4.6 Article

CDDO-HS: Child Drawing Development Optimization-Harmony Search Algorithm

期刊

APPLIED SCIENCES-BASEL
卷 13, 期 9, 页码 -

出版社

MDPI
DOI: 10.3390/app13095795

关键词

CDDO; HS; CDDO-HS; metaheuristics; optimization

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CDDO-HS is a hybrid model that combines CDDO and HS standards to optimize children's drawing development. The model addresses the issues of low performance and stagnation in CDDO by relocating the pattern size (PS) to the algorithm's core and adding HS to enhance and update the solution in the exploration phase.
Child drawing development optimization (CDDO) is a recent example of a metaheuristic algorithm. The motive for inventing this method is children's learning behavior and cognitive development, with the golden ratio being employed to optimize the aesthetic value of their artwork. Unfortunately, CDDO suffers from low performance in the exploration phase, and the local best solution stagnates. Harmony search (HS) is a highly competitive algorithm relative to other prevalent metaheuristic algorithms, as its exploration phase performance on unimodal benchmark functions is outstanding. Thus, to avoid these issues, we present CDDO-HS, a hybridization of both standards of CDDO and HS. The hybridized model proposed consists of two phases. Initially, the pattern size (PS) is relocated to the algorithm's core and the initial pattern size is set to 80% of the total population size. Second, the standard harmony search (HS) is added to the pattern size (PS) for the exploration phase to enhance and update the solution after each iteration. Experiments are evaluated using two distinct standard benchmark functions, known as classical test functions, including 23 common functions and 10 CEC-C06 2019 functions. Additionally, the suggested CDDO-HS is compared to CDDO, the HS, and six others widely used algorithms. Using the Wilcoxon rank-sum test, the results indicate that CDDO-HS beats alternative algorithms.

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