Turgut Oguz Emrah, Genceli Hadi, Asker Mustafa, Çoban Mustafa Turhan, Akrami Mohammad
Department of Industrial Engineering, İzmir Bakircay University, Izmir, 35665, Turkey.
Faculty of Mechanical Engineering, Yıldız Technical University, 34349, Istanbul, Turkey.
Sci Rep. 2025 Apr 1;15(1):11112. doi: 10.1038/s41598-025-93524-1.
This study proposes a Hierarchical Manta-Ray Foraging Optimization (HMRFO) algorithm for calculating the equilibrium points of chemical reactions. To improve the solution diversity in the trial Manta-Ray population and enhance the general optimization effectivity of the algorithm, an ordered hierarchy is integrated into the original algorithm, taking into account the efficient search strategies of Elite-Opposition learning, Dynamic Opposition Learning, and Quantum search operator. Within this proposed concept, the Manta-ray population is divided into three main sub-populations: the Elite Oppositional learning scheme manipulates top elite individuals, Dynamic Oppositional learning search equations update average population members, and quantum-based learning equations process the worst members. The improved MRFO is applied to a hundred 30D and 500D optimization benchmark functions, and results have been compared to those obtained from state-of-art metaheuristic optimizers. Then, the proposed optimizer solved twenty-eight test problems previously employed in CEC-2013 competitions, and corresponding results were benchmarked against well-reputed metaheuristics. This research study also suggests a novel mathematical model for solving chemical equilibrium problems for ideal gas mixtures. Four challenging case studies related to chemical equilibrium problems have been performed by the HMRFO for varying test conditions, and it is observed that HMRFO can effectively cope with the tedious nonlinearities and complexities of the governing thermodynamic models associated with solving chemical equilibrium problems for gaseous reacting mixture components.
本研究提出了一种用于计算化学反应平衡点的分层蝠鲼觅食优化(HMRFO)算法。为了提高试验蝠鲼种群中的解多样性并增强算法的总体优化有效性,在原始算法中集成了一个有序层次结构,同时考虑了精英对抗学习、动态对抗学习和量子搜索算子的高效搜索策略。在这个提出的概念中,蝠鲼种群被分为三个主要子种群:精英对抗学习方案操纵顶级精英个体,动态对抗学习搜索方程更新平均种群成员,基于量子的学习方程处理最差成员。改进后的MRFO应用于一百个30维(30D)和500维(500D)的优化基准函数,并将结果与从最先进的元启发式优化器获得的结果进行了比较。然后,所提出的优化器解决了先前在CEC - 2013竞赛中使用的28个测试问题,并将相应结果与著名的元启发式算法进行了基准比较。本研究还提出了一种用于求解理想气体混合物化学平衡问题的新型数学模型。HMRFO针对不同的测试条件进行了四个与化学平衡问题相关的具有挑战性的案例研究,并且观察到HMRFO能够有效地应对与求解气态反应混合物组分化学平衡问题相关的控制热力学模型的繁琐非线性和复杂性。