4.6 Article

Crystal Structure Algorithm (CryStAl): A Metaheuristic Optimization Method

期刊

IEEE ACCESS
卷 9, 期 -, 页码 71244-71261

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3079161

关键词

Crystals; Optimization; Lattices; Classification algorithms; Mathematical model; Shape; Standards; Crystal Structure Algorithm (CryStAl); lattice; function; metaheuristic; optimization; statistical analysis

资金

  1. University of Tabriz [1615]
  2. University of Liverpool

向作者/读者索取更多资源

Metaheuristics are computational procedures that intelligently guide the search process through efficient exploration of the search space for optimization problems. In response to the increasing challenges posed by large data sets, there is ongoing efforts to enhance existing algorithms and develop new ones. A powerful and efficient metaheuristic algorithm typically relies on rich inspiration sources and precise mathematical models.
Metaheuristics are computational procedures that intelligently lead the search process through the efficient exploration of the search space associated with an optimization problem. With the progressive outburst of problems with large data sets in various fields, there is an ongoing quest for enhancing existing metaheuristic algorithms as well as developing new ones with greater accuracy and efficiency. In general, a powerful and efficient metaheuristic algorithm is based on a rich inspiration source, implemented effectively through a precise mathematical model. Aiming to develop a highly efficient, nature-inspired optimization algorithm, here we propose a novel metaheuristic called Crystal Structure Algorithm (CryStAl). This method is chiefly inspired by the principles underlying the formation of crystal structures from the addition of the basis to the lattice points, which is a natural phenomenon that can be seen in the symmetric arrangement of constituents (i.e. atoms, molecules, or ions) in crystalline minerals such as quartz. A total number of 239 mathematical functions which are categorized into four different groups are utilized to evaluate the overall performance of the proposed method. To validate the results of this novel algorithm, 12 different classical and modern metaheuristic algorithms are selected from the literature. The minimum, mean, and standard deviation values alongside the number of function evaluations for CryStAl and the other metaheuristics for a specific tolerance are calculated and presented accordingly. The obtained results, further supported by a complete statistical analysis, demonstrated that the proposed algorithm is capable of providing very competitive results, outperforming the other metaheuristics in most cases.

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