基于模糊系统的区间多目标灰狼优化算法

IF 2.2 Q3 COMPUTER SCIENCE, CYBERNETICS International Journal of Intelligent Computing and Cybernetics Pub Date : 2023-07-17 DOI:10.1108/ijicc-03-2023-0039
Youping Lin
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引用次数: 0

摘要

目的区间多目标优化问题是一类具有普遍性和重要意义的不确定优化问题。本文提出了一种基于模糊系统的区间多目标灰狼优化算法(GWO)来有效地求解IMOP。设计/方法论/方法首先,将经典遗传算子作为局部搜索策略嵌入区间多目标GWO中,有效地平衡了全局搜索能力和局部开发能力。其次,通过构建模糊系统,提出了一种有效的局部搜索激活机制,在保证算法性能的同时,尽可能节省计算资源。模糊系统以超体积、不精确性和迭代次数为输入,输出激活指数、局部种群大小和最大迭代次数。然后,定义了模糊推理规则。它使用激活索引来确定是否激活本地搜索过程,并设置总体大小和过程中的最大迭代次数。实验结果表明,该算法在10个基准测试问题中的9个问题上获得了最优的超容量结果。在8个测试问题上实现的不精确性明显优于其他算法。这意味着所提出的算法比常用的区间多目标进化算法具有更好的性能。此外,通过实验表明,本文提出的基于模糊系统的局部搜索激活机制可以有效地保证局部搜索在整个算法过程中得到合理激活,并通过自适应设置局部搜索过程中的种群大小和最大迭代次数来合理分配计算资源。独创性/价值本研究提出了一种区间多目标GWO,它可以有效地平衡全局搜索能力和局部开发能力。然后利用模糊推理系统开发了一种有效的局部搜索激活机制。它将全局优化与局部搜索紧密结合,提高了算法的性能,节省了计算资源。
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Interval multi-objective grey wolf optimization algorithm based on fuzzy system
PurposeThe interval multi-objective optimization problems (IMOPs) are universal and vital uncertain optimization problems. In this study, an interval multi-objective grey wolf optimization algorithm (GWO) based on fuzzy system is proposed to solve IMOPs effectively.Design/methodology/approachFirst, the classical genetic operators are embedded into the interval multi-objective GWO as local search strategies, which effectively balanced the global search ability and local development ability. Second, by constructing a fuzzy system, an effective local search activation mechanism is proposed to save computing resources as much as possible while ensuring the performance of the algorithm. The fuzzy system takes hypervolume, imprecision and number of iterations as inputs and outputs the activation index, local population size and maximum number of iterations. Then, the fuzzy inference rules are defined. It uses the activation index to determine whether to activate the local search process and sets the population size and the maximum number of iterations in the process.FindingsThe experimental results show that the proposed algorithm achieves optimal hypervolume results on 9 of the 10 benchmark test problems. The imprecision achieved on 8 test problems is significantly better than other algorithms. This means that the proposed algorithm has better performance than the commonly used interval multi-objective evolutionary algorithms. Moreover, through experiments show that the local search activation mechanism based on fuzzy system proposed in this study can effectively ensure that the local search is activated reasonably in the whole algorithm process, and reasonably allocate computing resources by adaptively setting the population size and maximum number of iterations in the local search process.Originality/valueThis study proposes an Interval multi-objective GWO, which could effectively balance the global search ability and local development ability. Then an effective local search activation mechanism is developed by using fuzzy inference system. It closely combines global optimization with local search, which improves the performance of the algorithm and saves computing resources.
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CiteScore
6.80
自引率
4.70%
发文量
26
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