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A new approach based on possibilistic programming technique and fractile optimization for bilevel programming in a hybrid uncertain circumstance

机译:一种新方法,基于杂交不确定环境中的双纤维编程的方法和散发优化

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摘要

Fuzzy random bilevel programming is very important for modeling hierarchical decision processes consisting of two decision makers with a hybrid uncertainty of fuzziness and randomness. This type of problem is usually much more difficult to handle than either purely fuzzy bilevel programming or purely stochastic bilevel programming due to complexity of hybrid uncertainty and NP-hardness of bilevel programming. In this paper, a novel approach based on Me-based possibilistic programming technique and fractile optimization is proposed to transform and cope with the fuzzy random bilevel programming problem. On the basis of the Me-based possibilistic programming method, the original problem is first converted into a Me-based bilevel chance constrained programming model. Then fractile criterion optimization and probabilistic chance constrained conditions are employed to transform the Me-based bilevel chance constrained model into an equivalent deterministic bilevel nonlinear programming problem. Furthermore, different satisfactory solutions associated with varying optimistic-pessimistic attitudes of the decision makers can be searched by the fuzzy interactive solution approach, which are helpful for the decision makers to gain more desirable information under uncertainty. Finally, several numerical examples are provided to illustrate the feasibility of the proposed model and solution methodology.
机译:模糊的随机贝尔编程对于建模由两个决策者组成的分层决策过程非常重要,该决策程序包括模糊和随机性的混合不确定度。由于混合不确定性的复杂性和Bilevel编程的NP硬度,这种类型的问题通常更难以处理而不是纯粹模糊的贝尔编程或纯的随机胆纤维编程。本文提出了一种基于ME基于ME的可能性编程技术和柔韧优化的新方法,以改变和应对模糊随机贝芯编程问题。在基于ME的可能性编程方法的基础上,首先将原始问题转换为基于ME的BileVel机会约束编程模型。然后,采用散发性标准优化和概率机会约束条件来将基于ME的彼此的彼此机会约束模型转换为等效的确定性彼得伦非线性编程问题。此外,可以通过模糊的交互式解决方案方法来搜索与决策者不同乐观的悲观态度相关的不同令人满意的解决方案,这有助于决策者在不确定性下获得更可取的信息。最后,提供了几个数值示例以说明所提出的模型和解决方案方法的可行性。

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