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康复机器人中用于气动人工肌肉的具有最优建模的模型预测控制:通过初步测试验证有效性

Model Predictive Control with Optimal Modelling for Pneumatic Artificial Muscle in Rehabilitation Robotics: Confirmation of Validity Though Preliminary Testing.

作者信息

Brown Dexter Felix, Xie Sheng Quan

机构信息

School of Electronic and Electrical Engineering, University of Leeds, Leeds LS2 9JT, UK.

出版信息

Biomimetics (Basel). 2025 Mar 28;10(4):208. doi: 10.3390/biomimetics10040208.

Abstract

This paper presents a model predictive controller (MPC) based on dynamic models generated using the Particle Swarm Optimisation method for accurate motion control of a pneumatic artificial muscle (PAM) for application in rehabilitation robotics. The physical compliance and lightweight nature of PAMs make them desirable for use in the field but also introduce nonlinear dynamic properties which are difficult to accurately model and control. As well as the MPC, three other control systems were examined for a comparative study: a particle-swarm optimised proportional-integral-derivative controller (PSO-PID), an iterative learning controller (ILC), and classical PID control. A series of different waveforms were used as setpoints for each controller, including addition of external loading and simulated disturbance, for a system consisting of a single PAM. Based on the displacement error measured for each experiment, the PID controller performed worst with the largest error values and an issue with oscillating about the setpoint. PSO-PID performed better but still poorly compared with the other intelligent controllers, as well as still exhibiting oscillation, which is undesirable in any human-robot interaction as it can heavily impact the comfort and safety of the system. ILC performed well with rapid convergence to steady-state and low-error values, as well as mitigation of loads and disturbance; however, it performed poorly under changing frequency of input. MPC generally performed the best of the controllers tested here, with the lowest error values and a rapid response to changes in setpoint, as well as no required learning period due to the predictive algorithm.

摘要

本文提出了一种基于粒子群优化方法生成的动态模型的模型预测控制器(MPC),用于对气动人工肌肉(PAM)进行精确运动控制,以应用于康复机器人领域。PAM的物理柔顺性和轻质特性使其在该领域具有应用价值,但同时也引入了难以精确建模和控制的非线性动态特性。除了MPC之外,还研究了其他三种控制系统进行对比研究:粒子群优化比例积分微分控制器(PSO-PID)、迭代学习控制器(ILC)和经典PID控制。对于由单个PAM组成的系统,使用了一系列不同的波形作为每个控制器的设定点,包括添加外部负载和模拟干扰。基于每个实验测量的位移误差,PID控制器表现最差,误差值最大,并且存在围绕设定点振荡的问题。PSO-PID表现较好,但与其他智能控制器相比仍然较差,并且仍然表现出振荡,这在任何人机交互中都是不可取的,因为它会严重影响系统的舒适性和安全性。ILC表现良好,能够快速收敛到稳态且误差值较低,同时能够减轻负载和干扰;然而,在输入频率变化时表现不佳。MPC通常是这里测试的控制器中表现最好的,具有最低的误差值,对设定点变化响应迅速,并且由于预测算法不需要学习期。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1369/12025290/da3134115641/biomimetics-10-00208-g001.jpg

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