Active mining from process time series by Learning Classifier System

被引:0
|
作者
Kurahashi, Setsuya [1 ]
Terano, Takao [1 ]
机构
[1] Graduate School of Business Sciences, University of Tsukuba, Tokyo
关键词
Biochemical engineering - Data processing - Learning systems - Neural networks - Process control;
D O I
10.1527/tjsai.17.638
中图分类号
学科分类号
摘要
Continuation processes in chemical and/or biotechnical plants always generate a large amount of time series data. However, since conventional process models are described as a set of control models, it is difficult to explain the complicated and active plant behaviors. Based on the background, this research proposes a novel method to develop a process response model from continuous time-series data. The method consists of the following phases: 1) Collect continuous process data at each tag point in a target plant; 2) Normalize the data in the interval between zero and one; 3) Get the delay time, which maximizes the correlation between given two time series data; 4) Select tags with the higher correlation; 5) Develop a process response model to describe the relations among the process data using the delay time and the correlation values; 6) Develop a process prediction model via several tag points data using a neural network; 1) Discover control rules from the process prediction model using Learning Classifier system. The main contribution of the research is to establish a method to mine a set of meaningful control rules from Learning Classifier System using the Minimal Description Length criteria. The proposed method has been applied to an actual process of a biochemical plant and has shown the validity and the effectiveness.
引用
收藏
页码:638 / 646
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