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Characterization of Robust Solution Quadratically Constrained Quadratic Optimization Problem Subjected to Data Uncertainty

机译:鲁棒解决方案的特征在二次约束对数据不确定性进行的二次优化问题

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Robust Optimization (RO) arises in two stages of optimization, first level for maximizing over the uncertain data and second level for minimizing over the feasible set. It is the most suitable mathematical optimization procedure to solve real-life problem models. In the present work, we characterize robust solutions for both homogeneous and non-homogeneous quadratically constrained quadratic optimization problem where constraint function and cost function are uncertain. Moreover, we discuss about optimistic dual and strong robust duality of the considered uncertain quadratic optimization problem. Finally, we complete this work with an example to illustrate our solution method.
机译:鲁棒优化(RO)在优化的两个阶段出现,首先用于最大限度地通过不确定的数据和第二级,以最小化可行集合。它是解决现实生活模型的最合适的数学优化程序。在本作工作中,我们为均匀和非同质的二次约束的强大解决方案表征,其中约束函数和成本函数不确定。此外,我们讨论了乐观的双重和强大的强大二元性,所考虑的不确定二次优化问题。最后,我们完成了这项工作,以说明我们的解决方案方法。

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