Jihun Kim, Kimoon Nam, Seungtae Yang, Junyoung Moon, Jaeha Yang, Jaewook Ryu, Giuk Lee
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引用次数: 0
Abstract
Wearable robots have been developed to assist the physical performance of humans. Specifically, exosuits have attracted attention due to their lightweight and soft nature, which facilitate user movement. Although several types of force controllers have been used in exosuits, it is challenging to control the assistive force due to the material's softness. In this study, we propose three methods to improve the performance of the basic controller using an admittance-based force controller. In method A, the cable was controlled according to the user's thigh motion to eliminate delays in generating the assistive force and improve the control accuracy. In method B, the stiffness feedforward model of the human exosuit was divided into two independent models based on the assistance phase for compensating the nonlinear stiffness more accurately. In method C, the real-time optimization method for the stiffness feedforward model with an adaptive moment estimation method optimizer was proposed. To validate these methods' effectiveness, we designed three new controllers, gradually combined the proposed methods with the basic controller, and compared their performances. We found that controller III, combining all three methods with the basic controller, showed the best performance. By applying controller III in the same exosuit, the root-mean-square error of the assistive force decreased from 39.84 N to 13.72 N, reducing the error by 65.56% compared with the basic controller. Moreover, the time delay for force generation in the gait cycle percentage decreased from 9.99% to 3.41%, reducing the delay by 65.87% compared with the basic controller.
可穿戴机器人的开发是为了帮助人类提高身体机能。特别是防弹衣,由于其轻便柔软的特性,便于用户移动,因此备受关注。虽然有几种力控制器已被用于外衣中,但由于材料的柔软性,控制辅助力是一项挑战。在本研究中,我们提出了三种方法,利用基于导纳的力控制器来提高基本控制器的性能。在方法 A 中,根据用户的大腿运动来控制缆线,以消除产生辅助力的延迟并提高控制精度。在方法 B 中,根据辅助阶段将人体外衣的刚度前馈模型分为两个独立模型,以更精确地补偿非线性刚度。在方法 C 中,提出了采用自适应力矩估计法优化器的刚度前馈模型实时优化方法。为了验证这些方法的有效性,我们设计了三个新控制器,逐步将提出的方法与基本控制器相结合,并比较了它们的性能。我们发现,将所有三种方法与基本控制器相结合的控制器 III 性能最佳。将控制器 III 应用于相同的外装时,辅助力的均方根误差从 39.84 N 降至 13.72 N,与基本控制器相比,误差减少了 65.56%。此外,在步态周期百分比中产生力的时间延迟从 9.99% 降至 3.41%,与基本控制器相比减少了 65.87%。