School of Mechanical and Electrical Engineering, Changchun University of Science and Technology, Changchun 130022, China.
School of Mechatronic Engineering and Automation, Foshan University, Foshan 528225, China.
Comput Intell Neurosci. 2022 Sep 27;2022:5191758. doi: 10.1155/2022/5191758. eCollection 2022.
This paper proposes a new meta-heuristic algorithm, named wild geese migration optimization (GMO) algorithm. It is inspired by the social behavior of wild geese swarming in nature. They maintain a special formation for long-distance migration in small groups for survival and reproduction. The mathematical model is established based on these social behaviors to solve optimization problems. Meanwhile, the performance of the GMO algorithm is tested on the stable benchmark function of CEC2017, and its potential for dealing with practical problems is studied in five engineering design problems and the inverse kinematics solution of robot. The test results show that the GMO algorithm has excellent computational performance compared to other algorithms. The practical application results show that the GMO algorithm has strong applicability, more accurate optimization results, and more competitiveness in challenging problems with unknown search space, compared with well-known algorithms in the literature. The proposal of GMO algorithm enriches the team of swarm intelligence optimization algorithms and also provides a new solution for solving engineering design problems and inverse kinematics of robots.
本文提出了一种新的启发式算法,名为野鹅迁徙优化(GMO)算法。它受到野鹅在自然界中群体迁徙的社会行为的启发。它们在小群体中保持特殊的编队以进行长途迁徙,以生存和繁殖。基于这些社会行为建立了数学模型来解决优化问题。同时,在 CEC2017 的稳定基准函数上测试了 GMO 算法的性能,并在五个工程设计问题和机器人的逆运动学解中研究了其处理实际问题的潜力。测试结果表明,与其他算法相比,GMO 算法具有出色的计算性能。实际应用结果表明,与文献中著名的算法相比,GMO 算法在具有未知搜索空间的挑战性问题上具有更强的适用性、更精确的优化结果和更强的竞争力。GMO 算法的提出丰富了群体智能优化算法的团队,也为解决工程设计问题和机器人的逆运动学提供了新的解决方案。