用MATLAB实现非线性对象的神经网络控制

A. Africa, Darlene Alyssa P. Abaluna, A. J. Abello, Joaquin Miguel B. Lalusin
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引用次数: 3

摘要

在现代控制理论中,不同的控制器设计有几种变化。对于神经网络(NN)控制器也是如此。本文的目标是利用MATLAB实现非线性对象的预测神经网络控制器。控制器不仅用于确定工厂的性能,而且还通过使用它收集的数据对系统的未来输入进行建模。这些数据将经过训练,以创建系统的预测模型。然后可以使用预测的输入来优化系统的性能。在非线性植物模型上实现了神经网络控制器,并使用MATLAB中的深度学习工具箱中的Simulink进行了仿真。本文的另一个动机是更好地理解预测神经网络在控制系统中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Neural Network Control in a Nonlinear Plant Using MATLAB
In modern control theory, there are several variations to different controller designs. The same can be said for Neural Network (NN) Controllers. The goal of this paper is to implement a variant of NN controllers called the Predictive Neural Network controller for a nonlinear plant using MATLAB. The controller will not only be used to determine the performance of the plant but also model future inputs of the system by using the data it has collected. The data will undergo training to create a predictive model of the system. The predicted inputs can then be used to optimize the performance of the system. The NN controller was implemented on a nonlinear plant model and simulated using Simulink which is available in MATLAB using the Deep Learning Toolbox. Another motivation for this paper is to gain a better understanding of the applications of predictive neural networks in control systems.
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