Constraint violation has been a building block to design evolutionary multi-objective optimization algorithms for solving constrained multi-objective optimization problems. However, it is not uncommon that the constraint violation is hardly approachable in real-world black-box optimization scenarios. It is unclear that whether the existing constrained evolutionary multi-objective optimization algorithms, whose environmental selection mechanism are built upon the constraint violation, can still work or not when the formulations of the constraint functions are unknown. Bearing this consideration in mind, this paper picks up four widely used constrained evolutionary multi-objective optimization algorithms as the baseline and develop the corresponding variants that replace the constraint violation by a crisp value. From our experiments on both synthetic and real-world benchmark test problems, we find that the performance of the selected algorithms have not been significantly influenced when the constraint violation is not used to guide the environmental selection.
翻译:限制违反是设计进化多目标优化算法以解决受限制的多目标优化问题的一个基石。然而,限制违反法在现实世界黑盒优化假设中几乎无法接近这一点并不罕见。尚不清楚的是,现有的限制进化多目标优化算法(其环境选择机制以受限制违反情况为基础)能否在制约功能的配方不明的情况下继续发挥作用。考虑到这一点,本文件收集了四种广泛使用的受限制进化多目标优化算法作为基准,并开发了相应的变方,以精确值取代受限制。根据我们对合成和现实世界基准测试问题的实验,我们发现,在限制违反情况不被用来指导环境选择时,选定算法的性能没有受到很大影响。