非线性不确定不等式的全局鲁棒优化

A. Ben-Tal, R. Brekelmans, D. Hertog, J. Vial
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引用次数: 33

摘要

鲁棒优化是一种可以应用于受问题参数不确定性影响的问题的方法。该问题的经典鲁棒对应物(RC)要求解对于所谓的不确定性集中的所有不确定参数值都是可行的,而对该不确定性集中以外的参数值不提供保证。全球化鲁棒对应物(GRC)通过允许在更大的不确定性集中控制约束违反来扩展这一思想。约束违反由参数到原始不确定性集的距离来控制。我们推导了可处理的GRC,扩展了文献中的初始GRC:我们的GRC适用于非线性约束,而不仅仅是线性或二次约束,并且GRC在不确定性集和距离测量函数方面都更加灵活,用于控制约束违反。此外,我们提出了一种GRC方法,可用于在目标值和几个鲁棒性度量之间提供扩展的权衡概述。
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Globalized Robust Optimization for Nonlinear Uncertain Inequalities
Robust optimization is a methodology that can be applied to problems that are affected by uncertainty in the problem’s parameters. The classical robust counterpart (RC) of the problem requires the solution to be feasible for all uncertain parameter values in a so-called uncertainty set, and offers no guarantees for parameter values outside this uncertainty set. The globalized robust counterpart (GRC) extends this idea by allowing controlled constraint violations in a larger uncertainty set. The constraint violations are controlled by the distance of the parameter to the original uncertainty set. We derive tractable GRCs that extend the initial GRCs in the literature: our GRC is applicable to nonlinear constraints instead of only linear or conic constraints, and the GRC is more flexible with respect to both the uncertainty set and distance measure function, which are used to control the constraint violations. In addition, we present a GRC approach that can be used to provide an extended trade-off overview between the objective value and several robustness measures.
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