首页> 外文期刊>Arabian Journal for Science and Engineering. Section A, Sciences >Multi-Agent Metaheuristic Framework for Thermal Design Optimization of a Shell and Tube Evaporator Operated with R134a/Al_2O_3 Nanorefrigerant
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Multi-Agent Metaheuristic Framework for Thermal Design Optimization of a Shell and Tube Evaporator Operated with R134a/Al_2O_3 Nanorefrigerant

机译:用R134A / AL_2O_3纳米FRANGER运行的壳体和管蒸发器的多智能设计优化框架

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This study proposes a brand new practical multi-agent optimization framework based on an intelligent collaborative interaction between some prevalent metaheuristic algorithms available in the literature. Proposed optimization architecture is built on widely known and reputed master-slave model assisted with some useful and promising modifications. Conventional stochastic-based optimization algorithms including Particle Swarm Optimization, Crow Search Algorithm, Differential Evolution, and Global Best Algorithm are structurally coordinated to form the slave populations, while the best solutions obtained from these slave subpopulations are forming the master individuals. Contrary to the traditional master-slave approach, master individuals in this proposed framework becomes more functional by performing an extensive local search over numerical results of the best slave individuals. Main aim in constructing such a highly devised multi-agent algorithm is to maintain an effective communication domain between slave individuals (agents) as well as to enhance the capabilities of the cooperative search mechanism through the systematic combination of metaheuristics. Optimization performance of the proposed framework is tested on a suite of 29 optimization benchmark functions. Proposed optimization method surpasses the compared optimization algorithms in 27 out of 29 problems and proves its solution efficiency in multidimensional optimization problems. Then, proposed strategy is applied on single and multi-objective thermal design of a shell and tube evaporator operated with R134a/Al2O3 nanorefrigerant. It is seen that maximum overall heat transfer coefficient is increased by 18.1% and minimum total cost of heat exchanger is reduced by 5.1% in the case of incorporating Al2O3 nanoparticles into R134a.
机译:本研究提出了一种全新的实用多代理优化框架,基于文献中可用的一些普遍的成群质算法之间的智能协作互动。建议的优化架构建立在广泛的知名和知识的主从模型上,辅助一些有用和有希望的修改。传统的基于随机的优化算法包括粒子群优化,乌鸦搜索算法,差分演化和全局最佳算法在结构地协调以形成从群体,而从这些从属群获得的最佳溶液形成母体个体。与传统的主从方法相反,这一提议的框架中的主人通过执行广泛的本地搜索最佳从属个体的数字结果而变得更加奏。主要目的在于构建这种高度设计的多代理算法是在从属奴隶(代理)之间的有效通信域,以及通过半导体的系统组合提高合作搜索机制的能力。在29个优化基准函数套件上测试了所提出的框架的优化性能。所提出的优化方法超越了27个问题中的27个优化算法,并证明了其在多维优化问题中的解决方案效率。然后,拟议的策略应用于用R134A / Al2O3纳米Frfigher操作的壳体和管蒸发器的单个和多目标热设计。可以看出,在将Al2O3纳米颗粒掺入R134a的情况下,最大总传热系数增加18.1%,热交换器的总成本减少了5.1%。

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