Computer Engineering Department, European University of Lefke, Mersin-10, Turkey.
Software Engineering Department, European University of Lefke, Mersin-10, Turkey.
Sci Rep. 2023 Mar 12;13(1):4098. doi: 10.1038/s41598-023-31081-1.
Due to its low dependency on the control parameters and straightforward operations, the Artificial Electric Field Algorithm (AEFA) has drawn much interest; yet, it still has slow convergence and low solution precision. In this research, a hybrid Artificial Electric Field Employing Cuckoo Search Algorithm with Refraction Learning (AEFA-CSR) is suggested as a better version of the AEFA to address the aforementioned issues. The Cuckoo Search (CS) method is added to the algorithm to boost convergence and diversity which may improve global exploration. Refraction learning (RL) is utilized to enhance the lead agent which can help it to advance toward the global optimum and improve local exploitation potential with each iteration. Tests are run on 20 benchmark functions to gauge the proposed algorithm's efficiency. In order to compare it with the other well-studied metaheuristic algorithms, Wilcoxon rank-sum tests and Friedman tests with 5% significance level are used. In order to evaluate the algorithm's efficiency and usability, some significant tests are carried out. As a result, the overall effectiveness of the algorithm with different dimensions and populations varied between 61.53 and 90.0% by overcoming all the compared algorithms. Regarding the promising results, a set of engineering problems are investigated for a further validation of our methodology. The results proved that AEFA-CSR is a solid optimizer with its satisfactory performance.
由于其对控制参数的低依赖性和简单的操作,人工电场算法(AEFA)引起了广泛关注;然而,它仍然存在收敛速度慢和求解精度低的问题。在本研究中,提出了一种混合人工电场算法,即利用折射学习的布谷鸟搜索算法(AEFA-CSR),作为 AEFA 的更好版本,以解决上述问题。在算法中添加了布谷鸟搜索(CS)方法,以提高收敛速度和多样性,从而可能提高全局探索能力。利用折射学习(RL)增强领先代理,使其能够朝着全局最优前进,并在每次迭代中提高局部开发潜力。在 20 个基准函数上进行测试,以评估所提出算法的效率。为了将其与其他经过充分研究的元启发式算法进行比较,使用了 Wilcoxon 秩和检验和 Friedman 检验(显著性水平为 5%)。为了评估算法的效率和可用性,进行了一些重要的测试。结果表明,该算法在不同维度和种群下的整体有效性在 61.53%至 90.0%之间,克服了所有比较算法。鉴于结果令人满意,进一步验证了我们方法的有效性,对一组工程问题进行了研究。结果证明,AEFA-CSR 是一种性能令人满意的稳健优化器。