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An active foot lifter orthosis based on a PCPG algorithm

机译:基于PCPG算法的主动式脚举矫正器

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Central pattern generators (CPGs) are known to play an important role in the generation of rhythmic movements in gait, both in animals and humans. The comprehension of their underlying mechanism has led to the development of an important family of algorithms at the basis of autonomous walking robots. Recently, it has been shown that human gait could be modeled using a subclass of those algorithms, namely a Programmable Central Pattern Generator (PCPG). In this paper, we present a foot lifter orthosis driven by this algorithm. After a learning phase, the PCPG is able to generate adequate rhythmic gait patterns both for constant speeds and acceleration phases. Its output is used to drive the orthosis actuator during the swing phase, in order to help patients suffering from foot drop (the orthosis just follows the movement during the stance phase). The most interesting property of this algorithm is the possibility to generate a smooth output signal even during speed transitions. In practice, given that human gait is not perfectly periodic, the phase of this signal needs to be reset with actual movement. Therefore, two phase-resetting procedures were studied: one standard hard phase-resetting leading to discontinuities and one original soft phase-resetting allowing to recover the correct phase in a smooth way. The simulation results and complete design of the orthosis hardware and software are presented.
机译:众所周知,中央模式发生器(CPG)在动物和人类步态的节奏运动产生中起着重要作用。对它们的基本机制的理解导致在自主行走机器人的基础上开发了重要的算法家族。最近,已经表明可以使用那些算法的子类,即可编程中央模式发生器(PCPG),对人的步态进行建模。在本文中,我们提出了由该算法驱动的脚举矫形器。在学习阶段之后,PCPG能够针对恒定速度和加速阶段生成足够的节奏步态模式。它的输出用于在摆动阶段驱动矫形器执行器,以帮助患有脚下垂的患者(矫正器仅在站立阶段跟随运动)。该算法最有趣的特性是即使在速度转换期间也可以生成平滑的输出信号。实际上,由于人的步态不是完全周期性的,因此该信号的相位需要通过实际移动来重置。因此,研究了两种相位重置程序:一种标准的硬相位重置导致不连续,另一种原始的软相位重置可以平滑地恢复正确的相位。给出了矫形器的仿真结果以及完整的设计。

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