Recycling valid inequalities for robust combinatorial optimization with budgeted uncertainty

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Christina Büsing, Timo Gersing, Arie M. C. A. Koster
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引用次数: 0

Abstract

Robust combinatorial optimization with budgeted uncertainty is one of the most popular approaches for integrating uncertainty into optimization problems. The existence of a compact reformulation for (mixed-integer) linear programs and positive complexity results give the impression that these problems are relatively easy to solve. However, the practical performance of the reformulation is quite poor when solving robust integer problems, in particular due to its weak linear relaxation. To overcome this issue, we propose procedures to derive new classes of valid inequalities for robust combinatorial optimization problems. For this, we recycle valid inequalities of the underlying deterministic problem such that the additional variables from the robust formulation are incorporated. The valid inequalities to be recycled may either be readily available model constraints or actual cutting planes, where we can benefit from decades of research on valid inequalities for classical optimization problems. We first demonstrate the strength of the inequalities theoretically, by proving that recycling yields a facet-defining inequality in many cases, even if the original valid inequality was not facet-defining. Afterwards, we show in an extensive computational study that using recycled inequalities can lead to a significant improvement of the computation time when solving robust optimization problems.

Abstract Image

具有预算不确定性的稳健组合优化的循环有效不等式
预算不确定性的稳健组合优化是将不确定性纳入优化问题的最流行方法之一。线性(混合整数)程序的紧凑重构和正复杂性结果给人的印象是,这些问题相对容易解决。然而,在求解鲁棒整数问题时,重整计算的实际性能却很差,特别是由于其线性松弛较弱。为了克服这个问题,我们提出了为鲁棒组合优化问题推导新的有效不等式类别的程序。为此,我们回收了基础确定性问题的有效不等式,以便将稳健公式中的额外变量纳入其中。需要回收的有效不等式可以是现成的模型约束,也可以是实际的切割平面,我们可以从几十年来对经典优化问题有效不等式的研究中获益。我们首先从理论上证明了不等式的优势,证明在很多情况下,即使原始有效不等式不是面定义的,循环也能得到面定义不等式。随后,我们通过大量的计算研究表明,在求解鲁棒优化问题时,使用循环不等式可以显著缩短计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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