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An improved plant-wide multiperiod optimization model of a byproduct gas supply system in the iron and steel-making process

Applied energy, v.164, 2016년, pp.462 - 474  

de Oliveira Junior, Valter B. (Corresponding author.) ,  Pena, João G. Coelho ,  Salles, José ,  L. Félix

Abstract AI-Helper 아이콘AI-Helper

Abstract In an integrated steel mill, the byproduct gases of steel production processes can be recovered as fuel for the plant itself and can be used to generate electricity and steam in power plants. This work addresses the development of a mixed integer linear programming (MILP) model to solve th...

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