Model-Based Upper-Limb Gravity Compensation Strategies for Active Dynamic Arm Supports.

Maxime Manzano, Sylvain Guegan, Ronan Le Breton, Louise Devigne, Marie Babel
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Abstract

NeuroMuscular Disorders (NMDs) may induce difficulties to perform daily life activities in autonomy. For people with NMDs affecting the upper-limb mobility, Dynamic Arm Supports (DASs) turn out to be relevant assistive devices. In particular, active DASs benefit from an external power source to support severely impaired people. However, commercially available active devices are controlled with push buttons, which add cognitive load and discomfort. To alleviate this issue, we propose a new force-based assistive control framework. In this preliminary work, we focus on the computation of a feedforward force to compensate upper-limb gravity. Four strategies based on a biomechanical model of the upper limb, tuned using anthropometric measurements, are proposed and evaluated. The first one is based on the potential energy of the upper-limb, the second one makes a compromise between the shoulder and elbow torques, the third one minimizes the sum of the squared user joint torques and the last one uses a probabilistic approach to minimize the expected torque norm in the presence of model uncertainties. These strategies have been evaluated quantitatively through an experiment including nine participants with an active DAS prototype. The activity of six muscles was measured and used to compute the Mean Effort Index (MEI) which represents the global effort required to maintain the pose. A statistical analysis shows that the four strategies significantly lower the MEI (p-value < 0.001).

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基于模型的上肢重力主动补偿策略。
神经肌肉疾病(NMD)可能会导致自主进行日常生活活动的困难。对于NMD影响上肢活动的人来说,动态臂支架(DAS)是相关的辅助设备。特别是,有源DAS受益于外部电源,以支持严重受损的人。然而,商用有源设备是用按钮控制的,这会增加认知负荷和不适感。为了缓解这个问题,我们提出了一个新的基于力的辅助控制框架。在这项初步工作中,我们专注于补偿上肢重力的前馈力的计算。提出并评估了四种基于上肢生物力学模型的策略,通过人体测量进行调整。第一个是基于上肢的势能,第二个是在肩部和肘部扭矩之间做出妥协,第三个是最小化用户关节扭矩的平方和,最后一个是使用概率方法在存在模型不确定性的情况下最小化预期扭矩规范。这些策略已经通过一项实验进行了定量评估,该实验包括九名具有主动DAS原型的参与者。测量了六块肌肉的活动,并用于计算平均努力指数(MEI),该指数表示维持姿势所需的整体努力。统计分析表明,这四种策略显著降低了MEI(p值<0.001)。
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