This particular study presents two novel parent-centric real-coded crossover operators, named mixture-based Gumbel crossover (MGGX) and mixture-based Rayleigh crossover (MRRX), to increase the efficiency of genetic algorithms (GAs) in tackling complex optimization problems. Conventional crossover operators often struggle in multimodal and extremely restricted situations and fail to find the ideal balance between exploration and exploitation. Proposed parent-centric real-coded crossover operators increase the precision and robustness of GAs, which is confirmed by empirical results on testing constrained and un-constrained benchmark functions having different complexity levels. MGGX parent-centric real-coded crossover operator performs best in 20 out of 36 mean values cases and achieves the lowest standard deviation values in 21 out of 36 cases. Likewise, to confirm the efficiency, robustness, and reliability of the proposed crossover operator the Quade test, Performance index (PI), and multi-criteria TOPSIS method are utilized.
Comparative analysis of real-coded genetic algorithms for mixture distribution models: Insights from TOPSIS.
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作者:Ud-Din Jalal-, Haq Ehtasham-Ul-, Almazah Mohammed M A, Dalam Mhassen E E, Ahmad Ishfaq
| 期刊: | PLoS One | 影响因子: | 2.600 |
| 时间: | 2025 | 起止号: | 2025 Jun 3; 20(6):e0324198 |
| doi: | 10.1371/journal.pone.0324198 | ||
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