猎豹优化算法(The Cheetah Optimizer,CO)由MohammadAminAkbari等人于2022年提出,该算法性能高效,思路新颖。

参考文献: Akbari, M.A., Zare, M., Azizipanah-abarghooee, R. et al. The cheetah optimizer: a nature-inspired metaheuristic algorithm for large-scale optimization problems. Sci Rep 12, 10953 (2022). The cheetah optimizer: a nature-inspired metaheuristic algorithm for large-scale optimization problems | Scientific Reports
在CEC 2013 Special Session on Real-Parameter Optimization中共有28个测试函数维度可选择为10/30/50/100。每个测试函数的信息如下表所示:(详细信息见下方参考文献)

参考文献:
[1] Liang J J , Qu B Y , Suganthan P N ,et al.Problem Definitions and Evaluation Criteria for the CEC 2013 Special Session on Real-Parameter Optimization[J]. 2013.
(1)部分代码
- close all;
- clear ;
- clc;
- dim =10; %维度
- TestProblem=1; %测试函数索引可以选择 1-28
- [Fun_Name,lb,ub,opt_f,err] = get_fun_info_CEC2013(TestProblem,dim);%获取函数信息
- fob=str2func('cec13_0');
- SearchAgents_no=50; % 种群大小(可以修改)
- Max_iteration=500; % 最大迭代次数(可以修改)
- [Best_score,Xbest,Convergence_curve]=CO(SearchAgents_no,Max_iteration,lb,ub,dim,fobj);
- figure
- plot(Convergence_curve,'r','linewidth',2)
- xlabel('Iteration')
- ylabel('Fitness')
- title(['CEC2013-F' num2str(TestProblem)])
- legend('CO')
(2)部分结果




