Yun YoungSu, Gen Mitsuo, Erdene Tserengotov Nomin
School of Business Administration, Chosun University, 309 Pilmun-daero, Dong-gu, Gwangju 61452, Republic of Korea.
Fuzzy Logic Systems Institute, Fukuoka and Tokyo University of Science, Tokyo, Japan.
Math Biosci Eng. 2023 Jan;20(1):552-571. doi: 10.3934/mbe.2023025. Epub 2022 Oct 12.
Under addressing global competition, manufacturing companies strive to produce better and cheaper products more quickly. For a complex production system, the design problem is intrinsically a daunting optimization task often involving multiple disciplines, nonlinear mathematical model, and computation-intensive processes during manufacturing process. Here is a reason to develop a high performance algorithm for finding an optimal solution to the engineering design and/or optimization problems. In this paper, a hybrid metaheuristic approach is proposed for solving engineering optimization problems. A genetic algorithm (GA), particle swarm optimization (PSO), and teaching and learning-based optimization (TLBO), called the GA-PSO-TLBO approach, is used and demonstrated for the proposed hybrid metaheuristic approach. Since each approach has its strengths and weaknesses, the GA-PSO-TLBO approach provides an optimal strategy that maintains the strengths as well as mitigates the weaknesses, as needed. The performance of the GA-PSO-TLBO approach is compared with those of conventional approaches such as single metaheuristic approaches (GA, PSO and TLBO) and hybrid metaheuristic approaches (GA-PSO and GA-TLBO) using various types of engineering optimization problems. An additional analysis for reinforcing the performance of the GA-PSO-TLBO approach was also carried out. Experimental results proved that the GA-PSO-TLBO approach outperforms conventional competing approaches and demonstrates high flexibility and efficiency.
在应对全球竞争时,制造公司努力更快地生产出更好、更便宜的产品。对于复杂的生产系统,设计问题本质上是一项艰巨的优化任务,通常涉及多学科、非线性数学模型以及制造过程中的计算密集型流程。这就是开发一种高性能算法以找到工程设计和/或优化问题最优解的原因。本文提出了一种混合元启发式方法来解决工程优化问题。一种遗传算法(GA)、粒子群优化算法(PSO)和基于教学学习的优化算法(TLBO),即GA - PSO - TLBO方法,被用于并展示了所提出的混合元启发式方法。由于每种方法都有其优缺点,GA - PSO - TLBO方法提供了一种最优策略,可根据需要保持优点并减轻缺点。使用各种类型的工程优化问题,将GA - PSO - TLBO方法的性能与传统方法(如单一元启发式方法(GA、PSO和TLBO)以及混合元启发式方法(GA - PSO和GA - TLBO))的性能进行了比较。还对增强GA - PSO - TLBO方法的性能进行了额外分析。实验结果证明,GA - PSO - TLBO方法优于传统的竞争方法,并展示出高灵活性和效率。