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A flexible programming approach based on intuitionistic fuzzy optimization and geometric programming for solving multi-objective nonlinear programming problems

机译:基于直觉模糊优化和几何规划的柔性规划方法求解多目标非线性规划问题

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In this paper, a novel method is proposed to support the process of solving multi-objective nonlinear programming problems subject to strict or flexible constraints. This method assumes that the practical problems are expressed in the form of geometric programming problems. Integrating the concept of intuitionistic fuzzy sets into the solving procedure, a rich structure is provided which can include the inevitable uncertainties into the model regarding different objectives and constraints. Another important feature of the proposed method is that it continuously interacts with the decision maker. Thus, the decision maker could learn about the problem, thereby a compromise solution satisfying his/hers preferences could be obtained. Further, a new two-step geometric programming approach is introduced to determine Pareto-optimal compromise solutions for the problems defined during different iterative steps. Employing the compensatory operator of "weighted geometric mean", the first step concentrates on finding an intuitionistic fuzzy efficient compromise solution. In the cases where one or more intuitionistic fuzzy objectives are fully achieved, a second geometric programming model is developed to improve the resulting compromise solution. Otherwise, it is concluded that the resulting solution vectors simultaneously satisfy both of the conditions of intuitionistic fuzzy efficiency and Pareto-optimality. The models forming the proposed solving method are developed in a way such that, the posynomiality of the defined problem is not affected. This property is of great importance when solving nonlinear programming problems. A numerical example of multi-objective nonlinear programming problem is also used to provide a better understanding of the proposed solving method. (c) 2017 Published by Elsevier Ltd.
机译:本文提出了一种新的方法来支持求解严格或灵活约束下的多目标非线性规划问题的过程。该方法假定实际问题以几何规划问题的形式表示。将直觉模糊集的概念整合到求解过程中,提供了丰富的结构,该结构可以将不可避免的不确定性纳入模型中有关不同目标和约束的情况。所提出方法的另一个重要特征是它与决策者不断地相互作用。因此,决策者可以了解该问题,从而可以获得满足其偏好的折衷解决方案。此外,引入了一种新的两步几何编程方法来确定在不同迭代步骤中定义的问题的帕累托最优折衷解决方案。运用“加权几何平均数”的补偿算子,第一步着重于寻找一种直观的模糊有效折衷解决方案。在完全实现一个或多个直觉模糊目标的情况下,将开发第二种几何规划模型以改善所得的折衷解决方案。否则,得出结论,所得的解向量同时满足直觉模糊效率和帕累托最优性的两个条件。形成提出的求解方法的模型以不影响所定义问题的正定性的方式进行开发。解决非线性编程问题时,此属性非常重要。还使用一个多目标非线性规划问题的数值示例来更好地理解所提出的求解方法。 (c)2017年由Elsevier Ltd.出版

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