Koller Jeffrey R, Jacobs Daniel A, Ferris Daniel P, Remy C David
Department of Mechanical Engineering, University of Michigan, 2350 Hayward, Ann Arbor, 48109, MI, USA.
School of Kinesiology, University of Michigan, 1402 Washington Heights, Ann Arbor, 48109, MI, USA.
J Neuroeng Rehabil. 2015 Nov 4;12:97. doi: 10.1186/s12984-015-0086-5.
Robotic ankle exoskeletons can provide assistance to users and reduce metabolic power during walking. Our research group has investigated the use of proportional myoelectric control for controlling robotic ankle exoskeletons. Previously, these controllers have relied on a constant gain to map user's muscle activity to actuation control signals. A constant gain may act as a constraint on the user, so we designed a controller that dynamically adapts the gain to the user's myoelectric amplitude. We hypothesized that an adaptive gain proportional myoelectric controller would reduce metabolic energy expenditure compared to walking with the ankle exoskeleton unpowered because users could choose their preferred control gain.
We tested eight healthy subjects walking with the adaptive gain proportional myoelectric controller with bilateral ankle exoskeletons. The adaptive gain was updated each stride such that on average the user's peak muscle activity was mapped to maximal power output of the exoskeleton. All subjects participated in three identical training sessions where they walked on a treadmill for 50 minutes (30 minutes of which the exoskeleton was powered) at 1.2 ms(-1). We calculated and analyzed metabolic energy consumption, muscle recruitment, inverse kinematics, inverse dynamics, and exoskeleton mechanics.
Using our controller, subjects achieved a metabolic reduction similar to that seen in previous work in about a third of the training time. The resulting controller gain was lower than that seen in previous work (β=1.50±0.14 versus a constant β=2). The adapted gain allowed users more total ankle joint power than that of unassisted walking, increasing ankle power in exchange for a decrease in hip power.
Our findings indicate that humans prefer to walk with greater ankle mechanical power output than their unassisted gait when provided with an ankle exoskeleton using an adaptive controller. This suggests that robotic assistance from an exoskeleton can allow humans to adopt gait patterns different from their normal choices for locomotion. In our specific experiment, subjects increased ankle power and decreased hip power to walk with a reduction in metabolic cost. Future exoskeleton devices that rely on proportional myolectric control are likely to demonstrate improved performance by including an adaptive gain.
机器人脚踝外骨骼可以为使用者提供助力,并在行走过程中降低代谢功率。我们的研究团队已对使用比例肌电控制来操控机器人脚踝外骨骼展开了研究。此前,这些控制器一直依靠固定增益将使用者的肌肉活动映射为驱动控制信号。固定增益可能会对使用者形成一种限制,因此我们设计了一种能根据使用者的肌电幅度动态调整增益的控制器。我们推测,与在无动力的脚踝外骨骼辅助下行走相比,自适应增益比例肌电控制器会降低代谢能量消耗,因为使用者能够选择他们偏好的控制增益。
我们测试了八名健康受试者在佩戴双侧脚踝外骨骼并使用自适应增益比例肌电控制器的情况下行走。每一步自适应增益都会更新,以便平均而言,将使用者的肌肉活动峰值映射到外骨骼的最大功率输出。所有受试者都参加了三次相同的训练课程,他们在跑步机上以1.2米/秒的速度行走50分钟(其中30分钟外骨骼处于助力状态)。我们计算并分析了代谢能量消耗、肌肉募集、逆运动学、逆动力学以及外骨骼力学。
使用我们的控制器,受试者在大约三分之一的训练时间内实现了与之前研究类似的代谢降低效果。最终的控制器增益低于之前研究中的增益(β = 1.50 ± 0.14,而固定β = 2)。自适应增益使使用者获得的总踝关节功率比无辅助行走时更多,增加了踝关节功率,以换取髋关节功率的降低。
我们的研究结果表明,当使用自适应控制器的脚踝外骨骼时,与无辅助步态相比,人类更倾向于以更大的踝关节机械功率输出行走。这表明外骨骼的机器人辅助可以使人类采用不同于其正常运动选择的步态模式。在我们的具体实验中,受试者增加了踝关节功率并降低了髋关节功率,从而在代谢成本降低的情况下行走。未来依赖比例肌电控制的外骨骼设备通过纳入自适应增益可能会展现出更好的性能。