首页|Endpoint temperature prediction of molten steel in RH using improved case-based reasoning

Endpoint temperature prediction of molten steel in RH using improved case-based reasoning

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An improved case-based reasoning (CBR) method was proposed to predict the endpoint temperature of molten steel in Ruhrstahl Heraeus (RH) process. Firstly, production data were analyzed by multiple linear regressions and a pairwise comparison matrix in analytic hierarchy process (AHP) was determined by this linear regression’s coefficient. The weights of various influencing factors were obtained by AHP. Secondly, the dividable principles of case base including“0-1” and “breakpoint” were proposed, and the case base was divided into several homogeneous parts. Finally, the improved CBR was compared with ordinary CBR, which is based on the even weight and the single base. The results show that the improved CBR has a higher hit rate for predicting the endpoint temperature of molten steel in RH.

steelmakingdegassingcase-based reasoninganalytic hierarchy processtemperatureprediction

Kai Feng、Hong-bing Wang、An-jun Xu、Dong-feng He

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School of Metallurgy and Ecology Engineering, University of Science and Technology Beijing, Beijing 100083, China

School of Computer and Communication Engineering, University of Science and Technology Beijing, Beijing 100083, China

2013

矿物冶金与材料学报
北京科技大学

矿物冶金与材料学报

CSCDSCIEI
影响因子:0.609
ISSN:1674-4799
年,卷(期):2013.(12)
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