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
相关论文
共 50 条
  • [1] A Multistrategy Approach to Classifier Learning from Time Series
    William H. Hsu
    Sylvian R. Ray
    David C. Wilkins
    Machine Learning, 2000, 38 : 213 - 236
  • [3] A multistrategy approach to classifier learning from time series
    Hsu, WH
    Ray, SR
    Wilkins, DC
    MACHINE LEARNING, 2000, 38 (1-2) : 213 - 236
  • [4] Mining Fluctuation Propagation Graph Among Time Series with Active Learning
    Li, Mingjie
    Ma, Minghua
    Nie, Xiaohui
    Yin, Kanglin
    Cao, Li
    Wen, Xidao
    Yuan, Zhiyun
    Wu, Duogang
    Li, Guoying
    Liu, Wei
    Yang, Xin
    Pei, Dan
    DATABASE AND EXPERT SYSTEMS APPLICATIONS, DEXA 2022, PT I, 2022, 13426 : 220 - 233
  • [5] Process Mining for Time Series Data
    Ziolkowski, Tobias
    Koschmider, Agnes
    Schubert, Rene
    Renz, Matthias
    ENTERPRISE, BUSINESS-PROCESS AND INFORMATION SYSTEMS MODELING, 2022, 450 : 347 - 350
  • [6] An active learning system for mining time-changing data streams
    Huang, Shucheng
    Dong, Yisheng
    INTELLIGENT DATA ANALYSIS, 2007, 11 (04) : 401 - 419
  • [7] Data mining with Temporal Abstractions: learning rules from time series
    Lucia Sacchi
    Cristiana Larizza
    Carlo Combi
    Riccardo Bellazzi
    Data Mining and Knowledge Discovery, 2007, 15 : 217 - 247
  • [8] Data mining with temporal abstractions: learning rules from time series
    Sacchi, Lucia
    Larizza, Cristiana
    Combi, Carlo
    Bellazzi, Riccardo
    DATA MINING AND KNOWLEDGE DISCOVERY, 2007, 15 (02) : 217 - 247
  • [9] Active Learning With Gaussian Process Classifier for Hyperspectral Image Classification
    Sun, Shujin
    Zhong, Ping
    Xiao, Huaitie
    Wang, Runsheng
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2015, 53 (04): : 1746 - 1760
  • [10] Time series classifier recommendation by a meta-learning approach
    Abanda, A.
    Mori, U.
    Lozano, Jose A.
    PATTERN RECOGNITION, 2022, 128