Feature Selection with Fuzzy Entropy to Find Similar Cases

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Publication Details

List of Authors: József Mezei, Juan Antonio Morente-Molinera, Christer Carlsson
Editors: Mo Jamshidi, Vladik Kreinovich, Janusz Kacprzyk
Publisher: Springer International Publishing
Publication year: 2014
Publisher: Springer
Book title: Advance Trends in Soft Computing
Title of series: Studies in Fuzziness and Soft Computing
Volume number: 312
Start page: 383
End page: 390
ISBN: 978-3-319-03673-1
eISBN: 978-3-319-03674-8
ISSN: 1434-9922


Abstract

Process interruptions are carried out either automatically by monitoring and control systems that react to deviations from standards or by operators reacting to anomalies or incidents. Process interruptions in (very) large production systems are difficult to trace and to deal with; an extended stop is also very costly and solutions are sought to find an effective support technology to minimize the number of involuntary process interruptions. Feature selection is intended to reduce the complexity of handling the interactions of numerous factors in large process systems and to help find the best ways to handle process interruptions. We show that feature selection can be carried out with fuzzy entropy and interval-valued fuzzy sets.

Last updated on 2019-14-10 at 06:26