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首页> 外文期刊>International Journal of Computational Science and Engineering >Optimising maximum power output and minimum entropy generation of Atkinson cycle using mutable smart bees algorithm
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Optimising maximum power output and minimum entropy generation of Atkinson cycle using mutable smart bees algorithm

机译:使用可变智能蜂算法优化阿特金森循环的最大功率输出和最小熵生成

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摘要

The purpose of this article is optimising maximum power output (MPO) and minimum entropy generation (MEG) of an Atkinson cycle as a multi-objective constraint thermodynamic problem by a new improved artificial bee colony algorithm which utilises 'mutable smart bee' (MSB) instead of conventional bees. The results have been checked with some of the most common optimising algorithms like Karaboga's original artificial bee colony, bees algorithm (BA), improved particle swarm optimisation (IPSO), Lukasik firefly algorithm (LFFA) and self-adaptive penalty function genetic algorithm (SAPF-GA). Mutable smart bee (MSB) is able to maintain its historical memories for the location and quality of food sources and also a little chance of mutation during the searching process is considered for this bee. These features were found as strong elements for mining data in constraint areas and the results will prove this claim.
机译:本文的目的是通过利用“可变智能蜂”(MSB)的新型改进人工蜂群算法,优化作为多目标约束热力学问题的阿特金森循环的最大功率输出(MPO)和最小熵生成(MEG)。而不是传统的蜜蜂。结果已通过一些最常见的优化算法进行了检验,例如Karaboga的原始人工蜂群,蜜蜂算法(BA),改进的粒子群算法(IPSO),Lukasik萤火虫算法(LFFA)和自适应罚函数遗传算法(SAPF) -GA)。可变智能蜜蜂(MSB)能够保留其对食物来源和质量的历史记忆,并且在搜索过程中也考虑了这种蜜蜂发生突变的几率。这些特征被认为是在约束区域中挖掘数据的强大元素,其结果将证明这一主张。

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