首页> 外文期刊>Journal of Neuroscience Methods >A dynamic recurrent neural network for multiple muscles electromyographic mapping to elevation angles of the lower limb in human locomotion.
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A dynamic recurrent neural network for multiple muscles electromyographic mapping to elevation angles of the lower limb in human locomotion.

机译:一个动态递归神经网络,用于在人体运动中对下肢的仰角进行多肌肌电图绘制。

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This paper describes the use of a dynamic recurrent neural network (DRNN) for simulating lower limb coordination in human locomotion. The method is based on mapping between the electromyographic signals (EMG) from six muscles and the elevation angles of the three main lower limb segments (thigh, shank and foot). The DRNN is a fully connected network of 35 hidden units taking into account the temporal relationships history between EMG and lower limb kinematics. Each EMG signal is sent to all 35 units, which converge to three outputs. Each output neurone provides the kinematics of one lower limb segment. The training is supervised, involving learning rule adaptations of synaptic weights and time constant of each unit. Kinematics of the locomotor movements were recorded and analysed using the opto-electronic ELITE system. Comparative analysis of the learning performance with different types of output (position, velocity and acceleration) showed that for common gait mapping velocity data should be used as output, as it is the best compromise between asymptotic error curve, rapid convergence and avoidance of bifurcation. Reproducibility of the identification process and biological plausibility were high, indicating that the DRNN may be used for understanding functional relationships between multiple EMG and locomotion. The DRNN might also be of benefit for prosthetic control.
机译:本文介绍了动态递归神经网络(DRNN)在人类运动中模拟下肢协调的用途。该方法基于六个肌肉的肌电信号(EMG)与三个主要下肢节段(大腿,小腿和脚)的仰角之间的映射。 DRNN是一个由35个隐藏单元组成的完全连接的网络,其中考虑了EMG和下肢运动学之间的时间关系历史。每个EMG信号都发送到所有35个单元,它们会聚为三个输出。每个输出神经元提供一个下肢节段的运动学。对训练进行监督,包括学习每个单元的突触权重和时间常数的学习规则调整。使用光电ELITE系统记录并分析了运动的运动学。对不同类型输出(位置,速度和加速度)的学习性能的比较分析表明,对于一般步态映射,应将速度数据用作输出,因为这是渐近误差曲线,快速收敛和避免分叉之间的最佳折衷。鉴定过程的可重复性和生物学上的合理性很高,表明DRNN可用于理解多个EMG与运动之间的功能关系。 DRNN也可能对修复控制有益。

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