Majid Sohrabi, Amir M. Fathollahi-Fard, V. A. Gromov
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引用次数: 0
摘要
摘要遗传算法(GA)能够探索不同的解空间、处理各种表征、利用并行性、保留好的解决方案、适应不断变化的动态、处理组合多样性以及提供启发式搜索,因此在解决组合优化问题方面以高效著称。然而,过早收敛、缺乏特定问题的知识以及交叉和突变算子的随机性等局限性使得 GA 在寻找最优解方面普遍效率低下。为了解决这些局限性,本文从基因工程概念中汲取灵感,提出了一种新的元启发式算法,即遗传工程算法(GEA)。GEA 重新设计了传统的 GA,同时结合了新的搜索方法,在现有基因的基础上分离、纯化、插入和表达新基因,从而产生所需的性状,并根据所选基因生成特定的染色体。在基准实例上与最先进算法的比较评估证明了 GEA 的优越性能,展示了它作为组合优化问题的创新和高效解决方案的潜力。
Genetic Engineering Algorithm (GEA): An Efficient Metaheuristic Algorithm for Solving Combinatorial Optimization Problems
Genetic Algorithms (GAs) are known for their efficiency in solving combinatorial optimization problems, thanks to their ability to explore diverse solution spaces, handle various representations, exploit parallelism, preserve good solutions, adapt to changing dynamics, handle combinatorial diversity, and provide heuristic search. However, limitations such as premature convergence, lack of problem-specific knowledge, and randomness of crossover and mutation operators make GAs generally inefficient in finding an optimal solution. To address these limitations, this paper proposes a new metaheuristic algorithm called the Genetic Engineering Algorithm (GEA) that draws inspiration from genetic engineering concepts. GEA redesigns the traditional GA while incorporating new search methods to isolate, purify, insert, and express new genes based on existing ones, leading to the emergence of desired traits and the production of specific chromosomes based on the selected genes. Comparative evaluations against state-of-the-art algorithms on benchmark instances demonstrate the superior performance of GEA, showcasing its potential as an innovative and efficient solution for combinatorial optimization problems.
期刊介绍:
Automation and Remote Control is one of the first journals on control theory. The scope of the journal is control theory problems and applications. The journal publishes reviews, original articles, and short communications (deterministic, stochastic, adaptive, and robust formulations) and its applications (computer control, components and instruments, process control, social and economy control, etc.).