Validating Model-Based Prediction Of Biological Knee Moment During Walking With An Exoskeleton in Crouch Gait: Potential Application for Exoskeleton Control

Ji Chen, D. Damiano, Z. Lerner, T. Bulea
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引用次数: 7

Abstract

Advanced control strategies that can adjust assistance based volitional effort from the user may be beneficial for deploying exoskeletons for overground gait training in ambulatory populations, such as children with cerebral palsy (CP). In this study, we evaluate the ability to predict biological knee moment during stance phase of walking with an exoskeleton in two children subjects with crouch gait from CP. The predictive model characterized the knee as a rotational spring with the addition of correction factors at knee extensor moment extrema to predict the instantaneous knee moment profile from the knee angle. Our model prediction performance was comparable to previous studies for weight acceptance (WA) and mid-stance (MS) phases in both assisted (Assist) and non-assisted (Zero) modes based on normalized root mean square error (RMSE), demonstrating the feasibility of joint moment estimation during exoskeleton walking. RMSE was highest in late stance phase, likely due to the non-linear knee stiffness exhibited during this phase in one participant. Overall, our results support real-time implementation of the joint moment prediction model for control of exoskeleton knee extension assistance in children with CP
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基于模型的外骨骼在蹲伏步态下行走时生物膝关节力矩预测的验证:外骨骼控制的潜在应用
先进的控制策略可以根据用户的意志努力来调整辅助,这对于在流动人群(如脑瘫儿童)中部署外骨骼进行地面步态训练可能是有益的。在这项研究中,我们评估了两名患有CP蹲姿的儿童在站立阶段用外骨骼预测生物膝关节力矩的能力。该预测模型将膝关节描述为一个旋转弹簧,并在膝关节伸肌力矩极值处添加了校正因子,以从膝关节角度预测瞬时膝关节力矩。我们的模型在基于标准化均方根误差(RMSE)的辅助(Assist)和非辅助(Zero)模式下的体重接受(WA)和中位(MS)阶段的预测性能与之前的研究相当,证明了外骨骼行走过程中关节力矩估计的可行性。RMSE在站立后期最高,可能是由于一名参与者在该阶段表现出非线性的膝关节僵硬。总的来说,我们的研究结果支持实时实现关节力矩预测模型,用于控制外骨骼膝关节伸展辅助
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