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인공신경망과 근전도를 이용한 인간의 관절 강성 예측Predicting the Human Multi-Joint Stiffness by Utilizing EMG and ANN

Other Titles
Predicting the Human Multi-Joint Stiffness by Utilizing EMG and ANN
Authors
강병덕김병찬박신석김현규
Issue Date
2008
Publisher
한국로봇학회
Keywords
Joint Stiffness; Artificial Neural Network; Electromyogram; Contact Task
Citation
로봇학회 논문지, v.3, no.1, pp.9 - 15
Journal Title
로봇학회 논문지
Volume
3
Number
1
Start Page
9
End Page
15
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/125117
ISSN
1975-6291
Abstract
Unlike robotic systems, humans excel at a variety of tasks by utilizing their intrinsic impedance, force sensation, and tactile contact clues. By examining human strategy in arm impedance control, we may be able to teach robotic manipulators human’s superior motor skills in contact tasks. This paper develops a novel method for estimating and predicting the human joint impedance using the electromyogram(EMG) signals and limb position measurements. The EMG signal is the summation of MUAPs (motor unit action potentials). Determination of the relationship between the EMG signals and joint stiffness is difficult, due to irregularities and uncertainties of the EMG signals. In this research, an artificial neural network(ANN) model was developed to model the relation between the EMG and joint stiffness. The proposed method estimates and predicts the multi joint stiffness without complex calculation and specialized apparatus. The feasibility of the developed model was confirmed by experiments and simulations
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