远端监督学习控制及其在CSTR系统中的应用

Yang Dongyong, Jian Jingping, Y. Yūzō
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引用次数: 3

摘要

研究了非线性连续搅拌罐式反应器(CSTR)系统的远端监督学习控制。引入多层神经网络(BP)构建远端监督学习控制系统。该控制器由一个专家协调器和两个BP网络组成。基于控制误差,由专家协调器激活极端控制模式或远端监督学习控制模式。通过对CSTR系统中乙酸酐水解反应的控制,说明了该控制器的有效性。结果表明,所提出的远端监督学习控制自学习能力强,易于实现,有助于提高非线性控制性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distal supervised learning control and its application to CSTR systems
In this paper, distal supervised learning control is considered for the nonlinear continuous-stirred tank reactor (CSTR) systems. Multilayer neural networks (BP) are introduced to construct the distal supervised learning control system. The proposed controller consists of an expert coordinator and two BP networks. Extreme control mode or distal supervised learning control mode is activated by expert coordinator based on control errors. The effectiveness of the proposed controller is illustrated through an application to control acetic anhydride hydrolysis reaction in a CSTR system. Results show that the proposed distal supervised learning control is strong in self-learning and easy to realize, and helpful for improving nonlinear control performance.
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