An ε-domination based two-archive 2 algorithm for many-objective optimization |
| |
作者姓名: | WU Tianwei AN Siguang HAN Jianqiang SHENTU Nanying |
| |
作者单位: | College of Mechanical and Electrical Engineering;Key Laboratory of Intelligent Manufacturing Quality Big Data Tracing and Analysis of Zhejiang Province |
| |
基金项目: | supported by the National Natural Science Foundation of China;Natural Science Foundation of Zhejiang Province (52077203,LY19E070003);the Fundamental Research Funds for the Provincial Universities of Zhejiang (2021YW06)。 |
| |
摘 要: | The two-archive 2 algorithm(Two_Arch2) is a manyobjective evolutionary algorithm for balancing the convergence,diversity,and complexity using diversity archive(DA) and convergence archive(CA).However,the individuals in DA are selected based on the traditional Pareto dominance which decreases the selection pressure in the high-dimensional problems.The traditional algorithm even cannot converge due to the weak selection pressure.Meanwhile,Two_Arch2 adopts DA as the output of the algorithm which is hard to maintain diversity and coverage of the final solutions synchronously and increase the complexity of the algorithm.To increase the evolutionary pressure of the algorithm and improve distribution and convergence of the final solutions,an ε-domination based Two_Arch2 algorithm(ε-Two_Arch2) for many-objective problems(MaOPs) is proposed in this paper.In ε-Two_Arch2,to decrease the computational complexity and speed up the convergence,a novel evolutionary framework with a fast update strategy is proposed;to increase the selection pressure,ε-domination is assigned to update the individuals in DA;to guarantee the uniform distribution of the solution,a boundary protection strategy based on Iε+ indicator is designated as two steps selection strategies to update individuals in CA.To evaluate the performance of the proposed algorithm,a series of benchmark functions with different numbers of objectives is solved.The results demonstrate that the proposed method is competitive with the state-of-the-art multi-objective evolutionary algorithms and the efficiency of the algorithm is significantly improved compared with Two_Arch2.
|
关 键 词: | many-objective optimization ε-domination boundary protection strategy two-archive algorithm |
本文献已被 维普 等数据库收录! |
|