Development of Artificial Neural Network Based Active Ankle Prosthesis Algorithm Using Gait Analysis Data

A. Keleş, Can A. Yücesoy
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引用次数: 2

Abstract

Amputation is the removal of a part or all of a limb due to a disease, accident or trauma. In the United States, an average of 500 people loses at least one limb every day, of which about 65% is due to lower limb amputations. Since energetically active prostheses are costly, amputees usually continue to their daily lives using a wheelchair or a passive prosthesis. The aim of this study is to determine the optimum sensor needs of active ankle prostheses and to develop algorithm suitable for this sensor infrastructure, thus a device that is both easy to use and financially accessible to anyone can be built up. In this context, three neural networks structures with different inputs were developed and their performances were evaluated. As a result, it is determined that if a device in which only EMG signals are used as network inputs, a total of 5 signals should be collected from muscles that are responsible for hip, knee and wrist movements. It has been found that, when it is wanted to work with less EMG sensors, it is necessary to perform a force or torque feedback into the system. Three EMG signals collected from the dorsi and plantar flexor muscles of the ankle were found to be sufficient for such a system. These findings are important in order to determine the amount of the sensor needed by an active ankle prosthesis whose requirements can be variable according to the amputation level of the patient and the mechanical design flexibility.
基于步态分析数据的人工神经网络主动踝关节假体算法研究
截肢是由于疾病、事故或创伤而切除部分或全部肢体。在美国,平均每天有500人失去至少一条肢体,其中约65%是由于下肢截肢。由于能量主动义肢价格昂贵,截肢者通常使用轮椅或被动义肢继续日常生活。本研究的目的是确定主动踝关节假体的最佳传感器需求,并开发适合该传感器基础设施的算法,从而构建一个易于使用且经济实惠的设备。在此背景下,开发了三种不同输入的神经网络结构,并对其性能进行了评估。因此,我们确定,如果只使用肌电图信号作为网络输入的设备,则需要从负责髋关节、膝关节和手腕运动的肌肉中收集总共5个信号。研究发现,当想要使用较少的肌电图传感器时,有必要向系统中执行力或扭矩反馈。从踝关节背肌和足底屈肌收集的三个肌电图信号被发现足以用于这样一个系统。这些发现对于确定主动踝关节假体所需传感器的数量是很重要的,它的要求可以根据患者的截肢水平和机械设计的灵活性而变化。
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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