Feedback error learning neural network for trans-femoral prosthesis.

V D Kalanovic, D Popovic, N T Skaug
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引用次数: 53

Abstract

Feedback-error learning (FEL) neural network was developed for control of a powered trans-femoral prosthesis. Nonlinearities and time-variations of the dynamics of the plant, in addition to redundancy and dynamic uncertainty during the double support phase of walking, makes conventional control methods very difficult to use. Rule-based control, which uses a knowledge base determined by machine learning and finite automata method is limited since it does not respond well to perturbations and environmental changes. FEL can be regarded as a hybrid control, because it combines nonparametric identification with parametric modeling and control. This paper presents simulation of a powered trans-femoral prosthesis controlled by a FEL neural network. Results suggest that FEL can be used to identify inverse dynamics of an arbitrary trans-femoral prosthesis during simple single joint movements (e.g., sinusoidal oscillations). The identified inverse dynamics then allows the tracking of an arbitrary trajectory such as a desired walking pattern within a multijoint structure. Simulation shows that the identified controller responds correctly when the leg motion is exposed to a perturbation such as a frequent change of the ground reaction force or the hip joint torque generated by the user. FEL eliminates the need for precise, tedious, and complex identification of model parameters.

经股假体的反馈误差学习神经网络。
应用反馈误差学习(FEL)神经网络控制动力股骨假体。系统动力学的非线性和时变,加上行走双支撑阶段的冗余和动态不确定性,使得传统的控制方法难以应用。基于规则的控制,它使用由机器学习和有限自动机方法确定的知识库,由于它不能很好地响应扰动和环境变化而受到限制。FEL可以看作是一种混合控制,因为它将非参数辨识与参数建模和控制相结合。本文介绍了一种由FEL神经网络控制的动力股骨假体的仿真。结果表明,在简单的单关节运动(如正弦振荡)期间,FEL可以用于识别任意经股假体的逆动力学。识别的逆动力学然后允许跟踪任意轨迹,例如在多关节结构中期望的行走模式。仿真结果表明,当腿部运动受到扰动(如地面反作用力的频繁变化或用户产生的髋关节扭矩)时,所识别的控制器能够正确响应。FEL消除了精确、繁琐和复杂的模型参数识别的需要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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