基于神经网络和遗传算法的磁悬浮系统实时控制

Z. Daghooghi, M. Menhaj, A. Zomorodian, A. Akramizadeh
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引用次数: 3

摘要

本文提出了一种基于神经网络和遗传算法的磁悬浮系统控制方法。由于制造方面的考虑,系统的输出受到限制。利用多层前馈神经网络对辨识器结构进行建模。基于所提出的适应度函数,采用遗传算法对神经网络参数进行最优调整。该神经辨识系统接收前一时间步的悬浮球位置和系统输入,并预测下一个球的位置。标识符保证学习大(小)系统输入将生成大(小)输出的规则。只要学习了标识符,就可以控制系统。控制信号在相等的时间间隔内经常更新,其中使用反向传播机制计算适当的控制信号。每当一个输入被应用到系统,控制器开始计算下一个控制信号。在Delphi 7环境下进行了仿真,利用龙格-库塔算法求解了系统方程。仿真结果表明了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A real-time control of maglev system using neural networks and genetic algorithms
In this paper a novel method is proposed to control a magnetic levitation system (MAGLEV) based on neural networks and genetic algorithm. The output of the system is restricted due to manufacturing considerations. Structure of identifier is modeled using a multilayer feedforward neural network. Based on the proposed fitness function, genetic algorithm is used to optimally adjust parameters of the neural network. The proposed neuro-identifier system receives the levitated ball positions and system inputs in the previous time step and predicts the next ball position. The identifier is guaranteed to learn the rule that a large (small) system inputs will generate large (small) outputs. As long as the identifier is learned, the system can be controlled. Control signals are frequently updated within equal time intervals, where this proper control signals are calculated using the back propagation mechanism. Whenever an input is applied to the system, the controller starts calculating the next control signal. Simulations are performed in a Delphi 7 environment, where the system equations are solved using Runge-Kutta algorithm. The simulation results present the effectiveness of the proposed methods.
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