Hu Gang, Zhang Haonan, Xie Ni, Hussien Abdelazim G
Department of Applied Mathematics, Xi'an University of Technology, Xi'an 710054, China.
School of Computer Science and Engineering, Xi'an University of Technology, Xi'an 710048, China.
Biomimetics (Basel). 2024 Jul 1;9(7):399. doi: 10.3390/biomimetics9070399.
The recently introduced coati optimization algorithm suffers from drawbacks such as slow search velocity and weak optimization precision. An enhanced coati optimization algorithm called CMRLCCOA is proposed. Firstly, the Sine chaotic mapping function is used to initialize the CMRLCCOA as a way to obtain better-quality coati populations and increase the diversity of the population. Secondly, the generated candidate solutions are updated again using the convex lens imaging reverse learning strategy to expand the search range. Thirdly, the Lévy flight strategy increases the search step size, expands the search range, and avoids the phenomenon of convergence too early. Finally, utilizing the crossover strategy can effectively reduce the search blind spots, making the search particles constantly close to the global optimum solution. The four strategies work together to enhance the efficiency of COA and to boost the precision and steadiness. The performance of CMRLCCOA is evaluated on CEC2017 and CEC2019. The superiority of CMRLCCOA is comprehensively demonstrated by comparing the output of CMRLCCOA with the previously submitted algorithms. Besides the results of iterative convergence curves, boxplots and a nonparametric statistical analysis illustrate that the CMRLCCOA is competitive, significantly improves the convergence accuracy, and well avoids local optimal solutions. Finally, the performance and usefulness of CMRLCCOA are proven through three engineering application problems. A mathematical model of the hypersonic vehicle cruise trajectory optimization problem is developed. The result of CMRLCCOA is less than other comparative algorithms and the shortest path length for this problem is obtained.
最近提出的浣熊优化算法存在搜索速度慢和优化精度弱等缺点。为此提出了一种名为CMRLCCOA的增强型浣熊优化算法。首先,使用正弦混沌映射函数初始化CMRLCCOA,以此获得质量更好的浣熊种群并增加种群多样性。其次,利用凸透镜成像反向学习策略对生成的候选解进行再次更新,以扩大搜索范围。第三,Lévy飞行策略增加了搜索步长,扩大了搜索范围,避免了过早收敛现象。最后,利用交叉策略可有效减少搜索盲点,使搜索粒子不断接近全局最优解。这四种策略共同作用提高了浣熊优化算法的效率,提升了精度和稳定性。在CEC2017和CEC2019上对CMRLCCOA的性能进行了评估。通过将CMRLCCOA的输出与之前提交的算法进行比较,全面证明了CMRLCCOA的优越性。除了迭代收敛曲线的结果外,箱线图和非参数统计分析表明CMRLCCOA具有竞争力,显著提高了收敛精度,并很好地避免了局部最优解。最后,通过三个工程应用问题证明了CMRLCCOA的性能和实用性。建立了高超音速飞行器巡航轨迹优化问题的数学模型。CMRLCCOA的结果小于其他对比算法,并获得了该问题的最短路径长度。