Title :
Fault diagnosis of blast furnace based on improved binary-tree SVMS
Author :
Wang, Aiping ; Liu, Zuoqian ; Tao, Ran
Author_Institution :
Sch. of Inf. Sci. & Eng., Northeastern Univ., Shenyang, China
Abstract :
Support vector machine (SVMs) is powerful for classification problem with small sampling, nonlinear and high dimension. In this paper, two new improvements of SVMs algorithm on samples pretreatment and SVMs binary-tree construction are proposed to solve fault diagnosis problem of blast furnace in ironmaking. The input data of diagnosis system is preprocessed through a special method based on reducing useless samples technology and some characters are extracted for according to them diagnosing blast furnace faults. A new improved binary tree SVMs multi-class classification algorithm is proposed and applied to diagnosis of blast furnace. The experiment results show that the improved binary-tree SVMs algorithm has an excellent performance on training speed and diagnosis accuracy.
Keywords :
blast furnaces; fault diagnosis; mechanical engineering computing; metallurgical industries; pattern classification; problem solving; steel manufacture; support vector machines; trees (mathematics); blast furnace; fault diagnosis problem solving; improved binary tree SVM multiclass classification algorithm; ironmaking; reducing useless sample technology; support vector machine; Binary trees; Blast furnaces; Classification algorithms; Classification tree analysis; Fault diagnosis; Support vector machine classification; Training; Blast furnace; Data preprocess; Fault diagnosis; Improved binary-tree; SVMs;
Conference_Titel :
World Automation Congress (WAC), 2010
Conference_Location :
Kobe
Print_ISBN :
978-1-4244-9673-0
Electronic_ISBN :
2154-4824