Medrano Roberto Leo, Thomas Gray Cortright, Keais Connor G, Rouse Elliott J, Gregg Robert D
Department of Mechanical Engineering.
Department of Robotics, University of Michigan, Ann Arbor, MI 48109.
IEEE Trans Robot. 2023 Jun;39(3):2170-2182. doi: 10.1109/tro.2023.3235584. Epub 2023 Jan 23.
Positive biomechanical outcomes have been reported with lower-limb exoskeletons in laboratory settings, but these devices have difficulty delivering appropriate assistance in synchrony with human gait as the task or rate of phase progression change in real-world environments. This paper presents a controller for an ankle exoskeleton that uses a data-driven kinematic model to continuously estimate the phase, phase rate, stride length, and ground incline states during locomotion, which enables the real-time adaptation of torque assistance to match human torques observed in a multi-activity database of 10 able-bodied subjects. We demonstrate in live experiments with a new cohort of 10 able-bodied participants that the controller yields phase estimates comparable to the state of the art, while also estimating task variables with similar accuracy to recent machine learning approaches. The implemented controller successfully adapts its assistance in response to changing phase and task variables, both during controlled treadmill trials (N=10, phase RMSE: 4.8 ± 2.4%) and a real-world stress test with extremely uneven terrain (N=1, phase RMSE: 4.8 ± 2.7%).
在实验室环境中,已有关于下肢外骨骼实现积极生物力学结果的报道,但随着现实环境中任务或相位进展速率的变化,这些设备难以与人类步态同步提供适当的助力。本文提出了一种用于脚踝外骨骼的控制器,该控制器使用数据驱动的运动学模型在运动过程中连续估计相位、相位速率、步幅长度和地面倾斜状态,从而能够实时调整扭矩助力,以匹配在10名健全受试者的多活动数据库中观察到的人类扭矩。我们在由10名健全参与者组成的新队列的现场实验中证明,该控制器产生的相位估计与现有技术相当,同时在估计任务变量方面的准确性与最近的机器学习方法相似。在受控跑步机试验(N = 10,相位均方根误差:4.8 ± 2.4%)和极其不平坦地形的现实压力测试(N = 1,相位均方根误差:4.8 ± 2.7%)期间,所实施的控制器成功地根据不断变化的相位和任务变量调整其助力。