A reformulation framework for global optimization

被引:0
作者
Andreas Lundell
Anders Skjäl
Tapio Westerlund
机构
[1] Åbo Akademi University,Center of Excellence in Optimization and Systems Engineering
来源
Journal of Global Optimization | 2013年 / 57卷
关键词
Global optimization; Reformulation technique; Convex underestimators; Mixed integer nonlinear programming; Twice-differentiable functions; Signomial functions; Piecewise linear functions; BB-underestimator; SGO-algorithm;
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中图分类号
学科分类号
摘要
In this paper, we present a global optimization method for solving nonconvex mixed integer nonlinear programming (MINLP) problems. A convex overestimation of the feasible region is obtained by replacing the nonconvex constraint functions with convex underestimators. For signomial functions single-variable power and exponential transformations are used to obtain the convex underestimators. For more general nonconvex functions two versions of the so-called αBB-underestimator, valid for twice-differentiable functions, are integrated in the actual reformulation framework. However, in contrast to what is done in branch-and-bound type algorithms, no direct branching is performed in the actual algorithm. Instead a piecewise convex reformulation is used to convexify the entire problem in an extended variable-space, and the reformulated problem is then solved by a convex MINLP solver. As the piecewise linear approximations are made finer, the solution to the convexified and overestimated problem will form a converging sequence towards a global optimal solution. The result is an easily-implementable algorithm for solving a very general class of optimization problems.
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页码:115 / 141
页数:26
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