智能步行训练机器人防跌倒模糊控制方法

Bo Shen, Junfeng Wang, Shuoyu Wang, H. Enoki, K. Ishida
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引用次数: 1

摘要

针对智能步行训练机器人(IWTR)在步行训练过程中防止使用者跌倒的问题,提出了一种模糊控制方法。在临床康复场所,经验丰富的人类护理人员总是可以通过提供观察和力量交互信息来帮助患者进行行走训练,并防止他们跌倒的风险。然而,对于机器人来说,检测用户的跌倒风险并做出适当的运动来帮助用户获得平衡是具有挑战性的。在这项研究中,我们研究了一种模糊控制方法,用于IWTR的运动控制,以实现与人类专家在步行康复过程中提供的相同的跌倒预防策略。通过将人类专家的预防跌倒知识提取为模糊规则,IWTR可以根据单目摄像机和四个力传感器的信息确定合适的预防跌倒运动。单目摄像机用于感知用户与IWTR的相对位置。力传感器放置在IWTR的扶手下,用于检测用户与IWTR之间的相互作用力。以距离和相互作用力信息作为模糊控制器的输入,确定运动速度来控制IWTR,防止用户像人类康复专家一样摔倒。最后进行了实验验证。结果表明,该方法对预防跌倒是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy Control Method for an Intelligent Walking Training Robot for User Fall Prevention
In this paper, a fuzzy control method is proposed for user fall prevention during walking training of the intelligent walking training robot (IWTR). In clinical rehabilitation sites, an experienced human caregiver can always assist patients with walk training and prevent them from falling risks by providing observational and force interaction information. However, for a robot to detect the user's falling risk and make the appropriate movement to help the user to obtain balance is challenging. In this study, we investigated a fuzzy control method for motion control of an IWTR to implement a falling prevention strategy that would be the same as provided by human experts during walking rehabilitation. By extracting the knowledge of human experts on fall prevention as fuzzy rules, the IWTR can determine the appropriate falling prevention motion according the information from a monocular camera and four force sensors. The monocular camera is applied to sense the relative position of the user to the IWTR. The force sensors are placed under the armrest of the IWTR to detect the interaction force between the user and IWTR. The distance and interaction force information are taken as the input for the fuzzy controller, and the motion velocity can be determine to control the IWTR to prevent users from falling down similar to human rehabilitation experts. Finally, experiments were implemented for verification. The result showed the effectiveness of the proposed method for fall prevention.
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