Choosing the best evolutionary algorithm to optimize the multiobjective shell-and-tube heat exchanger design problem using PROMETHEE
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Choosing the best evolutionary algorithm to optimize the multiobjective shell-and-tube heat exchanger design problem using PROMETHEE

机译:选择最佳进化算法,以优化多目标壳管热交换器设计问题使用丙烯

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HighlightsPareto solutions for the STHE MOO problem are found using evolutionary algorithms.The performance of each algorithm is analyzed using statistical metrics.The PROMETHEE method is used to choose the best evolutionary algorithm.The experiments show MOPSO as the most robust algorithm.AbstractThe aim of this paper is twofold. First, to find Pareto solutions for minimization of the heat-transfer area and pumping power to solve a shell-and-tube heat exchanger multiobjective optimization problem using the Predator-Prey, Multiobjective Particle Swarm Optimization, and Non-Dominated Sorting Genetic Algorithm II evolutionary algorithms. Each algorithm’s performance is analyzed using the following statistical metrics: Hypervolume, Spacing and Pair-wise Distance. Second, to use the Preference Ranking Organization Method for Enrichment Evaluations decision-making method to choose the best evolutionary algorithms. The criteria used in decision making are the statistical metrics and the annual cost heat exchanger operation. The results show the Multiobjective Particle Swarm Optimization as the most robust algorithm during decision making.]]>
机译:<![cdata [ 亮点 使用进化算法找到了sthe moo问题的Pareto解决方案。 每种算法的性能是使用统计指标进行分析。 Promethee方法用于选择最佳的进化算法。 实验显示MOPSO作为最强大的算法。 抽象 本文的目的是双重的。首先,找到帕累托解决方案以最小化传热面积和泵送电力,使用捕食者 - 猎物,多目标粒子群优化和非主导分类遗传算法II进化的壳管热交换器多目标优化问题。算法。使用以下统计指标进行分析每个算法的性能:超级化,间距和配对距离。其次,为了使用偏好排名组织方法,用于富集评估决策方法选择最佳的进化算法。决策中使用的标准是统计指标和年度成本热交换器操作。结果显示了多目标粒子群优化作为决策过程中最强大的算法。 ]]>

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