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Robust nonlinear optimization with conic representable uncertainty set

机译:具有圆锥形可表示不确定性集的鲁棒非线性优化

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摘要

The robust optimization methodology is known as a popular method dealing with optimization problems with uncertain data and hard constraints. This methodology has been applied so far to various convex conic optimization problems where only their inequality constraints are subject to uncertainty. In this paper, the robust optimization methodology is applied to the general nonlinear programming (NLP) problem involving both uncertain inequality and equality constraints. The uncertainty set is defined by conic representable sets, the proposed uncertainty set is general enough to include many uncertainty sets, which have been used in literature, as special cases. The robust counterpart (RC) of the general NLP problem is approximated under this uncertainty set. It is shown that the resulting approximate RC of the general NLP problem is valid in a small neighborhood of the nominal value. Furthermore a rather general class of programming problems is posed that the robust counterparts of its problems can be derived exactly under the proposed uncertainty set. Our results show the applicability of robust optimization to a wider area of real applications and theoretical problems with more general uncertainty sets than those considered so far. The resulting robust counterparts which are traditional optimization problems make it possible to use existing algorithms of mathematical optimization to solve more complicated and general robust optimization problems.
机译:健壮的优化方法论是处理数据不确定和约束严格的优化问题的流行方法。迄今为止,该方法已应用于各种凸圆锥优化问题,其中仅其不等式约束受到不确定性的影响。本文将鲁棒优化方法应用于涉及不确定性不等式和等式约束的一般非线性规划(NLP)问题。不确定性集由圆锥可表示集定义,所提出的不确定性集具有足够的通用性,可以包括许多特殊情况下已在文献中使用的不确定性集。在这种不确定性集下,一般NLP问题的鲁棒对应(RC)近似。结果表明,一般NLP问题的结果近似RC在标称值的较小邻域内有效。此外,提出了一类相当普遍的编程问题,即可以在建议的不确定性集下精确得出其问题的可靠对应项。我们的结果表明,健壮性优化的适用性比迄今为止所考虑的要大,它可以应用于更广泛的实际应用和具有更多不确定性集合的理论问题。作为传统优化问题的结果鲁棒对等物使得可以使用现有的数学优化算法来解决更复杂且更通用的鲁棒优化问题。

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