Article ID: | iaor20117780 |
Volume: | 215 |
Issue: | 1 |
Start Page Number: | 194 |
End Page Number: | 203 |
Publication Date: | Nov 2011 |
Journal: | European Journal of Operational Research |
Authors: | Zhang Guangquan, Lu Jie, Zhang Ruijun |
Keywords: | knowledge management |
Literature illustrates the difficulties in obtaining the lowest‐cost optimal solution to an ore blending problem for blast furnaces by using the traditional trial‐and‐error method in iron and steel enterprises. To solve this problem, we developed a cost optimization model which we have implemented in a multi‐role‐based decision support system (DSS). On the basis of analyzing the business flow and working process of ore blending, we propose an architecture of DSS which is built based on multi‐roles. This DSS construction pre‐processes the data for materials and elements, builds a general database, abstracts the related optimal operations research models and introduces the reasoning mechanism of an expert system. A non‐linear model of ore blending for blast furnaces and its solutions are provided. A database, a model base and a knowledge base are integrated into the expert system‐based multi‐role DSS to meet the different demands of data, information and decision‐making knowledge for the various roles of users. A comparison of the results for the DSS and the trial‐and‐error method is provided. The system has produced excellent economic benefits since it was implemented at the Xiangtan Iron & Steel Group Co. Ltd., China.