IEEE Trans Neural Syst Rehabil Eng. 2016 Nov;24(11):1169-1178. doi: 10.1109/TNSRE.2016.2521686. Epub 2016 Jan 27.
In recent years, intelligent prosthetic knees have been developed that enable amputees to walk as normally as possible when compared to healthy subjects. Although semi-active prosthetic knees utilizing magnetorheological (MR) dampers offer several advantages, they lack the ability to generate active force that is required during some states of a normal gait cycle. This prevents semi-active knees from achieving the same level of performance as active devices. In this work, a new control algorithm for a semi-active prosthetic knee during the swing phase is proposed to reduce this gap. The controller uses neural network predictive control and particle swarm optimization to calculate suitable command signals. Simulation results using a double pendulum model show that the generated knee trajectory of the proposed controller is more similar to the normal gait than previous open-loop controllers at various ambulation speeds. Moreover, the investigation shows that the algorithm can be calculated in real time by an embedded system, allowing for easy implementation on real prosthetic knees.
近年来,已经开发出智能假肢膝关节,使截肢者在行走时能够尽可能地接近健康人。虽然利用磁流变(MR)阻尼器的半主动假肢膝关节具有许多优点,但它们缺乏在正常步态周期的某些状态下生成主动力的能力。这使得半主动膝关节无法达到与主动装置相同的性能水平。在这项工作中,提出了一种新的半主动假肢膝关节在摆动阶段的控制算法,以缩小这一差距。该控制器使用神经网络预测控制和粒子群优化来计算合适的命令信号。使用双摆模型的仿真结果表明,与以前的开环控制器相比,在各种步行速度下,所提出的控制器产生的膝关节轨迹更接近正常步态。此外,研究表明,该算法可以通过嵌入式系统实时计算,便于在实际的假肢膝关节上实现。