Modified Neural Network-based Electrical Stimulation for Human Limb Tracking

N. Sharma, C. Gregory, Marcus Johnson, W. Dixon
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引用次数: 8

Abstract

Closed-loop control of skeletal muscle is complicated by the nonlinear muscle force to length relationship and the inherent unstructured and time-varying uncertainties in available models. Some pure feedback methods have been developed with some success, but the most promising and popular control methods for neuromuscular electrical stimulation (NMES) are neural network-based methods. Neural networks provide a function approximation of the muscle model, however a function reconstruction error limits the steady-state response of typical controllers (i.e., previous controllers are only uniformly ultimately bounded). Motivated by the desire to obtain improved steady-state performance, efforts in this paper focus on the use of a neural network feedforward controller that is augmented with a continuous robust feedback term to yield an asymptotic result. Specifically, a Lyapunov-based controller and stability analysis are provided to demonstrate semi-global asymptotic tracking (i.e., non-isometric contractions) of a desired time-varying trajectory. Experimental results are provided to demonstrate the performance of the developed controller where NMES is applied through external electrodes attached to the distal-medial and proximal-lateral portion of human quadriceps femoris muscle group.
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基于改进神经网络的电刺激人体肢体跟踪
由于肌肉力与长度的非线性关系以及现有模型中固有的非结构化时变不确定性,使骨骼肌的闭环控制变得复杂。一些纯反馈方法已经取得了一些成功,但最有前途和最流行的神经肌肉电刺激控制方法是基于神经网络的方法。神经网络提供肌肉模型的函数近似值,但是函数重建误差限制了典型控制器的稳态响应(即,以前的控制器只是一致最终有界的)。由于希望获得改进的稳态性能,本文的工作重点是使用神经网络前馈控制器,该控制器增加了连续鲁棒反馈项以产生渐近结果。具体来说,给出了基于lyapunov的控制器和稳定性分析来证明期望时变轨迹的半全局渐近跟踪(即非等距收缩)。实验结果证明了所开发控制器的性能,其中NMES通过连接到人体股四头肌群的远内侧和近外侧部分的外部电极施加。
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