首页> 外文期刊>Biological Cybernetics: Communication and Control in Organisms and Automata: = Nachrichtenubertragung, Nachrichtenverarbeitung, Steuerung und Regelung in Organismen und in Automaten >ESTIMATION OF DYNAMIC JOINT TORQUES AND TRAJECTORY FORMATION FROM SURFACE ELECTROMYOGRAPHY SIGNALS USING A NEURAL NETWORK MODEL
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ESTIMATION OF DYNAMIC JOINT TORQUES AND TRAJECTORY FORMATION FROM SURFACE ELECTROMYOGRAPHY SIGNALS USING A NEURAL NETWORK MODEL

机译:基于神经网络模型的表面电图信号估计动态关节扭矩和弹道形成

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摘要

In this study, human arm movement was reconstructed from electromyography (EMG) signals using a forward dynamics model acquired by an artificial neural network within a modular architecture. Dynamic joint torques at the elbow and shoulder were estimated for movements in the horizontal plane from the surface EMG signals of 10 flexor and extensor muscles. Using only the initial conditions of the arm and the EMG time course as input, the network reliably reconstructed a variety of movement trajectories. The results demonstrate that posture maintenance and multijoint movements, entailing complex via-point specification and co-contraction of muscles, can be accurately computed from multiple surface EMG signals. In addition to the model's empirical uses, such as calculation of arm stiffness during motion, it allows evaluation of hypothesized computational mechanisms of the central nervous system such as virtual trajectory control and optimal trajectory planning. [References: 30]
机译:在这项研究中,使用前向动力学模型从肌电图(EMG)信号重构了人的手臂运动,该模型由模块化体系结构中的人工神经网络获取。根据10个屈肌和伸肌的表面EMG信号,估算水平面中肘部和肩部的动态关节扭矩。仅使用手臂的初始条件和EMG时程作为输入,该网络可靠地重建了各种运动轨迹。结果表明,可以从多个表面EMG信号中准确地计算姿势维持和多关节运动,从而需要复杂的通孔指定和肌肉共收缩。除了模型的经验用途(例如运动期间手臂僵硬的计算)外,它还可以评估虚拟神经轨迹控制和最佳轨迹规划等假设的中枢神经系统计算机制。 [参考:30]

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