REPO

Memoirs of the Faculty of Engineering, Okayama University 38巻 1-2号
2004-03 発行

Feature Extraction and Classification of Operational Data for Diagnosis of Hot Strip Mill Looper Control

Torigoe, Takashi Division of Electronic and Information System Engineering Graduate School of Natural Science and Technology Okayama University
Konishi, Masami Dept. of Electrical and Electronic Engineering Okayama University Kaken ID researchmap
Imai, Jun Dept. of Electrical and Electronic Engineering Okayama University Kaken ID researchmap
Nishi, Tatsushi Dept. of Electrical and Electronic Engineering Okayama University
Publication Date
2004-03
Abstract
In these days, mechanical systems are becoming more complex and highly automated. So, there exist wide variety of demands for reliable diagnostic technology. A reliable data analysis and quantitative diagnosis method of mechanical system is necessary for the purpose. In this paper a quantitative diagnosis method for looper height control system has been developed based on neural network technologies. The wavelet transformation is used for pre-processing to analyze characteristics of looper height control system. And, self organizing map neural network is used for the purpose of classification based on the pre-processed data. After that, the classified results are used for quantitative diagnosis in hierarchical neural network.
ISSN
0475-0071
NCID
AA10699856
NAID