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Data-Driven Gait Segmentation for Walking Assistance in a Lower-Limb Assistive Device

机译:用于下肢辅助装置的步行辅助的数据驱动的步态分段

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Hybrid systems, such as bipedal walkers, are challenging to control because of discontinuities in their nonlinear dynamics. Little can be predicted about the systems' evolution without modeling the guard conditions that govern transitions between hybrid modes, so even systems with reliable state sensing can be difficult to control. We propose an algorithm that allows for determining the hybrid mode of a system in real-time using data-driven analysis. The algorithm is used with data-driven dynamics identification to enable model predictive control based entirely on data. Two examples-a simulated hopper and experimental data from a bipedal walker-are used. In the context of the first example, we are able to closely approximate the dynamics of a hybrid SLIP model and then successfully use them for control in simulation. In the second example, we demonstrate gait partitioning of human walking data, accurately differentiating between stance and swing, as well as selected subphases of swing. We identify contact events, such as heel strike and toe-off, without a contact sensor using only kinematics data from the knee and hip joints, which could be particularly useful in providing online assistance during walking. Our algorithm does not assume a predefined gait structure or gait phase transitions, lending itself to segmentation of both healthy and pathological gaits. With this flexibility, impairment-specific rehabilitation strategies or assistance could be designed.
机译:由于其非线性动态中的不连续性,混合系统如双面步行者,挑战控制。可以预测系统的进化可以预测,而无需建模控制混合模式之间的过渡的保护条件,因此甚至可以难以控制具有可靠状态感测的系统。我们提出了一种算法,其允许使用数据驱动分析实时确定系统的混合模式。该算法用于数据驱动动态标识,以使全面基于数据的模型预测控制。两个示例 - 使用来自双模型步行者的模拟料斗和实验数据。在第一个示例的上下文中,我们能够密切近似混合滑动模型的动态,然后成功地使用它们进行仿真控制。在第二个例子中,我们展示了人行道数据的步态分配,准确地区分姿态和摆动,以及摆动的选定子页。我们识别联系事件,如脚后跟和脚趾关闭,而没有联系传感器,仅使用来自膝盖和髋关节的运动学数据,这在步行期间提供在线援助特别有用。我们的算法不假设预定的步态结构或步态相位过渡,借给健康和病理Gaits的分割。通过这种灵活性,可以设计特定于损害的康复战略或援助。

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