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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Using differential evolution strategies in chemical reaction optimization for global numerical optimization
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Using differential evolution strategies in chemical reaction optimization for global numerical optimization

机译:在全球数值优化中使用化学反应优化中的差分演变策略

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In this paper we propose a new hybrid metaheuristic approach which combines Chemical Reaction Optimization and Differential Evolution to solve global numerical optimization problems. Chemical Reaction Optimization is widely used in several optimization problems. However, due to its random behavior in searching the optimal solution, it may converge slowly. Differential Evolution is another efficient method based on differentiation operation which can be achieved by several, more or less selective, research strategies. The aim of this paper is to propose new hybrid algorithms that use Differential Evolution strategies inside Chemical Reaction Optimization process in order to overcome its limits by increasing optimal quality and accelerating convergence. We propose in this paper two new hybrid algorithms. Both of them use the Differential Evolution Best Strategy as a local search operator to improve the exploitation process and the Differential Evolution Random Strategy as a global search operator to maintain the diversity of the population and improve the exploration process. However, the two proposed algorithms slightly differ on the used local search operators. Based on 23 benchmark functions classified in 3 categories, experimental studies start by showing that our second proposed algorithm is better than the first one. Then, this second algorithm is compared with numerous other existing algorithms. First, the experimental results of comparison with the original algorithms show that our algorithm attains very good performance for (1) the quality of the obtained solutions, where it outperforms the other algorithms by achieving the first average and overall rank for two over the three categories; (2) for the robustness where it obtains the best average number of successful runs (21.47 over 25 runs) as well as for (3) convergence speed where our proposed algorithm converges faster comparing with other algorithms in nine over the twenty three functions and finds better solution for functions where other algorithms converge faster. In addition, the proposed algorithm has also been compared with other hybrid chemical reaction and differential evolution based algorithms, the experimental results show that globally the proposed algorithm also outperforms the other hybrid algorithms except for some limited cases.
机译:在本文中,我们提出了一种新的混合成分型方法,它结合了化学反应优化和差异演化来解决全局数值优化问题。化学反应优化广泛用于几种优化问题。但是,由于其随机行为在寻找最佳解决方案时,它可能会缓慢收敛。差分进化是基于差异化操作的另一种有效的方法,可以通过几种,或多或少的选择性研究策略来实现。本文的目的是提出新的混合算法,该算法在化学反应优化过程中使用差分演进策略,以通过提高最佳质量和加速会聚来克服其限制。我们在本文中提出了两个新的混合算法。它们都使用差分演变最佳策略作为本地搜索操作员,以改善剥削过程和差分演进随机策略作为全球搜索运营商,以维持人口的多样性并改善勘探过程。但是,两个所提出的算法略有不同于所使用的本地搜索操作员。基于3个基准函数,分类为3个类别,实验研究首先表明我们的第二个提议算法优于第一个算法。然后,将该第二算法与许多其他现有算法进行比较。首先,与原始算法比较的实验结果表明,我们的算法达到了(1)所获得的解决方案的质量的良好性能,在那里它通过实现三个类别的两个算法来实现其他算法; (2)对于获得最佳平均成功运行(21.47次超过25次运行)的稳健性以及(3)收敛速度,其中我们所提出的算法会聚与二十三个功能中九个九个函数的其他算法更快地比较更好的解决方案用于其他算法收敛的功能。此外,该算法还与其他混合化学反应和基于差分演进的算法进行了比较,实验结果表明,除了一些有限情况外,全球算法还优于其他混合算法。

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