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首页> 外文期刊>IEEE Transactions on Medical Robotics and Bionics >Hybrid Brain/Muscle Signals Powered Wearable Walking Exoskeleton Enhancing Motor Ability in Climbing Stairs Activity
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Hybrid Brain/Muscle Signals Powered Wearable Walking Exoskeleton Enhancing Motor Ability in Climbing Stairs Activity

机译:杂交脑/肌肉信号动力可穿戴行走外骨骼,提高攀爬楼梯活动的电机能力

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摘要

The powered exoskeleton promises substantial improvements on daily activities of the people who need robots provide assistance. In order to achieve flexible and stable control of a powered lower limb exoskeleton, in this paper, a hybrid control that combines a brain-computer interface (BCI) based on motor imagery (MI) with surface electromyogram (EMG) signals has been developed. We utilized the common spatial pattern (CSP) method to extract the variance of electroencephalogram (EEG) signals and back propagation (BP) neural network to recognize the imagery tasks. Moreover, we have used the strength of EMG signals obtained from upper forearms of subjects to adjust the gait of exoskeleton robots according to real stairs so that subjects can climb stairs easily and stably. The recognized results of EEG and the strength of EMG are used to drive the powered exoskeleton to help subjects climb the stairs by the designed gait synthesis which satisfies the environmental constraint and kinematic constraint. The developed hybrid control strategy has been verified by three healthy subjects, and all subjects can successfully fulfill steadily climbing the stairs, assisted by the powered exoskeleton. The results of the experiment have demonstrated the developed hybrid brain/muscle signals powered robot can effectively enhance human mobility.
机译:动力的外屏幕承诺对需要机器人提供帮助的人们的日常活动进行大量改进。为了实现对动力下肢外屏幕的灵活且稳定的控制,在本文中,已经开发了一种基于电动机图像(MI)的脑电脑界面(BCI)的混合控制已经开发出具有表面电谱(EMG)信号。我们利用常见的空间模式(CSP)方法来提取脑电图(EEG)信号和后传播(BP)神经网络的方差以识别图像的任务。此外,我们使用了从受试者的上前臂获得的EMG信号的强度根据真正的楼梯调节外骨骼机器人的步态,以便对象可以容易且稳定地爬楼梯。 EEG的公认结果和EMG的强度用于驱动动力的外骨骼,以帮助受试者通过设计的步态合成来爬上楼梯,这满足环境限制和运动学约束。开发的混合控制策略已经通过三个健康的科目验证,所有受试者都可以成功地满足稳定地爬楼梯,由动力外骨骼协助。实验结果表明,发育的混合脑/肌肉信号动力机器人可以有效地增强人类流动性。

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