4.6 Article

Real-Time Identification of Knee Joint Walking Gait as Preliminary Signal for Developing Lower Limb Exoskeleton

Journal

ELECTRONICS
Volume 10, Issue 17, Pages -

Publisher

MDPI
DOI: 10.3390/electronics10172117

Keywords

wearable sensor; walking gait cycle; neural network; real-time application

Funding

  1. Ministry of Research, Technology and Higher Education of Republic of Indonesia

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The study focused on developing a proper rehabilitation exoskeleton by capturing a user's walking intention and unique walking gait style. A wearable sensor using IMU technology was introduced to recognize walking gait phase and cycle, with Neural Network proposed as a method for gait cycle identification. Real-time experiments verified the ability of the proposed method to recognize each gait cycle on the knee joints of users, showing potential for application in exoskeleton rehabilitation robots.
An exoskeleton is a device used for walking rehabilitation. In order to develop a proper rehabilitation exoskeleton, a user's walking intention needs to be captured as the initial step of work. Moreover, every human has a unique walking gait style. This work introduced a wearable sensor, which aimed to recognize the walking gait phase, as the fundamental step before applying it into the rehabilitation exoskeleton. The sensor used in this work was the IMU sensor, used to recognize the pitch angle generated from the knee joint while the user walks, as information about the walking gait cycle, before doing the investigation on how to identify the walking gait cycle. In order to identify the walking gait cycle, Neural Network has been proposed as a method. The gait cycle identification was generated to recognize the gait cycle on the knee joint. To verify the performance of the proposed method, experiments have been done in real-time application. The experiments were carried out with different processes such as walking on a flat floor, climbing up, and walking down stairs. Five subjects were trained and tested using the system. The experiments showed that the proposed method was able to recognize each gait cycle for all users as they wore the sensor on their knee joints. This study has the potential to be applied on an exoskeleton rehabilitation robot as a further research experiment.

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