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Learning and planning of stair ascent for lower-limb exoskeleton systems

机译:用于低肢前骨骼系统的楼梯上升的学习与规划

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Purpose Lower-limb exoskeleton systems enable people with spinal cord injury to regain some degree of locomotion ability, as the expected motion curve needs to adapt with changing scenarios, i.e. stair heights, distance to the stairs. The authors' approach enables exoskeleton systems to adapt to different scenarios in stair ascent task safely. Design/methodology/approach In this paper, the authors learn the locomotion from predefined trajectories and walk upstairs by re-planning the trajectories according to external forces posed on exoskeleton systems. Moreover, instead of using complex sensors as inputs for re-planning in real-time, the approach can obtain forces acting on exoskeleton through dynamic model of human-exoskeleton system learned by an online machine learning approach without accurate parameters. Findings The proposed approach is validated in both simulation environment and a real walking assistance exoskeleton system. Experimental results prove that the proposed approach achieves better performance than the traditional predefined gait approach. Originality/value First, the approach obtain the external forces by a learned dynamic model of human-exoskeleton system, which reduces the cost of exoskeletons and avoids the heavy task of translating sensor input into actuator output. Second, the approach enables exoskeleton accomplish stair ascent task safely in different scenarios.
机译:目的下肢外骨骼系统使脊髓损伤的人能够重新获得一定程度的运动能力,因为预期的运动曲线需要适应变化的场景,即楼梯高度,到楼梯的距离。作者的方法使外骨骼系统能够安全地适应楼梯上升任务的不同情景。设计/方法/方法在本文中,作者将从预定义的轨迹的运动学习,并根据在外骨骼系统上提出的外部力量重新规划轨迹,踏上楼梯。此外,该方法代替使用复杂的传感器作为重新规划的输入,而是通过通过在没有准确参数的在线机器学习方法学习的人类外骨骼系统的动态模型来获得作用于外骨骼的力量。调查结果在模拟环境和实际行走辅助方案系统中验证了所提出的方法。实验结果证明,拟议的方法能够实现比传统的预定义步态方法更好的性能。原创性/值首先,该方法通过学习人 - 外骨骼系统的学习动态模型获得外部力,这降低了外骨骼的成本,避免了将传感器输入转化为致动器输出的繁重任务。其次,该方法使外骨骼能够在不同场景中安全地完成楼梯上升任务。

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