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A Review on Robotic Hand Exoskeleton Devices: State-of-the-Art Method

机译:机器人手外骨骼器件的综述:最先进的方法

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An exoskeleton is a device that helps the process of medical rehabilitation for people who have disorders in using their limbs. A low cost, effective sensor, control system, and an actuator are still the central issue in developing exoskeleton devices. This study aims to review an exoskeleton device, development, and recent technologies. The contribution of this study is that the paper can be used as a guideline to design an exoskeleton device. Specifically, the focus of this review discusses hand exoskeleton design. This review discusses three things, namely control signal, control mechanism, and exoskeleton actuator. In terms of the control signal, it addresses several techniques to control the exoskeleton by utilizing EMG, EEG, voice, and FSR (forced sensor) signals. In terms of control mechanism, several studies utilize pattern recognition based on machine learning and virtual reality to assist in using the exoskeleton. In terms of the actuator, the exoskeleton that was designed still has some shortcomings, namely weight and ergonomic design. The review results show that EMG signals are more often used in controlling exoskeleton devices. In the method section, pattern recognition using machine learning is still a significant part of the development of exoskeleton. In the actuator section, DC motors and linear actuators are more widely used than other types of motors. So, overall, the exoskeleton can still be improved from various aspects to make the subject more comfortable in use.
机译:外骨骼是一种设备,有助于对使用肢体患者有障碍的人的医学康复过程。低成本,有效的传感器,控制系统和执行器仍然是开发外骨骼器件的核心问题。本研究旨在审查外骨骼设备,开发和最近的技术。本研究的贡献是本文可用作设计外骨骼设备的指导。具体而言,本评论的重点讨论了手外屏幕设计。本次审查讨论了三件事,即控制信号,控制机构和外骨骼执行器。就控制信号而言,它通过利用EMG,EEG,语音和FSR(强制传感器)信号来解决若干技术来控制外骨骼。在控制机制方面,几项研究利用了基于机器学习的模式识别和虚拟现实来帮助使用外骨骼。就执行器而言,设计的外骨骼仍然具有一些缺点,即重量和符合人体工程学的设计。审查结果表明,EMG信号更常用于控制外骨骼器件。在方法部分中,使用机器学习的模式识别仍然是外骨骼开发的重要组成部分。在致动器部分中,DC电动机和线性致动器比其他类型的电动机更广泛地使用。因此,总体而言,外骨骼可以从各个方面改进,以使受试者在使用中更舒适。

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