학술논문

머신러닝과 3D 프린팅을 이용한 저비용 인공의수 모형
Low-cost Prosthetic Hand Model using Machine Learning and 3D Printing
Document Type
Article
Text
Source
The Journal of the Convergence on Culture Technology (JCCT), 01/31/2024, Vol. 10, Issue 1, p. 19-23
Subject
인공의수
근전도
머신 러닝
디지털 시그널
프로세싱
아두이노
prosthetic hand
electromyography
machine learning
digital signal processing
arduino
Language
한국어(KOR)
ISSN
2384-0358
Abstract
Patients with amputations of both hands need prosthetic hands that serve both cosmetic and functional purposes, and research on prosthetic hands using electromyography of remaining muscles is active, but there is still the problem of high cost. In this study, an artificial prosthetic hand was manufactured and its performance was evaluated using low-cost parts and software such as a surface electromyography sensor, machine learning software Edge Impulse, Arduino Nano 33 BLE, and 3D printing. Using signals acquired with surface electromyography sensors and subjected to digital signal processing through Edge Impulse, the flexing movement signals of each finger were transmitted to the fingers of the prosthetic hand model through training to determine the type of finger movement using machine learning. When the digital signal processing conditions were set to a notch filter of 60 Hz, a bandpass filter of 10-300 Hz, and a sampling frequency of 1,000 Hz, the accuracy of machine learning was the highest at 82.1%. The possibility of being confused between each finger flexion movement was highest for the ring finger, with a 44.7% chance of being confused with the movement of the index finger. More research is needed to successfully develop a low-cost prosthetic hand.