Neural Network-Based Gain Scheduled Position Control of a Pneumatic Artificial Muscle

Arunabha Majumder, Debadrata Sarkar, Sagnik Chakraborty, Abhijit Singh, S. Roy, Aman Arora
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Abstract

The pneumatic artificial muscle (PAM) is considered one of the most preferred actuators in a variety of robotic and industrial applications. However, due to their inherent nonlinearities and hysteretic properties, they are difficult to model and the controller’s design becomes more sophisticated. The position control problem of a PAM having different regions of operations at various axial loads is considered in this paper. A neural network-based gain scheduled proportional-integral-derivative (PID-NN) control scheme has been synthesized and compared to the classical linear PID controllers. The PID gains for different operating regions at different loads are determined using Zeigler Nichols sustained oscillation method. These sets of PID gains are then used to determine the neural network (NN) model that schedules them based on the region of operations and axial loads. To validate the efficacy of the proposed control scheme with regards to different step inputs and a sinusoidal input reference tracking performance, experimental studies are conducted, and comparisons have been made with the PID controller. The experimental results for position control confirm the efficacy of the proposed control strategy.
基于神经网络的气动人工肌肉增益预定位置控制
气动人工肌肉(PAM)被认为是各种机器人和工业应用中最优选的执行器之一。然而,由于其固有的非线性和滞后特性,使其难以建模,控制器的设计也变得更加复杂。研究了在不同轴向载荷作用下具有不同操作区域的PAM的位置控制问题。合成了一种基于神经网络的增益调度比例-积分-导数(PID- nn)控制方案,并与经典线性PID控制器进行了比较。采用齐格勒-尼科尔斯持续振荡法确定了不同负载下不同工作区域的PID增益。然后使用这些PID增益集来确定神经网络(NN)模型,该模型根据操作区域和轴向负载来调度它们。为了验证所提出的控制方案在不同阶跃输入和正弦输入参考跟踪性能方面的有效性,进行了实验研究,并与PID控制器进行了比较。位置控制实验结果验证了所提控制策略的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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