Author_Institution :
Coll. of Sci., China Univ. of Pet., Qingdao, China
Abstract :
It poses a great challenge to control the blast furnace system, often meaning to control the components of the hot metal within acceptable boundary, such as the silicon content in hot metal. For this reason, this paper focuses on addressing the multiclass classification problem about the silicon change in hope of providing reasonable blast furnace control guidance. Through the proposed binary coding support vector machine (SVM) algorithm, a four-class problem, i.e., sharp descent, slight descent, sharp ascent, and slight ascent of the silicon content in hot metal, is reduced into two binary classification problems to solve. To heel, the confidence level about these classification results is also estimated. Reliable classification effect plus very few binary classifiers make the binary coding SVMs full of competitive power for practical applications, particularly when the confidence level is high. The four-class classification results can indicate not only the silicon change direction but also the rough silicon change amplitude, which can guide the blast furnace operators to determine the blast furnace control span together with the control direction in advance.
Keywords :
binary codes; blast furnaces; elemental semiconductors; metallurgy; pattern classification; production engineering computing; silicon; support vector machines; Si; binary classification problems; binary coding SVM; blast furnace control guidance; blast furnace control span; blast furnace operators; blast furnace system; classification confidence level; four-class classification results; four-class problem; hot metal silicon content; multiclass classification problem; rough silicon change amplitude; silicon change direction; silicon change problem; silicon content sharp ascent; silicon content sharp descent; silicon content slight ascent; silicon content slight descent; support vector machine; Blast furnaces; Decoding; Encoding; Metals; Predictive models; Silicon; Training; Binary coding support vector machines (SVMs); blast furnace; multiclass classification; probability output; silicon content in hot metal;