使用随机模糊集的鲁棒优化方案

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

摘要

本文研究了目标函数不确定的鲁棒优化问题。不确定性通过指定一个场景集来建模,该场景集包含有限数量的目标函数系数,称为场景。场景集中的附加知识可以通过在场景的幂集上定义的质量函数来表示。该质量函数定义了一个信念函数,该信念函数推导出场景集中的一系列概率分布。然后可以使用广义的Hurwicz准则,即上下期望的凸组合来解决不确定问题。近年来,可能性理论被应用于基于信念函数的不确定性模型的扩展。即,信念函数可以由一个随机模糊集来诱导。在本文中,我们展示了如何将这个广义模型应用于鲁棒优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust optimization with scenarios using random fuzzy sets
In this paper a robust optimization problem with uncertain objective function is considered. The uncertainty is modeled by specifying a scenario set, containing a finite number of objective function coefficients, called scenarios. Additional knowledge in scenario set can be represented by using a mass function defined on the power set of scenarios. This mass function defines a belief function, which in turn induces a family of probability distributions in scenario set. One can then use a generalized Hurwicz criterion, i.e. a convex combination of the upper and lower expectations, to solve the uncertain problem. Recently, possibility theory has been applied to extend the model of uncertainty based on belief functions. Namely, belief function can be induced by a random fuzzy set. In this paper we show how this generalized model can be applied to robust optimization.
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