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Functional electrical stimulation controlled by artificial neural networks: pilot experiments with simple movements are promising for rehabilitation applications.

机译:由人工神经网络控制的功能性电刺激:具有简单动作的先导实验有望用于康复应用。

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This study falls within the ambit of research on functional electrical stimulation for the design of rehabilitation training for spinal cord injured patients. In this context, a crucial issue is the control of the stimulation parameters in order to optimize the patterns of muscle activation and to increase the duration of the exercises. An adaptive control system (NEURADAPT) based on artificial neural networks (ANNs) was developed to control the knee joint in accordance with desired trajectories by stimulating quadriceps muscles. This strategy includes an inverse neural model of the stimulated limb in the feedforward line and a neural network trained on-line in the feedback loop. NEURADAPT was compared with a linear closed-loop proportional integrative derivative (PID) controller and with a model-based neural controller (NEUROPID). Experiments on two subjects (one healthy and one paraplegic) show the good performance of NEURADAPT, which is able to reduce the time lag introduced by the PID controller. In addition, control systems based on ANN techniques do not require complicated calibration procedures at the beginning of each experimental session. After the initial learning phase, the ANN, thanks to its generalization capacity, is able to cope with a certain range of variability of skeletal muscle properties.
机译:该研究属于功能性电刺激的研究范围,以设计脊髓损伤患者的康复训练。在这种情况下,关键问题是刺激参数的控制,以优化肌肉激活的方式并增加锻炼的持续时间。开发了一种基于人工神经网络(ANN)的自适应控制系统(NEURADAPT),通过刺激股四头肌来根据所需轨迹控制膝关节。该策略包括前馈线中受刺激肢体的逆神经模型和反馈回路中在线训练的神经网络。将NEURADAPT与线性闭环比例积分微分(PID)控制器和基于模型的神经控制器(NEUROPID)进行了比较。在两个主题(一个健康,一个截瘫)上进行的实验表明,NEURADAPT具有良好的性能,可以减少PID控制器引入的时间延迟。此外,基于ANN技术的控制系统在每个实验阶段的开始都不需要复杂的校准程序。在最初的学习阶段之后,由于其泛化能力,人工神经网络能够应对一定范围的骨骼肌特性变化。

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