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A General Iterative Procedure of the Non-Numerical Ranking Preferences Method for Multiple Objective Decision Making

机译:多目标决策的非数值排序偏好方法的一般迭代过程

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Multiple objective evolutionary algorithms (MOEAs), which are biologically-inspired optimization methods, have become popular approaches to solve problems with multiple objective functions. With the use of MOEAs, multiple objective optimization becomes a two-part problem. First, the multiple objective optimization problem needs to be formulated and successfully solved using an MOEA. Then, a non- dominated set -also known as efficient or Pareto frontier- needs to be analyzed to select a solution to the problem. This can represent a challenging task to the decision-maker because this set can contain a large number of solutions. This decision- making stage is usually known as the post-Pareto analysis stage. This paper presents the generalization of a post-Pareto optimality method known as the non-numerical ranking preferences (NNRP) method originally proposed by Taboadaet al. (2007). This method can help decision makers reduce the number of design possibilities to small subsets that clearly reflect their objective function preferences. Previous research has only presented the application of the NNRP method using three and four objective functions but had not been generalized to the case ofnobjective functions. The present paper expands the NNRP method to be able to consider multiple objective optimization problems withnnumber of objective functions.
机译:多目标进化算法(MOEA)是生物学启发的优化方法,已成为解决具有多目标函数问题的流行方法。通过使用MOEA,多目标优化成为两部分的问题。首先,需要制定并使用MOEA成功解决多目标优化问题。然后,需要分析一个非支配集合(也称为有效边界或帕累托前沿)来选择问题的解决方案。这对于决策者可能是一项艰巨的任务,因为此集合可能包含大量解决方案。这个决策阶段通常称为后帕累托分析阶段。本文介绍了一种由最初的Taboadaet等人提出的称为非数值排名偏好(NNRP)的后帕累托最优方法。 (2007)。这种方法可以帮助决策者将设计可能性的数量减少到清楚反映其目标功能偏好的小子集。先前的研究仅介绍了使用三个和四个目标函数的NNRP方法的应用,但尚未推广到非目标函数的情况。本文将NNRP方法扩展为能够考虑多个目标函数而没有多个目标优化问题。

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