Article ID Journal Published Year Pages File Type
173697 Computers & Chemical Engineering 2008 24 Pages PDF
Abstract

The supply chain optimization of continuous process networks is essential for most chemical companies. The dynamic nature of this problem leads to systems that involve several types of chemicals as well as multiple time periods, and ultimately are represented with complex and large combinatorial optimization models. Since, these models become very difficult to solve and sometimes are not even solvable, they require the use of decomposition methods, so that they can be solved efficiently and effectively. This work develops decomposition techniques for a continuous flexible process network (CFPN) model. The techniques include Lagrangean decomposition, Lagrangean relaxation, and Lagrangean/surrogate relaxation, coupled with subgradient and modified subgradient optimization. Several schemes derived from the techniques are proposed and applied to the process network model. The results from the full-scale solution and the proposed decomposition schemes are presented and compared.

Related Topics
Physical Sciences and Engineering Chemical Engineering Chemical Engineering (General)
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