Intelligent pH control using fuzzy linear invariant clustering

J. Sabharwal, Jianhua Chen
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引用次数: 5

Abstract

This study explores the application of a fuzzy clustering algorithm in the field of chemical process control. The control problem considered is a two level cascade control of the pH of a chemical stream. The pH is controlled by the addition of two chemicals-sulfuric acid (to lower the pH) and caustic (to increase the pH). The fuzzy clustering algorithm developed by Bezdek et al. (1993), and independently by Kundu and Chen (1994) is used in this study to identify fuzzy rules from numerical I/O data points. The algorithm replaces the notion of a single representative point of a cluster with a more general notion of a hyperplane for each cluster. In this study, a simulation of the control problem has been generated and a menu driven GUI has been developed which enables the user to simulate different states of the control problem by modifying the tuning parameters. Preliminary experiments show that the rules learned by the fuzzy clustering perform well. These results provide support for the use of fuzzy clustering algorithms in process control.
基于模糊线性不变聚类的智能pH控制
本研究探讨了模糊聚类算法在化工过程控制领域的应用。所考虑的控制问题是化学流pH值的两级串级控制。pH值是通过加入两种化学物质来控制的——硫酸(降低pH值)和苛性碱(增加pH值)。本研究使用Bezdek等人(1993)开发的模糊聚类算法,以及Kundu和Chen(1994)独立开发的模糊聚类算法,从数值I/O数据点中识别模糊规则。该算法将集群的单个代表点的概念替换为每个集群的超平面的更一般概念。在本研究中,生成了控制问题的仿真,并开发了菜单驱动的GUI,使用户能够通过修改调谐参数来模拟控制问题的不同状态。初步实验表明,模糊聚类学习的规则具有良好的性能。这些结果为模糊聚类算法在过程控制中的应用提供了支持。
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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