Gharehchopogh Farhad Soleimanian, Ucan Alaettin, Ibrikci Turgay, Arasteh Bahman, Isik Gultekin
Department of Computer Engineering, Urmia Branch, Islamic Azad University, Urmia, Iran.
Department of Computer Engineering, Osmaniye Korkut Ata University, Osmaniye, Turkey.
Arch Comput Methods Eng. 2023;30(4):2683-2723. doi: 10.1007/s11831-023-09883-3. Epub 2023 Jan 12.
Meta-heuristic algorithms have a high position among academic researchers in various fields, such as science and engineering, in solving optimization problems. These algorithms can provide the most optimal solutions for optimization problems. This paper investigates a new meta-heuristic algorithm called Slime Mould algorithm (SMA) from different optimization aspects. The SMA algorithm was invented due to the fluctuating behavior of slime mold in nature. It has several new features with a unique mathematical model that uses adaptive weights to simulate the biological wave. It provides an optimal pathway for connecting food with high exploration and exploitation ability. As of 2020, many types of research based on SMA have been published in various scientific databases, including IEEE, Elsevier, Springer, Wiley, Tandfonline, MDPI, etc. In this paper, based on SMA, four areas of hybridization, progress, changes, and optimization are covered. The rate of using SMA in the mentioned areas is 15, 36, 7, and 42%, respectively. According to the findings, it can be claimed that SMA has been repeatedly used in solving optimization problems. As a result, it is anticipated that this paper will be beneficial for engineers, professionals, and academic scientists.
元启发式算法在科学与工程等各个领域的学术研究人员解决优化问题的过程中占据着重要地位。这些算法能够为优化问题提供最优解。本文从不同的优化角度对一种名为黏菌算法(SMA)的新型元启发式算法进行了研究。黏菌算法是受自然界中黏菌波动行为的启发而发明的。它具有若干新特性,拥有独特的数学模型,该模型使用自适应权重来模拟生物波。它为连接食物提供了一条具有高探索和利用能力的最优路径。截至2020年,基于黏菌算法的多种研究已发表在包括IEEE、爱思唯尔、施普林格、威利、泰勒弗朗西斯在线、MDPI等在内的各种科学数据库中。本文基于黏菌算法,涵盖了杂交、进展、变化和优化四个方面。黏菌算法在上述领域的使用比例分别为15%、36%、7%和42%。根据研究结果,可以宣称黏菌算法已被反复用于解决优化问题。因此,预计本文将对工程师、专业人士和学术科学家有所助益。