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Preference-Based Multi-Objective Particle Swarm Optimization Using Desirabilities

机译:基于期望的基于偏好的多目标粒子群优化

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The integration of experts' preferences is an important aspect in multi-objective optimization. Usually, one out of a set of Pareto optimal solutions has to be chosen based on expert knowledge. A combination of multi-objective particle swarm optimization (MOPSO) with the desirability concept is introduced to efficiently focus on desired and relevant regions of the true Pareto front of the optimization problem which facilitates the solution selection process. Desirability functions of the objectives are optimized, and the desirability index is used for selecting the global best particle in each iteration. The resulting MOPSO variant DF-MOPSO in most cases exclusively generates solutions in the desired area of the Pareto front. Approximations of the whole Pareto front result in cases of misspecified desired regions.
机译:专家偏好的整合是多目标优化中的重要方面。通常,必须根据专家知识从一组Pareto最佳解决方案中选择一个。引入了多目标粒子群优化(MOPSO)与可取性概念的组合,以有效地关注优化问题的真实Pareto前沿的所需区域和相关区域,从而简化了解决方案的选择过程。目标的合意性函数得到优化,合意性指标用于在每次迭代中选择全局最佳粒子。在大多数情况下,所得的MOPSO变体DF-MOPSO仅在帕累托前沿的所需区域生成解决方案。如果指定的期望区域不正确,则整个Pareto前沿都将逼近。

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