应用轮盘选择方法解决离散微分进化算法的过早收敛和停滞问题

Asaad Shakir Hameed, Haiffa Muhsan B. Alrikabi, Abeer A. Abdul-Razaq, Z. Ahmed, H. Nasser, M. Mutar
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引用次数: 0

摘要

离散微分进化(DDE)算法是一种有效解决复杂优化问题的进化算法。然而,像许多其他ea一样,它在迭代过程中仍然面临过早收敛和停滞等问题。为了解决DDE算法中的这些问题,本工作旨在实现以下目标:(i)研究DDE算法过早收敛和停滞的原因;(ii)提出防止DDE过早收敛和停滞的技术,包括基于种群解决方案之间不匹配程度的过早收敛的定量测量,然后根据种群解决方案与最佳解决方案之间的不匹配程度将种群划分为单个组;以及应用轮盘选择(RWS)方法来确定较高程度的不匹配是否更适合于选择独立组的总体,以便能够产生具有更多选项的新解,以防止过早收敛的发生;(iii)通过使用DDE算法解决二次分配问题(QAP)作为标准来评估我们的结果及其对避免过早收敛和停滞问题的影响,从而评估所提出技术的有效性,从而提高算法的准确性。基于统计分析的对比研究表明,采用所提技术的DDE算法比传统的DDE算法和最先进的方法效率更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Appling the Roulette Wheel Selection Approach to Address the Issues of Premature Convergence and Stagnation in the Discrete Differential Evolution Algorithm
The discrete differential evolution (DDE) algorithm is an evolutionary algorithm (EA) that has effectively solved challenging optimization problems. However, like many other EAs, it still faces problems such as premature convergence and stagnation during the iterative process. To address these concerns in the DDE algorithm, this work aims to achieve the following objectives: (i) investigate the causes of premature convergence and stagnation in the DDE algorithm; (ii) propose techniques to prevent premature convergence and stagnation in DDE, including a quantitative measurement of premature convergence based on the level of mismatching between the population solutions and then divide the population into individual groups based on the level of mismatching between the population solutions and the best solution; and applying the roulette wheel selection (RWS) approach to determine whether a higher degree of nonmatching is more suitable for choosing a population of separate groups to be able to produce a new solution with more options to prevent the occurrence of premature convergence; (iii) evaluate the effectiveness of the proposed techniques through employing the DDE algorithm to solve the quadratic assignment problem (QAP) as a standard to evaluate our results and their effect on avoiding premature convergence and stagnation issues, which led to the enhancement of the algorithm’s accuracy. Our comparative study based on the statistical analysis shows that the DDE algorithm that uses the proposed techniques is more efficient than the traditional DDE algorithm and the state-of-the-art methods.
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