功能性电刺激肘关节角度的遗传pid控制仿真研究

N. Shariati, A. Maleki, A. Fallah
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引用次数: 4

摘要

功能电刺激(FES)系统可恢复脊髓损伤后的运动功能。在本研究中,我们使用了一个由一个关节、两个一个自由度的连杆、两个肌肉作为关节的屈伸肌组成的模型,并使用SimMechanics和Simulink工具箱在MATLAB中进行了仿真。该肌肉模型基于Zajac肌肌腱执行器,由非线性补充曲线、非线性激活-频率关系、钙动力学、疲劳/恢复模型、附加恒定时滞、力-长度和力-速度因素组成。在本研究中,我们使用经典控制器来调节肘关节角度;比例-积分-导数控制器。首先,通过试错法对PID系数进行调整,然后采用遗传算法对其进行优化。该遗传pid控制器使用遗传算法获得刺激肱二头肌达到肘关节所需角度所需的脉宽。适应度函数定义为误差平方和。结果表明,遗传PID控制器在达到设定值范围时的响应速度比通过试错法调整的PID控制器快。但是遗传PID在上升时间和稳定时间方面要好得多,通过试错调整的PID没有超调。遗传PID达到零稳态误差的时间是通过试错调节PID的一半。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic-PID control of elbow joint angle for functional electrical stimulation: A simulation study
Functional electrical stimulation (FES) systems restore motor functions after spinal cord injury (SCI). In this study, we used a model consists of a joint, two links with one degree of freedom, and two muscles as flexor and extensor of the joint, which simulated in MATLAB using SimMechanics and Simulink Toolboxes. The muscle model is based on Zajac musculotendon actuator and composed of a nonlinear recruitment curve, a nonlinear activation-frequency relationship, calcium dynamics, fatigue/recovery model, an additional constant time delay, force-length and force-velocity factors. In this study, we used a classic controller for regulating the elbow joint angle; a Proportional- Integral- Derivative controller. First, we tuned the PID coefficients with trial and error, and then a genetic algorithm was used to optimize them. This genetic-PID controller uses genetic algorithm to get the required pulse width for stimulating the biceps to reach the elbow joint to the desired angle. The fitness function was defined as sum square of error. The results for genetic-PID controller show faster response for reaching the range of the set point than the PID controller tuned by trial and error. However the genetic-PID is much better in terms of the rise time and the settling time, the PID tuned by trial and error has no overshoot. The time to reach the zero steady state error is half in genetic-PID in comparison to PID tuned by trial and error.
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