Chen Hao, Li Weikun, Cui Weicheng
Zhejiang University-Westlake University Joint Training, Zhejiang University, Hangzhou 310024, China.
Key Laboratory of Coastal Environment and Resources Research of Zhejiang Province, Institute of Advanced Technology, Westlake Institute for Advanced Study, 18 Shilongshan Road, Hangzhou 310024, China.
Comput Intell Neurosci. 2020 Nov 30;2020:8846250. doi: 10.1155/2020/8846250. eCollection 2020.
Nature-inspired computing has attracted huge attention since its origin, especially in the field of multiobjective optimization. This paper proposes a disruption-based multiobjective equilibrium optimization algorithm (DMOEOA). A novel mutation operator named layered disruption method is integrated into the proposed algorithm with the aim of enhancing the exploration and exploitation abilities of DMOEOA. To demonstrate the advantages of the proposed algorithm, various benchmarks have been selected with five different multiobjective optimization algorithms. The test results indicate that DMOEOA does exhibit better performances in these problems with a better balance between convergence and distribution. In addition, the new proposed algorithm is applied to the structural optimization of an elastic truss with the other five existing multiobjective optimization algorithms. The obtained results demonstrate that DMOEOA is not only an algorithm with good performance for benchmark problems but is also expected to have a wide application in real-world engineering optimization problems.
自其诞生以来,受自然启发的计算就引起了广泛关注,尤其是在多目标优化领域。本文提出了一种基于破坏的多目标均衡优化算法(DMOEOA)。一种名为分层破坏方法的新型变异算子被集成到所提出的算法中,旨在增强DMOEOA的探索和利用能力。为了证明所提算法的优势,选择了各种基准测试,并与五种不同的多目标优化算法进行比较。测试结果表明,DMOEOA在这些问题上确实表现出更好的性能,在收敛性和分布性之间取得了更好的平衡。此外,将新提出的算法与其他五种现有的多目标优化算法一起应用于弹性桁架的结构优化。所得结果表明,DMOEOA不仅是一种在基准问题上性能良好的算法,而且有望在实际工程优化问题中得到广泛应用。