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首页> 外文期刊>Numerical Heat Transfer, Part A. Application: An International Journal of Computation and Methodology >Comparison between five stochastic global search algorithms for optimizing thermoelectric generator designs
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Comparison between five stochastic global search algorithms for optimizing thermoelectric generator designs

机译:五个随机全局搜索算法的比较优化热电发电机设计

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摘要

In this study, the best settings of five heuristics are determined for solving a mixed-integer non-linear multi-objective optimization problem. The algorithms treated in the article are: ant colony optimization, genetic algorithm, particle swarm optimization, differential evolution, and teaching-learning basic algorithm. The optimization problem consists in optimizing the design of a thermoelectric device, based on a model available in literature. Results showed that the inner settings can have different effects on the algorithm performance criteria depending on the algorithm. A formulation based on the weighted sum method is introduced for solving the multiobjective optimization problem with optimal settings. It was found that the five heuristic algorithms have comparable performances. Differential evolution generated the highest number of non-dominated solutions in comparison with the other algorithms.
机译:在这项研究中,确定五种启发式的最佳设置,用于解决混合整数非线性多目标优化问题。 文章中处理的算法是:蚁群优化,遗传算法,粒子群优化,差分演进和教学基础算法。 优化问题在于基于文献中可用的型号优化热电设备的设计。 结果表明,根据算法,内部设置可能对算法性能标准产生不同的影响。 引入了基于加权和方法的制剂,用于解决最佳设置的多目标优化问题。 发现五种启发式算法具有可比性的性能。 与其他算法相比,差分演变产生了最高数量的非主导解决方案。

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