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Optimisation of engineering system using a novel search algorithm: the Spacing Multi-Objective Genetic Algorithm

机译:使用新型搜索算法的工程系统优化:间距多目标遗传算法

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摘要

A large number of real-world issues are among difficult and multi-objective problems. Recently, it has been recognised that the evolutionary algorithms optimise well these types of problems. This paper proposes a novel multi-objective search algorithm that is called the Spacing Multi-Objective Genetic Algorithm (Spacing-MOGA). The innovation of the proposed Spacing-MOGA lies in a new survival selection algorithm called Spacing Distance. This research eliminates some of the disadvantages of other algorithms such as the Non-dominated Sorting Genetic Algorithm II (NSGAII). The proposed Spacing-MOGA is applied to five test benchmark functions and also to the design of I-Beam. Then, the results are compared with other algorithms such as NSGAII, Adaptive Weighted Particle Swarm Optimisation (AWPSO), and Non-dominated Sorting Particle Swarm Optimiser (NSPSO) based on the test metrics: Hypervolume, Spacing, Spread, and Generational Distance. Furthermore, for further demonstration of the ability of the proposed Spacing-MOGA, the experimental results are evaluated by the t-test.
机译:许多现实世界的问题都属于困难和多目标的问题。最近,已经认识到进化算法很好地优化了这些类型的问题。本文提出了一种新颖的多目标搜索算法,称为空间多目标遗传算法(Spacing-MOGA)。提出的Spacing-MOGA的创新之处在于一种新的生存选择算法,称为Spacing Distance。该研究消除了其他算法的一些缺点,例如非支配排序遗传算法II(NSGAII)。拟议的Spacing-MOGA可应用于五个测试基准功能以及I型光束的设计。然后,将结果与其他算法进行比较,例如NSGAII,自适应加权粒子群优化(AWPSO)和基于支配量的非支配排序粒子群优化器(NSPSO):超量,间距,传播和世代距离。此外,为了进一步证明所提出的Spacing-MOGA的能力,通过t检验评估了实验结果。

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