Evolving Fuzzy and Neural Network Models of Finger Dynamics for Prosthetic Hand Myoelectric-based Control

R. Precup, Teodor-Adrian Teban, A. Albu
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引用次数: 5

Abstract

This paper first presents a structure for prosthetic hand myoelectric-based control systems (MBCSs). A set of evolving Takagi-Sugeno fuzzy and neural network models of the human hand dynamics, i.e., the finger dynamics, is next offered. These models will be used as reference models in structures of MBCSs. The inputs of the models are the myoelectric signals obtained from eight sensors placed on human subject's arm, and the outputs of these models are the flexion percentages of midcarpal joint angles. Elements of model-based fuzzy control are included. This plenary keynote paper is supported by authors' recent papers on modeling in the framework of prosthetic hand myoelectric-based control.
假手肌电控制手指动力学的进化模糊和神经网络模型
本文首先介绍了假手肌电控制系统(MBCSs)的结构。一套进化的Takagi-Sugeno模糊和神经网络模型的人手动力学,即手指动力学,是下一步提供。这些模型将作为mbcs结构的参考模型。模型的输入是放置在人体手臂上的8个传感器获得的肌电信号,输出是腕中关节角度的屈曲百分比。包括基于模型的模糊控制的组成部分。这篇全体会议主题论文得到了作者最近关于假手肌电控制框架下建模的论文的支持。
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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