上半身外骨骼的自动支撑控制-使用Stuttgart外骨骼夹克的方法和验证

IF 3.4 Q2 ENGINEERING, BIOMEDICAL
Wearable technologies Pub Date : 2020-09-04 eCollection Date: 2020-01-01 DOI:10.1017/wtc.2020.1
Raphael Singer, Christophe Maufroy, Urs Schneider
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引用次数: 0

摘要

虽然被动式职业外骨骼可以减轻工人在高要求姿势(例如,头顶工作)时的身体压力,但由于缺乏灵活性,它们不适合用于许多其他应用。主动外骨骼,能够动态调整交付的支持是必需的。然而,外骨骼提供的支撑的自动控制在许多应用中仍然是一个很大程度上未解决的挑战,特别是对于上肢职业外骨骼,没有实用可靠的方法存在。对于这种类型的外骨骼,本文提出了一种新的支撑控制方法,用于提升和携带活动。作为迈向成熟的自动支持控制(ASC)的第一步,本文着重于估计用户对支持需求的开始的功能。通过这种方式,应该使直观的行为成为可能。上肢运动和肌肉激活信号的结合有望在工业应用中实现高可靠性、成本效率和兼容性。该功能由两部分组成:预处理(动作解释)和支持检测本身。这两个部分都接受了不同对象的训练,这些对象必须移动物体。在(A)未知主体执行已知任务和(B)已知主体执行未知任务的情况下验证了该功能。该功能显示良好的结果,因为它在训练中达到了很高的准确性($$ 95\% $$)。此外,第一个验证结果表明,该功能对于集成在适当适应的ASC中是有用的,并且可以使工作舒适。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic support control of an upper body exoskeleton - Method and validation using the Stuttgart Exo-Jacket.

Although passive occupational exoskeletons alleviate worker physical stresses in demanding postures (e.g., overhead work), they are unsuitable in many other applications because of their lack of flexibility. Active exoskeletons that are able to dynamically adjust the delivered support are required. However, the automatic control of support provided by the exoskeleton is still a largely unsolved challenge in many applications, especially for upper limb occupational exoskeletons, where no practical and reliable approach exists. For this type of exoskeletons, a novel support control approach for lifting and carrying activities is presented here. As an initial step towards a full-fledged automatic support control (ASC), the present article focusses on the functionality of estimating the onset of user's demand for support. In this way, intuitive behavior should be made possible. The combination of movement and muscle activation signals of the upper limbs is expected to enable high reliability, cost efficiency, and compatibility for use in industrial applications. The functionality consists of two parts: a preprocessing-the motion interpretation-and the support detection itself. Both parts were trained with different subjects, who had to move objects. The functionality was validated both in the cases of (A) an unknown subject performing known tasks and (B) a known subject performing unknown tasks. The functionality showed sound results as it achieved a high accuracy () in training. In addition, the first validation results showed that this functionality is useful for integration in an appropriately adapted ASC and can then enable comfortable working.

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来源期刊
CiteScore
5.80
自引率
0.00%
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审稿时长
11 weeks
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