Development of an Assist-As-Need Controller for an Upper-Limb Exoskeleton With Voluntary Torque Estimate

Logan T. Chatfield, Benjamin C. Fortune, Lachlan R. McKenzie, C. Pretty
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引用次数: 5

Abstract

This study considers the development of an assist-as-need torque controller for an exoskeleton for stroke rehabilitation. Studies have shown that active patient participation improves the patient’s recovery from stroke. Assist-as-need control, providing the patient with the assistance they need to complete a task, is desirable, as the assistance can be varied to maximise patient participation. However, research is limited, and current methods cannot guarantee optimal assistance as non-zero assistive forces are still provided to subjects that are capable of completing the task unassisted. This study proposes a control system to vary and optimise the assistance for a subject based on their capabilities. A particle filter developed from previous research is used to estimate the subject’s voluntary effort. The assistive torque is determined from a target torque and the voluntary effort. The controller is shown to be effective, as zero assistance is provided to a subject capable of completing the task unassisted. Additionally, the assistance will increase if the subject fatigues. Using the estimate of the subject’s strength, the assistive torque can be accurately set to maximise a patient’s participation, and therefore, the assist-as-need controller can lead to improved therapeutic results.
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具有自动扭矩估计的上肢外骨骼随需辅助控制器的研制
本研究考虑开发一种用于中风康复外骨骼的按需辅助扭矩控制器。研究表明,患者积极参与有助于中风患者的康复。按需协助控制,为患者提供他们完成任务所需的帮助,是可取的,因为帮助可以多种多样,以最大限度地提高患者的参与。然而,研究是有限的,目前的方法不能保证最优的辅助,因为非零辅助力仍然提供给能够独立完成任务的受试者。本研究提出了一个控制系统,根据受试者的能力来改变和优化他们的帮助。在前人的研究基础上,提出了一种粒子滤波方法来估计受试者的自愿努力。辅助扭矩由目标扭矩和自主力确定。控制器被证明是有效的,因为对于能够独立完成任务的受试者,控制器不会提供任何帮助。此外,如果受试者疲劳,援助会增加。通过对受试者力量的估计,可以准确地设置辅助扭矩,以最大限度地提高患者的参与程度,因此,按需辅助控制器可以改善治疗效果。
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