehabilitation procedure to the functional state of the patient. To assess the effectiveness of the proposed method of rehabilitation, the experimental group included 23 patients who underwent exacerbations from 25 days to 5 years, including patients with subacute (<180 days after exacerbation) and chronic (> 180 days after exacerbation) conditions. After a course of rehabilitation by means of a biotechnical system with a fuzzy control module, there is a significant increase in the maxima of the support reaction force Rz on the affected leg in the experimental group in relation to the control group. Accordingly, the amplitude of the front push in the experimental group increased by 62% (120%), the rear push by 58% (115%), while in the control group the amplitude increase was 40% (101%) and 41% (105 %). In this case, distinct maxima of the support reaction component Rz appear on the paretic leg.
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Keywords: fuzzy control module, post-stroke patients, robotic device, algorithm, base of fuzzy decision rules
For citation: Filist S.A., Trifonov A.A., Kuzmin A.A., Petrunina E.V., Mohamad T.S. Adaptive biotechnical system with a robotic device for the restoration of motor functions of the lower extremities in post-stroke patients. Modeling, Optimization and Information Technology. 2021;9(3). URL: https://moitvivt.ru/ru/journal/pdf?id=1037 DOI: 10.26102/2310-6018/2021.34.3.022 (In Russ).
Received 15.08.2021
Revised 12.09.2021
Accepted 15.09.2021
Published 30.09.2021