Adjustability in robust linear optimization

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-01-27 DOI:10.1007/s10107-023-02049-w
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Abstract

We investigate the concept of adjustability—the difference in objective values between two types of dynamic robust optimization formulations: one where (static) decisions are made before uncertainty realization, and one where uncertainty is resolved before (adjustable) decisions. This difference reflects the value of information and decision timing in optimization under uncertainty, and is related to several other concepts such as the optimality of decision rules in robust optimization. We develop a theoretical framework to quantify adjustability based on the input data of a robust optimization problem with a linear objective, linear constraints, and fixed recourse. We make very few additional assumptions. In particular, we do not assume constraint-wise separability or parameter nonnegativity that are commonly imposed in the literature for the study of adjustability. This allows us to study important but previously under-investigated problems, such as formulations with equality constraints and problems with both upper and lower bound constraints. Based on the discovery of an interesting connection between the reformulations of the static and fully adjustable problems, our analysis gives a necessary and sufficient condition—in the form of a theorem-of-the-alternatives—for adjustability to be zero when the uncertainty set is polyhedral. Based on this sharp characterization, we provide two efficient mixed-integer optimization formulations to verify zero adjustability. Then, we develop a constructive approach to quantify adjustability when the uncertainty set is general, which results in an efficient and tight poly-time algorithm to bound adjustability. We demonstrate the efficiency and tightness via both theoretical and numerical analyses.

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稳健线性优化中的可调整性
摘要 我们研究了可调整性的概念--两类动态稳健优化公式之间目标值的差异:一类是在不确定性实现之前做出(静态)决策,另一类是在做出(可调整的)决策之前解决不确定性。这种差异反映了信息和决策时机在不确定条件下优化的价值,并与其他几个概念相关,如稳健优化中决策规则的最优性。我们基于线性目标、线性约束和固定追索权的稳健优化问题的输入数据,建立了一个量化可调整性的理论框架。我们只做了很少的额外假设。特别是,我们没有假设约束分离性或参数非负性,而这些在研究可调整性的文献中是常见的。这使得我们可以研究一些重要但以前未充分研究的问题,如带有相等约束条件的公式,以及同时带有上限和下限约束条件的问题。在发现静态问题和完全可调整问题的重构之间存在有趣联系的基础上,我们的分析给出了当不确定集合为多面体时,可调整性为零的必要条件和充分条件--以替代定理的形式。基于这一尖锐的表征,我们提供了两个高效的混合整数优化公式来验证零可调性。然后,我们开发了一种构造性方法来量化不确定性集为一般时的可调整性,并由此产生了一种高效、严密的多时间算法来约束可调整性。我们通过理论和数值分析证明了这种算法的高效性和严密性。
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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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