DocumentCode :
2517362
Title :
Using LSSVM model to predict the silicon content in hot metal based on KPCA feature extraction
Author :
Wang, Yikang ; Gao, Chuanhou ; Liu, Xiangguan
Author_Institution :
Dept. of Math., Zhejiang Univ., Hangzhou, China
fYear :
2011
fDate :
23-25 May 2011
Firstpage :
1967
Lastpage :
1971
Abstract :
To overcome the difficulty that silicon content in hot metal can not be effectively controlled in ironmaking process due to lack of real-time on-line instrumentation, a prediction method is proposed by combining the Kernel Principal Component Analysis(KPCA) with the Least Square Support Vector Machine(LSSVM). Using KPCA as a preprocessor of LSSVM to extract the principal features of original data and employ the 10-fold cross validation to optimize the parameters of LSSVM. Then LSSVM is applied to proceed silicon content regression modeling. KPCA can denoise the input data and capture the high-ordered nonlinear principal components in input data space, and with LSSVM we can establish a prediction model between the featured principal components and the primary variable for the silicon content in iron making processes. The data of the model are collected from No.6 Blast Furnace in Baotou Iron and Steel Group Co. of China. The results show that the LSSVM model based on KPCA feature selection has higher accuracy and better tracking performance compared with LSSVM or PCA-LSSVM models, so the proposed method can satisfy the requirements of on-line measurements of silicon content in hot metal.
Keywords :
blast furnaces; control engineering computing; feature extraction; iron; least squares approximations; principal component analysis; regression analysis; silicon; steel industry; steel manufacture; support vector machines; Baotou Iron and Steel Group Co; KPCA feature extraction; KPCA feature selection; PCA-LSSVM models; blast furnace; high-ordered nonlinear principal components; hot metal; input data space; ironmaking process; kernel principal component analysis; least square support vector machine; online measurements; prediction method; preprocessor; principal features; real-time on-line instrumentation; silicon content regression modeling; tracking performance; Blast furnaces; Feature extraction; Kernel; Metals; Predictive models; Principal component analysis; Silicon; KPCA; LSSVM; Prediction; Silicon content in hot metal;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control and Decision Conference (CCDC), 2011 Chinese
Conference_Location :
Mianyang
Print_ISBN :
978-1-4244-8737-0
Type :
conf
DOI :
10.1109/CCDC.2011.5968523
Filename :
5968523
Link To Document :
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