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首页> 外文期刊>Optimization: A Journal of Mathematical Programming and Operations Research >Global optimization for generalized geometric programming problems with discrete variables
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Global optimization for generalized geometric programming problems with discrete variables

机译:具有离散变量的广义几何规划问题的全局优化

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摘要

Generalized geometric programming (GGP) problems occur frequently in engineering design and management, but most existing methods for solving GGP actually only consider continuous variables. This article presents a new branch-and-bound algorithm for globally solving GGP problems with discrete variables. For minimizing the problem, an equivalent monotonic optimization problem (P) with discrete variables is presented by exploiting the special structure of GGP. In the algorithm, the lower bounds are computed by solving ordinary linear programming problems that are derived via a linearization technique. In contrast to pure branch-and-bound methods, the algorithm can perform a domain reduction cut per iteration by using the monotonicity of problem (P), which can suppress the rapid growth of branching tree in the branch-and-bound search so that the performance of the algorithm is further improved. Computational results for several sample examples and small randomly generated problems are reported to vindicate our conclusions.
机译:广义几何规划(GGP)问题在工程设计和管理中经常发生,但是大多数解决GGP的现有方法实际上只考虑连续变量。本文提出了一种新的分支定界算法,用于全局解决带有离散变量的GGP问题。为了使问题最小化,通过利用GGP的特殊结构,提出了具有离散变量的等效单调优化问题(P)。在该算法中,下限是通过解决通过线性化技术得出的普通线性规划问题来计算的。与纯分支定界方法相比,该算法可以通过使用问题(P)的单调性来执行每次迭代的域约简割,从而可以抑制分支定界搜索中分支树的快速增长,从而该算法的性能得到进一步提高。报告了几个样本示例的计算结果以及一些随机产生的小问题,以证明我们的结论。

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