Rai Rebika, Dhal Krishna Gopal
Department of Computer Applications, Sikkim University, Sikkim, India.
Department of Computer Science and Application, Midnapore College (Autonomous), Paschim Medinipur, Midnapore, West Bengal India.
Arch Comput Methods Eng. 2023 Apr 12:1-54. doi: 10.1007/s11831-023-09923-y.
There have been many algorithms created and introduced in the literature inspired by various events observable in nature, such as evolutionary phenomena, the actions of social creatures or agents, broad principles based on physical processes, the nature of chemical reactions, human behavior, superiority, and intelligence, intelligent behavior of plants, numerical techniques and mathematics programming procedure and its orientation. Nature-inspired metaheuristic algorithms have dominated the scientific literature and have become a widely used computing paradigm over the past two decades. Equilibrium Optimizer, popularly known as EO, is a population-based, nature-inspired meta-heuristics that belongs to the class of Physics based optimization algorithms, enthused by dynamic source and sink models with a physics foundation that are used to make educated guesses about equilibrium states. EO has achieved massive recognition, and there are quite a few changes made to existing EOs. This article gives a thorough review of EO and its variations. We started with 175 research articles published by several major publishers. Additionally, we discuss the strengths and weaknesses of the algorithms to help researchers find the variant that best suits their needs. The core optimization problems from numerous application areas using EO are also covered in the study, including image classification, scheduling problems, and many others. Lastly, this work recommends a few potential areas for EO research in the future.
受自然界中各种可观察到的事件启发,文献中已经创建并引入了许多算法,例如进化现象、社会生物或主体的行为、基于物理过程的广义原理、化学反应的本质、人类行为、优越性和智能、植物的智能行为、数值技术以及数学编程过程及其方向。在过去二十年中,受自然启发的元启发式算法主导了科学文献,并已成为一种广泛使用的计算范式。平衡优化器(Equilibrium Optimizer),通常称为EO,是一种基于群体、受自然启发的元启发式算法,属于基于物理的优化算法类别,它受到具有物理基础的动态源汇模型的启发,用于对平衡状态进行有根据的猜测。EO已获得广泛认可,并且对现有的EO进行了不少改进。本文对EO及其变体进行了全面综述。我们从几家主要出版商发表的175篇研究文章入手。此外,我们讨论了这些算法的优缺点,以帮助研究人员找到最适合他们需求的变体。该研究还涵盖了使用EO的众多应用领域中的核心优化问题,包括图像分类、调度问题等。最后,这项工作推荐了一些未来EO研究的潜在领域。