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Neural-network-based nonlinear model predictive tracking control of a pneumatic muscle actuator-driven exoskeleton

机译:基于神经网络的非线性模型的气动肌动机驱动的外骨骼的预测性跟踪控制

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摘要

Pneumatic muscle actuators (PMAs) are compliant and suitable for robotic devices that have been shown to be effective in assisting patients with neurologic injuries, such as strokes, spinal cord injuries, etc., to accomplish rehabilitation tasks. However, because PMAs have nonlinearities, hysteresis, and uncertainties, etc., complex mechanisms are rarely involved in the study of PMA-driven robotic systems. In this paper, we use nonlinear model predictive control (NMPC) and an extension of the echo state network called an echo state Gaussian process (ESGP) to design a tracking controller for a PMA-driven lower limb exoskeleton. The dynamics of the system include the PMA actuation and mechanism of the leg orthoses; thus, the system is represented by two nonlinear uncertain subsystems. To facilitate the design of the controller, joint angles of leg orthoses are forecasted based on the universal approximation ability of the ESGP. A gradient descent algorithm is employed to solve the optimization problem and generate the control signal. The stability of the closed-loop system is guaranteed when the ESGP is capable of approximating system dynamics. Simulations and experiments are conducted to verify the approximation ability of the ESGP and achieve gait pattern training with four healthy subjects.
机译:气动肌动力执行器(PMA)符合且适用于有效的机器人设备,辅助患有神经损伤的患者,如中风,脊髓损伤等,以实现康复任务。然而,因为PMA具有非线性,滞后和不确定性等,因此复杂的机制很少参与PMA驱动的机器人系统的研究。在本文中,我们使用非线性模型预测控制(NMPC)和回声状态网络的扩展,称为回声状态高斯过程(ESGP)来设计用于PMA驱动的下肢外屏幕的跟踪控制器。系统的动态包括腿部的PMA致动和机制;因此,该系统由两个非线性不确定子系统表示。为了便于控制器的设计,基于ESGP的普遍逼近能力,预测腿部的关节角度。采用梯度下降算法来解决优化问题并生成控制信号。当ESGP能够近似系统动态时,保证了闭环系统的稳定性。进行模拟和实验以验证ESGP的近似能力,实现具有四个健康科目的步态模式培训。

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