Employing EMG sensors in Bionic limbs based on a New Binary Trick Method

M. G. Mohammed, Belnd Saadi Salih, Vaman Muhammed Haji
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Abstract

Human muscles can be read by using electromyography (EMG) sensors, which are electrical signals generated by the muscles of human and animal bodies. This means it is possible to use electricity generated by muscles to control actuators/servo motors for any specific tasks. This could support a wide range of applications, especially for people with disabilities. One such application would be making bionic limbs based on servo motors. According to a study held by the K4D helpdesk report based on estimations that 15.3% of the world’s population has a moderate or severe disability, this proportion is likely to increase to 18-20% in conflict- affected areas (Thompson, 2017). The goal of this study is to make bionic limbs affordable by minimizing the cost while maintaining accuracy at an acceptable rate. To achieve this goal, the study proposes a new idea for using electromyography (EMG) sensors in bionic limbs, which suggests a decrease in the number of EMG sensors to decrease the cost and power consumption. Decreasing the number of EMG sensors will result in a loss of accuracy in controlling actuators (servo motors) because usually, each sensor is responsible for activating one servo motor. In normal projects, one will need at least six EMG sensors to control six servo motors. The study will use only three EMG sensors to control/activate six servo motors depending on the binary trick idea suggested by this study, which is manipulating all three input signals from EMG sensors at once and then deciding which servo motor to activate by using a supervised machine learning technique such as K-nearest neighbors (kNN).
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基于二值欺骗的仿生肢体肌电传感器应用
人体肌肉可以通过使用肌电图(EMG)传感器来读取,这是由人类和动物身体肌肉产生的电信号。这意味着可以使用肌肉产生的电力来控制执行器/伺服电机来完成任何特定的任务。这可以支持广泛的应用,特别是对残疾人。其中一个应用是制造基于伺服电机的仿生肢体。根据K4D服务台进行的一项研究报告,估计世界人口中有15.3%患有中度或重度残疾,在受冲突影响的地区,这一比例可能会增加到18-20% (Thompson, 2017)。本研究的目标是通过最小化成本,同时保持可接受的精度,使仿生肢体负担得起。为了实现这一目标,本研究提出了在仿生肢体中使用肌电传感器的新思路,即减少肌电传感器的数量,以降低成本和功耗。减少肌电传感器的数量将导致控制执行器(伺服电机)的精度下降,因为通常情况下,每个传感器负责激活一个伺服电机。在正常项目中,至少需要6个肌电传感器来控制6个伺服电机。该研究将仅使用三个肌电传感器来控制/激活六个伺服电机,这取决于本研究提出的二值技巧思想,即同时操作来自肌电传感器的所有三个输入信号,然后通过使用监督机器学习技术(如k -近邻(kNN))来决定激活哪个伺服电机。
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发文量
35
审稿时长
6 weeks
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