Implementation of a Fuzzy PID Controller Using Neural Network on the Magnetic Levitation System

A. Trisanto, M. Yasser, Jianming Lu, T. Yahagi
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引用次数: 8

Abstract

This paper presents the fuzzy PID (FPID) controller using neural network (NN) for controlling the magnetic levitation system. Magnetic levitation systems are open loop unstable, uncertainly and inherently nonlinear systems. Consequently, controlling this kind of the system is very difficulty. The FPID controller is developed to provide nonlinear or linear control action that can improve performance of the controller in comparison with a conventional PID controller using only linear policy. Unfortunately, since FPID controller are nonlinear, it is more difficult to set the controller gains compared the linear PID controller. In this paper we propose a neural network to assist the FPID controller. The NN is added in parallel with FPID controller. The NN is used to compensate for inadequate FPID parameters and for stabilize the magnetic levitation system. The uniqueness our method is when the parameters of FPID are incorrect, then the NN takes over the controller, otherwise the NN does not operate. Online training and fast computing of the NN has been designed for that purposes. Finally, the experiment results showed the effectiveness of the proposed method
磁悬浮系统模糊PID控制器的神经网络实现
提出了一种利用神经网络控制磁悬浮系统的模糊PID (FPID)控制器。磁悬浮系统是开环不稳定的、不确定的、固有的非线性系统。因此,控制这种系统是非常困难的。与仅使用线性策略的传统PID控制器相比,FPID控制器开发用于提供非线性或线性控制动作,可以提高控制器的性能。不幸的是,由于FPID控制器是非线性的,与线性PID控制器相比,更难设置控制器增益。在本文中,我们提出一种神经网络来辅助FPID控制器。神经网络与FPID控制器并行加入。利用神经网络对FPID参数的不足进行补偿,实现磁悬浮系统的稳定。该方法的唯一性在于当FPID参数不正确时,神经网络接管控制器,否则神经网络不运行。网络的在线训练和快速计算就是为此目的而设计的。最后,通过实验验证了该方法的有效性
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