Zhang Xiaodong, Li Hanzhe, Lu Zhufeng, Yin Gui
School of Mechanical Engineering, Xi'an Jiaotong University, Xi'an, China.
Shaanxi Key Laboratory of Intelligent Robots, Xi'an Jiaotong University, Xi'an, China.
Front Neurorobot. 2021 Jun 18;15:642607. doi: 10.3389/fnbot.2021.642607. eCollection 2021.
In the field of lower limb exoskeletons, besides its electromechanical system design and control, attention has been paid to realizing the linkage of exoskeleton robots to humans via electroencephalography (EEG) and electromyography (EMG). However, even the state of the art performance of lower limb voluntary movement intention decoding still faces many obstacles. In the following work, focusing on the perspective of the inner mechanism, a homology characteristic of EEG and EMG for lower limb voluntary movement intention was conducted. A mathematical model of EEG and EMG was built based on its mechanism, which consists of a neural mass model (NMM), neuromuscular junction model, EMG generation model, decoding model, and musculoskeletal biomechanical model. The mechanism analysis and simulation results demonstrated that EEG and EMG signals were both excited by the same movement intention with a response time difference. To assess the efficiency of the proposed model, a synchronous acquisition system for EEG and EMG was constructed to analyze the homology and response time difference from EEG and EMG signals in the limb movement intention. An effective method of wavelet coherence was used to analyze the internal correlation between EEG and EMG signals in the same limb movement intention. To further prove the effectiveness of the hypothesis in this paper, six subjects were involved in the experiments. The experimental results demonstrated that there was a strong EEG-EMG coherence at 1 Hz around movement onset, and the phase of EEG was leading the EMG. Both the simulation and experimental results revealed that EEG and EMG are homologous, and the response time of the EEG signals are earlier than EMG signals during the limb movement intention. This work can provide a theoretical basis for the feasibility of EEG-based pre-perception and fusion perception of EEG and EMG in human movement detection.
在下肢外骨骼领域,除了其机电系统设计与控制外,人们还关注通过脑电图(EEG)和肌电图(EMG)实现外骨骼机器人与人体的联动。然而,即使是下肢自主运动意图解码的最先进性能仍面临许多障碍。在接下来的工作中,从内在机制的角度出发,对下肢自主运动意图的脑电和肌电的同源特性进行了研究。基于其机制建立了脑电和肌电的数学模型,该模型由神经团模型(NMM)、神经肌肉接头模型、肌电生成模型、解码模型和肌肉骨骼生物力学模型组成。机制分析和仿真结果表明,脑电和肌电信号均由相同的运动意图激发,但存在响应时间差。为了评估所提出模型的有效性,构建了一个脑电和肌电同步采集系统,以分析肢体运动意图中脑电和肌电信号的同源性和响应时间差。采用一种有效的小波相干方法来分析同一肢体运动意图中脑电和肌电信号之间的内在相关性。为了进一步证明本文假设的有效性,六名受试者参与了实验。实验结果表明,在运动开始时1Hz左右存在很强的脑电-肌电相干性,且脑电相位领先于肌电。仿真和实验结果均表明,脑电和肌电是同源的,在肢体运动意图过程中脑电信号的响应时间早于肌电信号。这项工作可为基于脑电的人体运动检测中脑电和肌电的预感知和融合感知的可行性提供理论依据。