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A Memory-Based NSGA-Ⅱ Algorithm for Dynamic Multi-objective Optimization Problems

机译:一种基于存储器的NSGA-Ⅱ算法,用于动态多目标优化问题

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Dynamic multi-objective optimization problems (DMOPs) have been rapidly attracting the interest of the research community. Although static multi-objective evolutionary algorithms have been adapted for solving the DMOPs in the literature, some of those extensions may have high running time and may be inefficient for the given set of test cases. In this paper, we present a new hybrid strategy by integrating the memory concept with the NSGA-Ⅱ algorithm, called the MNSGA-Ⅱ algorithm. The proposed algorithm utilizes an explicit memory to store a number of non-dominated solutions using a new memory updating technique. The stored solutions are reused in later stages to reinitialize part of the population when an environment change occurs. The performance of the MNSGA-Ⅱ algorithm is validated using three test functions from a framework proposed in a recent study. The results show that performance of the MNSGA-Ⅱ algorithm is competitive with the other state-of-the-art algorithms in terms of tracking the true Pareto front and maintaining the diversity.
机译:动态多目标优化问题(DMOPS)一直迅速吸引研究界的兴趣。尽管已经适用于求解文献中的DMOPS的静态多目标进化算法,但是一些延伸部分可能具有高运行时间,并且对于给定的一组测试用例可能效率低。在本文中,我们通过将记忆概念与NSGA-Ⅱ算法集成,介绍了一种新的混合策略,称为MNSGA-Ⅱ算法。所提出的算法利用显式存储器使用新的内存更新技术来存储多个非主导解决方案。存储的解决方案在后续阶段重复使用,以在发生环境变化时重新初始化部分人口。 MNSGA-Ⅱ算法的性能使用来自最近一项研究中提出的框架的三个测试函数进行了验证。结果表明,MNSGA-Ⅱ算法的性能与其他最先进的算法竞争竞争,以跟踪真正的帕累托正面并保持多样性。

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