Chaotic Mountain Gazelle Optimizer Improved by Multiple Oppositional-Based Learning Variants for Theoretical Thermal Design Optimization of Heat Exchangers Using Nanofluids.

IF 3.9 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Oguz Emrah Turgut, Mustafa Asker, Hayrullah Bilgeran Yesiloz, Hadi Genceli, Mohammad Al-Rawi
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Abstract

This theoretical research study proposes a novel hybrid algorithm that integrates an improved quasi-dynamical oppositional learning mutation scheme into the Mountain Gazelle Optimization method, augmented with chaotic sequences, for the thermal and economical design of a shell-and-tube heat exchanger operating with nanofluids. The Mountain Gazelle Optimizer is a recently developed metaheuristic algorithm that simulates the foraging behaviors of Mountain Gazelles. However, it suffers from premature convergence due to an imbalance between its exploration and exploitation mechanisms. A two-step improvement procedure is implemented to enhance the overall search efficiency of the original algorithm. The first step concerns substituting uniformly random numbers with chaotic numbers to refine the solution quality to better standards. The second step is to develop a novel manipulation equation that integrates different variants of quasi-dynamic oppositional learning search schemes, guided by a novel intelligently devised adaptive switch mechanism. The efficiency of the proposed algorithm is evaluated using the challenging benchmark functions from various CEC competitions. Finally, the thermo-economic design of a shell-and-tube heat exchanger operated with different nanoparticles is solved by the proposed improved metaheuristic algorithm to obtain the optimal design configuration. The predictive results indicate that using water + SiO2 instead of ordinary water as the refrigerant on the tube side of the heat exchanger reduces the total cost by 16.3%, offering the most cost-effective design among the configurations compared. These findings align with the demonstration of how biologically inspired metaheuristic algorithms can be successfully applied to engineering design.

基于多个对立学习变量改进的混沌山羚优化器用于纳米流体换热器理论热设计优化。
本理论研究提出了一种新的混合算法,该算法将改进的准动态对立学习突变方案集成到Mountain Gazelle优化方法中,并增加了混沌序列,用于纳米流体壳管式换热器的热经济性设计。Mountain Gazelle Optimizer是最近开发的一种模拟Mountain Gazelle觅食行为的元启发式算法。但由于勘探与开发机制的不平衡,存在过早收敛的问题。为了提高原算法的整体搜索效率,对原算法进行了两步改进。第一步是用混沌数代替均匀随机数,使解的质量达到更好的标准。第二步是开发一种新的操作方程,该方程集成了准动态对立学习搜索方案的不同变体,并由一种新的智能设计的自适应开关机制指导。利用来自各种CEC竞赛的具有挑战性的基准函数来评估所提出算法的效率。最后,采用改进的元启发式算法求解不同纳米颗粒运行的管壳式换热器的热经济性设计,得到最优设计构型。预测结果表明,在换热器管侧采用水+ SiO2代替普通水作为制冷剂,总成本降低16.3%,是两种配置中性价比最高的设计方案。这些发现与生物学启发的元启发式算法如何成功应用于工程设计的演示相一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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