首页> 美国卫生研究院文献>Frontiers in Neurorobotics >Assessment of Myoelectric Controller Performance and Kinematic Behavior of a Novel Soft Synergy-Inspired Robotic Hand for Prosthetic Applications
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Assessment of Myoelectric Controller Performance and Kinematic Behavior of a Novel Soft Synergy-Inspired Robotic Hand for Prosthetic Applications

机译:评估用于假肢的新型软协同机器人手的肌电控制器性能和运动行为

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摘要

Myoelectric artificial limbs can significantly advance the state of the art in prosthetics, since they can be used to control mechatronic devices through muscular activity in a way that mimics how the subjects used to activate their muscles before limb loss. However, surveys indicate that dissatisfaction with the functionality of terminal devices underlies the widespread abandonment of prostheses. We believe that one key factor to improve acceptability of prosthetic devices is to attain human likeness of prosthesis movements, a goal which is being pursued by research on social and human–robot interactions. Therefore, to reduce early abandonment of terminal devices, we propose that controllers should be designed so as to ensure effective task accomplishment in a natural fashion. In this work, we have analyzed and compared the performance of three types of myoelectric controller algorithms based on surface electromyography to control an underactuated and multi-degrees of freedom prosthetic hand, the SoftHand Pro. The goal of the present study was to identify the myoelectric algorithm that best mimics the native hand movements. As a preliminary step, we first quantified the repeatability of the SoftHand Pro finger movements and identified the electromyographic recording sites for able-bodied individuals with the highest signal-to-noise ratio from two pairs of muscles, i.e., flexor digitorum superficialis/extensor digitorum communis, and flexor carpi radialis/extensor carpi ulnaris. Able-bodied volunteers were then asked to execute reach-to-grasp movements, while electromyography signals were recorded from flexor digitorum superficialis/extensor digitorum communis as this was identified as the muscle pair characterized by high signal-to-noise ratio and intuitive control. Subsequently, we tested three myoelectric controllers that mapped electromyography signals to position of the SoftHand Pro. We found that a differential electromyography-to-position mapping ensured the highest coherence with hand movements. Our results represent a first step toward a more effective and intuitive control of myoelectric hand prostheses.
机译:肌电假肢可以极大地推动假肢的发展,因为它们可以用来通过肌肉活动来控制机电装置,其模仿对象在肢体丧失之前如何激活肌肉。但是,调查表明,对终端设备功能的不满意是普遍放弃假体的基础。我们认为,提高假肢设备的可接受性的一个关键因素是获得假肢运动的人像,这是社会和人机交互研究的追求。因此,为了减少终端设备的早期废弃,我们建议应该设计控制器,以确保自然有效地完成任务。在这项工作中,我们已经分析和比较了基于表面肌电图的三种类型的肌电控制器算法的性能,这些算法可控制欠驱动和多自由度的假手SoftHand Pro。本研究的目的是确定最能模仿手部自然运动的肌电算法。作为第一步,我们首先量化了SoftHand Pro手指运动的可重复性,并从两对肌肉(即指趾屈肌/浅指伸肌)确定了具有最高信噪比的强健个体的肌电图记录部位共用和radial腕腕腕/尺腕腕腕。然后,要求身体健全的志愿者进行伸手可抓的动作,同时从指浅屈肌/伸指指肌记录肌电信号,因为这被鉴定为具有高信噪比和直观控制特性的肌肉对。随后,我们测试了三个将肌电信号映射到SoftHand Pro位置的肌电控制器。我们发现,差分肌电图至位置图可确保手部动作具有最高的连贯性。我们的结果代表了朝着更有效和直观地控制肌电手部假体迈出的第一步。

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