A hybrid real-time EMG intelligent rehabilitation robot motions control based on Kalman Filter, support vector machines and particle swarm optimization

B. Elbagoury, L. Vlădăreanu
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引用次数: 5

Abstract

Intelligent Control of agent autonomous rehabilitation robot is a very complex problem, especially for stroke patients' treatments and dealing with real-time EMG sensors readings of muscles activity states and transfer between real-time Human motions to interface with rehabilitation robot agent or assisteddevice. The field of Artificial Intelligence and neural networks plays a critical role in modern intelligent control interfaces for robot devices. This paper presents a novel hybrid intelligent robot control that acts as human-robot interaction, where it depends on real-time EMG sensor patients data and extracted features along with estimated knee joint angles from Extended Kalman Filter method are used for training the intelligent controller using support vector machines trained with Adatron Learning algorithm for handling huge data values of sensors readings. Moreover, the proposed platform for rehabilitation robot agent is tested in the framework of the NAO Humanoid Robot agent along with Neurosolutions Toolkit and Matlab code. The average overall accuracy of the proposed intelligent motion SVM-EKF controller shows average high performance that approaches average 96% of knee motions classifications and also good performance for comparing Extended Kalman filter knee joint angles estimations and real EMG human knee joint angles in the framework of Human Walk Gait cycle. Also, the basic enhancement of proposing PSO optimization technique for robot knee motion is discussed for future improvements. The overall algorithm, methodology and experiments are presented in this paper along with future work.
基于卡尔曼滤波、支持向量机和粒子群优化的混合实时肌电智能康复机器人运动控制
agent自主康复机器人的智能控制是一个非常复杂的问题,特别是对于脑卒中患者的治疗和处理实时肌电传感器读数的肌肉活动状态和实时人体运动之间的转换,以与康复机器人代理或辅助设备接口。人工智能和神经网络领域在现代机器人设备智能控制接口中起着至关重要的作用。本文提出了一种新型的混合智能机器人控制,作为人机交互,它依赖于实时肌电传感器患者数据,并使用扩展卡尔曼滤波方法提取特征以及估计的膝关节角度来训练智能控制器,使用Adatron学习算法训练的支持向量机来处理传感器读数的巨大数据值。此外,在NAO人形机器人代理框架下,利用Neurosolutions工具包和Matlab代码对所提出的康复机器人代理平台进行了测试。所提出的智能运动SVM-EKF控制器的平均总体精度达到了平均96%的膝关节运动分类准确率,并且在比较扩展卡尔曼滤波的膝关节角度估计和真实肌电人体膝关节角度在人体步行步态周期框架下的良好性能。同时,对机器人膝关节运动的粒子群优化技术的基本改进进行了讨论,以供今后改进。本文给出了总体算法、方法和实验,并对今后的工作进行了展望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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