通过机载传感器表征外骨骼辅助行走的意图变化

Taylor M. Gambon, J. Schmiedeler, Patrick M. Wensing
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引用次数: 4

摘要

机器人外骨骼在肌肉骨骼损伤后的康复和运动方面是一项很有前途的技术,但它们在物理治疗诊所之外的应用受到识别和整合用户步态意图的相对原始的方法的限制。各种意图检测方法已经证明使用肌电图和脑电图信号。这些技术直接感知人类,但在穿戴/脱下设备和测量一致性方面引入了复杂性。相比之下,外骨骼上的传感器避免了这些复杂的问题,而是通过人机界面间接地感知人类。这项初步研究考察了车载传感器是否可以单独识别用户意图。关节位置和指令电机电流在用户预期步态速度变化之前和之后进行比较。初步实验结果证实,健全使用者和非健全使用者在意图改变后,这些测量结果有显著差异。研究结果表明,仅使用车载传感器就可以进行意图检测,但意图信号取决于外骨骼控制设置、用户能力和时间考虑。
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Characterizing Intent Changes in Exoskeleton-Assisted Walking Through Onboard Sensors
Robotic exoskeletons are a promising technology for rehabilitation and locomotion following musculoskeletal injury, but their adoption outside the physical therapy clinic has been limited by relatively primitive methods for identifying and incorporating the user’s gait intentions. Various intent detection approaches have been demonstrated using electromyography and electroencephalography signals. These technologies sense the human directly but introduce complications for donning/doffing the device and in measurement consistency. By contrast, sensors onboard the exoskeleton avoid these complications but sense the human indirectly via the human-robot interface. This pilot study examines if onboard sensors alone may enable identification of user intent. Joint positions and commanded motor currents are compared prior to and after changes in the user’s intended gait speed. Preliminary experimental results confirm that these measures are significantly different following intent changes for both able-bodied and non-able-bodied users. The findings suggest that intent detection is possible with onboard sensors alone, but the intent signals depend on exoskeleton control settings, user ability, and temporal considerations.
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