Engineering, Technology & Applied Science Research (Jun 2024)

An sEMG Signal-based Robotic Arm for Rehabilitation applying Fuzzy Logic

  • Ngoc-Khoat Nguyen,
  • Thi-Mai-Phuong Dao,
  • Tien-Dung Nguyen,
  • Duy-Trung Nguyen,
  • Huu-Thang Nguyen,
  • Van-Kien Nguyen

DOI
https://doi.org/10.48084/etasr.7146
Journal volume & issue
Vol. 14, no. 3

Abstract

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The recent surge in biosignal-based control signifies a profound paradigm shift in biomedical engineering. This innovative approach has injected new life into control theory, ushering in advancements in human-body interaction and control. Surface Electromyography (sEMG) emerges as a pivotal biosignal, attracting considerable attention for its wide-ranging applications across medicine, science, and engineering, particularly in the domain of functional rehabilitation. This study delves into the use of sEMG signals for controlling a robotic arm, with the overarching aim of improving the quality of life for people with disabilities in Vietnam. Raw sEMG signals are acquired via appropriate sensors and subjected to a robust processing methodology involving analog-to-digital conversion, band-pass and low-pass filtering, and envelope detection. To demonstrate the efficacy of the processed sEMG signals, this study introduces a robotic arm model capable of mimicking intricate human finger movements. Employing a fuzzy logic control strategy, the robotic arm demonstrates successful operation in experimental trials, characterized by swift response times, thereby positioning it as a valuable assistive device for people with disabilities. This investigation not only validates the feasibility of sEMG-based control for robotic arms, but also underscores its potential to significantly improve the lives of individuals with disabilities, a demographic that represents a substantial portion (approximately 8%) of the Vietnamese population.

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