具有Copula函数的鲁棒可能性优化

R. Guillaume, A. Kasperski, P. Zieliński
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引用次数: 1

摘要

本文研究了一个用概率分布建模的目标函数系数不确定的线性优化问题。采用模糊鲁棒优化框架进行求解。即使目标值低于给定阈值的必要性程度最大化。本文的目的是利用一组联结函数来考虑客观系数之间的依赖关系。结果表明,该方法限制了模糊鲁棒优化的保守性,较好地评价了目标函数值的可能性分布,且不增加问题的复杂性。
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Robust Possibilistic Optimization with Copula Function
This paper deals with a linear optimization problem with uncertain objective function coefficients modeled by possibility distributions. The fuzzy robust optimization framework is applied to compute a solution. Namely, the necessity degree that the objective value is lower than a given threshold is maximized. The aim of this paper is to take the knowledge on dependencies between the objective coefficients into account by means of a family of copula functions. It is shown that this new approach limits the conservatism of fuzzy robust optimization, better evaluates possibility distributions for the values of the objective function and do not increase the complexity of the problem.
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