Real time implementation of NARMA L2 feedback linearization and smoothed NARMA L2 controls of a single link manipulator

Wahyudi, S. SalasiahMokri, A. Shafie
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引用次数: 11

Abstract

Robotics is a field of modern technology which requires knowledge in vast areas such as electrical engineering, mechanical engineering, computer science as well as finance. Nonlinearities and parametric uncertainties are unavoidable problems faced in controlling robots in industrial plants. Tracking control of a single link manipulator driven by a permanent magnet brushed DC motor is a nonlinear dynamics due to effects of gravitational force, mass of the payload, posture of the manipulator and viscous friction coefficient. Furthermore uncertainties arise because of changes of the rotor resistance with temperature and random variations of friction while operating. Due to this fact classical PID controller can not be used effectively since it is developed based on linear system theory. Neural network control schemes for manipulator control problem have been proposed by researchers; in which their competency is validated through simulation studies. On the other hand, actual real time applications are rarely established. Instead of simulation studies, this paper is aimed to implement neural network controller in real time for controlling a DC motor driven single link manipulator. The work presented in this paper is concentrating on neural NARMA L2 control and its improvement called to as Smoothed NARMA L2 control. As proposed by K. S Narendra and Mukhopadhyay, Narma L2 control is one of the popular neural network architectures for prediction and control. The real time experimentation showed that the Smoothed NARMA L2 is effective for controlling the single link manipulator for both point-to-point and continuous path motion control.
实时实现NARMA L2反馈线性化和平滑NARMA L2控制的单连杆机械手
机器人技术是一个现代技术领域,它需要电气工程、机械工程、计算机科学以及金融等广泛领域的知识。非线性和参数不确定性是工业厂房机器人控制中不可避免的问题。永磁有刷直流电动机驱动的单连杆机械臂跟踪控制是一个受重力、载荷质量、机械臂姿态和粘性摩擦系数影响的非线性动力学问题。此外,转子电阻随温度的变化和运行过程中摩擦的随机变化也会产生不确定性。由于经典PID控制器是基于线性系统理论开发的,因此不能有效地应用。针对机械臂控制问题,已有学者提出了神经网络控制方案;其中他们的能力是通过模拟研究验证。另一方面,很少建立真正的实时应用程序。本文不进行仿真研究,而是实现神经网络控制器对直流电动机驱动的单连杆机械手的实时控制。本文的工作主要集中在神经NARMA L2控制及其改进称为平滑NARMA L2控制。由k.s Narendra和Mukhopadhyay提出,Narma L2控制是用于预测和控制的流行神经网络体系结构之一。实时实验表明,该方法对单连杆机械臂的点对点运动控制和连续路径运动控制都是有效的。
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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