Predictive Control of Peak Achilles Tendon Force in a Simulated System of the Human Ankle Joint with a Parallel Artificial Actuator During Hopping.

Mahdi Nabipour, Gregory S Sawicki, Massimo Sartori
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Abstract

Latest advances in wearable exoskeletons for the human lower extremity predominantly focus on minimising metabolic cost of walking. However, there currently is no robotic exoskeleton that gains control on the mechanics of biological tissues such as biological muscles or series-elastic tendons. Achieving robotic control of biological tissue mechanics would enable prevention of musculoskeletal injuries or the personalization of rehabilitation treatments following injury with levels of precisions not attained before. In this paper, we introduce a new framework that uses nonlinear model predictive control (NMPC) for the closed-loop control of peak tendon force in a simulated system of the human ankle joint with parallel exoskeletal actuation. We propose a computationally efficient NMPC's inner model consisting of explicit, closed-form equations of muscle-tendon dynamics along with those of the ankle joint with parallel actuation. The proposed formulation is tested and verified on movement data collected during dynamic ankle dorsiflexion/plantarflexion rotations executed on a dynamometer as well as during walking and running on a treadmill. The framework designed using the NMPC controller showed a promising performance in keeping the Achilles tendon force under a predefined threshold. Results indicated that our proposed model was generalizable to different muscles and gaits and suitable for real-time applications due to its low computational time.

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带并联人工执行器的人踝关节跳跃模拟系统中跟腱峰值力的预测控制。
用于人类下肢的可穿戴外骨骼的最新进展主要集中在最大限度地降低步行的代谢成本。然而,目前还没有机器人外骨骼能够控制生物组织的力学,如生物肌肉或系列弹性肌腱。实现生物组织力学的机器人控制将有助于预防肌肉骨骼损伤或损伤后康复治疗的个性化,其精度是以前无法达到的。在本文中,我们介绍了一种新的框架,该框架使用非线性模型预测控制(NMPC)在具有平行外骨骼驱动的人类踝关节模拟系统中对峰值肌腱力进行闭环控制。我们提出了一个计算高效的NMPC内部模型,该模型由肌腱动力学的显式闭合方程以及具有平行驱动的踝关节动力学方程组成。在测功机上执行的动态踝关节背屈/跖屈旋转以及在跑步机上行走和跑步期间收集的运动数据上对所提出的配方进行了测试和验证。使用NMPC控制器设计的框架在将跟腱力保持在预定阈值以下方面表现出了良好的性能。结果表明,我们提出的模型可推广到不同的肌肉和步态,由于其计算时间短,适合实时应用。
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