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Intelligent wearable rehabilitation robot control system based on mobile communication network

Authors :
Fengmei Gao
Linhong Wang
Lin Tao
Source :
Computer Communications. 153:286-293
Publication Year :
2020
Publisher :
Elsevier BV, 2020.

Abstract

A large number of disabled people are caused by major diseases and accidents. Because disabled patients cannot exercise freely on their own, in order to prevent muscle atrophy, the most effective treatment is to exercise the patients’ limbs. Therefore, it is necessary to choose a more suitable rehabilitation training method to replace the traditional artificial rehabilitation training method, and the use of intelligent wearable rehabilitation robots to treat hemiplegia patients is particularly important for the rehabilitation treatment of hemiplegia patients. Rehabilitation robots can promote the development of medical technology and medical equipment, and have important practical significance for patients to overcome disease and recover health and build a harmonious family. This paper mainly studies the EMG research of the control system of intelligent wearable rehabilitation robot based on mobile communication network. This paper studies the way of stimulating signals and the processing of signal feedback in the process of electromyographic stimulation of rehabilitation robots to improve the rehabilitation effect of robots after stimulation; explores the problem of using biofeedback and fuzzy control rules to control patients for rehabilitation training, which urges patients actively participate in rehabilitation treatment, effectively guide the recovery of patients’ self-consciousness, and build a variety of training modes for rehabilitation robots to enhance the robot’s ability to adapt to different groups of people. In the experiments of this paper, the time window for data processing is 256ms, and the delay is also 256ms. It can be seen that the original SEMG signal of the control signal has some delay compared with the filtered SEMG signal.

Details

ISSN :
01403664
Volume :
153
Database :
OpenAIRE
Journal :
Computer Communications
Accession number :
edsair.doi...........39b480e3382546b76feb45dfee98c2b8
Full Text :
https://doi.org/10.1016/j.comcom.2020.01.054