Robust optimization approximation for joint chance constrained optimization problem

被引:0
|
作者
Yuan Yuan
Zukui Li
Biao Huang
机构
[1] University of Alberta,Department of Chemical and Materials Engineering
来源
关键词
Robust optimization; Joint chance constrained problem; Uncertainty set; Tractable approximation;
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学科分类号
摘要
Chance constraint is widely used for modeling solution reliability in optimization problems with uncertainty. Due to the difficulties in checking the feasibility of the probabilistic constraint and the non-convexity of the feasible region, chance constrained problems are generally solved through approximations. Joint chance constrained problem enforces that several constraints are satisfied simultaneously and it is more complicated than individual chance constrained problem. This work investigates the tractable robust optimization approximation framework for solving the joint chance constrained problem. Various robust counterpart optimization formulations are derived based on different types of uncertainty set. To improve the quality of robust optimization approximation, a two-layer algorithm is proposed. The inner layer optimizes over the size of the uncertainty set, and the outer layer optimizes over the parameter t which is used for the indicator function upper bounding. Numerical studies demonstrate that the proposed method can lead to solutions close to the true solution of a joint chance constrained problem.
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页码:805 / 827
页数:22
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