水准点(测量)
进化算法
渡线
变量(数学)
趋同(经济学)
计算机科学
数学优化
人口
进化计算
算法
多样性(政治)
数学
机器学习
数学分析
人口学
大地测量学
社会学
经济增长
人类学
经济
地理
作者
Zhengping Liang,Tian‐Cheng Wu,Xiaoliang Ma,Zexuan Zhu,Shengxiang Yang
标识
DOI:10.1109/tcyb.2020.2986600
摘要
In recent years, dynamic multiobjective optimization problems (DMOPs) have drawn increasing interest. Many dynamic multiobjective evolutionary algorithms (DMOEAs) have been put forward to solve DMOPs mainly by incorporating diversity introduction or prediction approaches with conventional multiobjective evolutionary algorithms. Maintaining a good balance of population diversity and convergence is critical to the performance of DMOEAs. To address the above issue, a DMOEA based on decision variable classification (DMOEA-DVC) is proposed in this article. DMOEA-DVC divides the decision variables into two and three different groups in static optimization and changes response stages, respectively. In static optimization, two different crossover operators are used for the two decision variable groups to accelerate the convergence while maintaining good diversity. In change response, DMOEA-DVC reinitializes the three decision variable groups by maintenance, prediction, and diversity introduction strategies, respectively. DMOEA-DVC is compared with the other six state-of-the-art DMOEAs on 33 benchmark DMOPs. The experimental results demonstrate that the overall performance of the DMOEA-DVC is superior or comparable to that of the compared algorithms.
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