进化算法
计算机科学
水准点(测量)
数学优化
可扩展性
测试套件
人类多任务处理
约束(计算机辅助设计)
进化计算
多目标优化
算法
测试用例
数学
机器学习
数据库
心理学
回归分析
大地测量学
认知心理学
地理
几何学
作者
Kangjia Qiao,Jing Liang,Kunjie Yu,Caitong Yue,Hongyu Lin,Dezheng Zhang,Boyang Qu
标识
DOI:10.1109/tevc.2023.3281666
摘要
Evolutionary constrained multiobjective optimization has received extensive attention and research in the past two decades, and a lot of benchmarks have been proposed to test the effect of the constrained multiobjective evolutionary algorithms (CMOEAs). Specially, the constraint functions are highly correlated with the objective values, which makes the features of constraints too monotonic and differ from the properties of the real-world problems. Accordingly, previous CMOEAs cannot solve real-world problems well, which generally involve decision space constraints with multi-modal/non-linear features. Therefore, we propose a new benchmark framework and design a suite of new test functions with scalable high-dimensional decision space constraints. To be specific, different high-dimensional constraint functions and mixed linkages in variables are considered to be close to realistic features. In this framework, several parameter interfaces are provided, so that users can easily adjust the parameters to obtain the variant functions and test the generalization performance of the algorithms. Different types of existing CMOEAs are employed to test the use of the proposed test functions, and the results show that they are easy to fall into local feasible regions. Therefore, we improve one evolutionary multitasking-based CMOEA to better handle these problems, in which a new search algorithm is designed to enhance the search abilities of populations. Compared with the existing CMOEAs, the proposed CMOEA presents better performance.
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