Effective Budget of Uncertainty for Classes of Robust Optimization

Milad Dehghani Filabadi, H. Mahmoudzadeh
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引用次数: 15

Abstract

Robust optimization (RO) tackles data uncertainty by optimizing for the worst-case scenario of an uncertain parameter and, in its basic form, is sometimes criticized for producing overly conservative solutions. To reduce the level of conservatism in RO, one can use the well-known budget-of-uncertainty approach, which limits the amount of uncertainty to be considered in the model. In this paper, we study a class of problems with resource uncertainty and propose a robust optimization methodology that produces solutions that are even less conservative than the conventional budget-of-uncertainty approach. We propose a new tractable two-stage robust optimization approach that identifies the “ineffective” parts of the uncertainty set and optimizes for the “effective” worst-case scenario only. In the first stage, we identify the effective range of the uncertain parameter, and in the second stage, we provide a formulation that eliminates the unnecessary protection for the ineffective parts and, hence, produces less conservative solutions and provides intuitive insights on the trade-off between robustness and solution conservatism. We demonstrate the applicability of the proposed approach using a power dispatch optimization problem with wind uncertainty. We also provide examples of other application areas that would benefit from the proposed approach.
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一类鲁棒优化的不确定性有效预算
鲁棒优化(RO)通过针对不确定参数的最坏情况进行优化来解决数据的不确定性,并且在其基本形式中,有时因产生过于保守的解决方案而受到批评。为了降低RO中的保守性水平,可以使用众所周知的不确定性预算方法,该方法限制了模型中要考虑的不确定性数量。在本文中,我们研究了一类具有资源不确定性的问题,并提出了一种稳健的优化方法,该方法产生的解甚至不如传统的不确定性预算方法保守。我们提出了一种新的可处理的两阶段鲁棒优化方法,该方法识别不确定性集的“无效”部分,并仅针对“有效”的最坏情况进行优化。在第一阶段,我们确定了不确定参数的有效范围,在第二阶段,我们提供了一个公式,该公式消除了对无效零件的不必要保护,因此产生了不太保守的解决方案,并对稳健性和解决方案保守性之间的权衡提供了直观的见解。我们使用具有风不确定性的电力调度优化问题来证明所提出的方法的适用性。我们还提供了将从拟议方法中受益的其他应用领域的例子。
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