Column enumeration based decomposition techniques for a class of non-convex MINLP problems

Column enumeration based decomposition techniques for a class of non-convex MINLP problems

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Article ID: iaor200947175
Country: Netherlands
Volume: 43
Issue: 2
Start Page Number: 277
End Page Number: 297
Publication Date: Mar 2009
Journal: Journal of Global Optimization
Authors: , ,
Abstract:

We propose a decomposition algorithm for a special class of nonconvex mixed integer nonlinear programming problems which have an assignment constraint. If the assignment decisions are decoupled from the remaining constraints of the optimization problem, we propose to use a column enumeration approach. The master problem is a partitioning problem whose objective function coefficients are computed via subproblems. These problems can be linear, mixed integer linear, (non–)convex nonlinear, or mixed integer nonlinear. However, the important property of the subproblems is that we can compute their exact global optimum quickly. The proposed technique will be illustrated solving a cutting problem with optimum nonlinear programming subproblems.

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