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Multi-objective imperialistic competitive algorithm with multiple non-dominated sets for the solution of global optimization problems

机译:多目标帝国主义竞争算法,具有多个非主导集合的全局优化问题解决方案

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In this paper, we propose a multi-objective imperialistic competitive algorithm (MOICA) for solving global multi-objective optimization problems. The MOICA is a modified and improved multi-objective version of the single-objective imperialistic competitive algorithm previously proposed by Atashpaz-Gargari and Lucas (IEEE Congr Evolut Comput 7:4661-4666. doi:10.1109/CEC.2007.4425083, 2007). The presented algorithm utilizes the metaphor of imperialism to solve optimization problems. Accordingly, the individuals in a population are referred to as countries, of which there are two typescolonies and imperialists. The MOICA incorporates competition between empires and their colonies for the solution of multi-objective problems. To this end, it employs several non-dominated solution sets, whereby each set is referred to as a local non-dominated solution (LNDS) set. All imperialists in an empire are considered non-dominated solutions, whereas all colonies are considered dominated solutions. In addition to LNDS sets, there is one global non-dominated solution (GNDS) set, which is created from the LNDS sets of all empires. There are two primary operators in the proposed algorithm, i.e., assimilation and revolution, which use the GNDS and LNDS sets, respectively. The significance of this study lies in a notable feature of the proposed algorithm, which is that no special parameter is used for diversity preservation. This enables the algorithm to prevent extra computation to maintain the spread of solutions. Simulations and experimental results on multi-objective benchmark problems show that the MOICA is more efficient compared to a few existing major multi-objective optimization algorithms because it produces better results for several test problems.
机译:在本文中,我们提出了一种多目标帝国主义竞争算法(MOICA),用于解决全球多目标优化问题。 Moica是先前由Atashpaz-Gargari和Lucas提出的单目标帝国主义竞争算法的修改和改进的多目标版本(IEEE COLLEN EVOLUT计算7:4661-4666。DOI:10.1109 / CEC.2007.4425083,2007)。呈现的算法利用帝国主义隐喻来解决优化问题。因此,人口中的个人被称为国家,其中有两个类型的名字和帝国主义者。 Moica在帝国和他们的殖民地之间纳入了多目标问题的殖民地。为此,它采用了多个非主导的解决方案集,其中每个集合被称为本地非主导解决方案(LNDS)集。帝国中的所有帝国主义都被认为是非主导的解决方案,而所有殖民地都被认为是主导的解决方案。除LNDS集外,还有一个全局非主导的解决方案(GNDS)集,该解决方案(GNDS)是从所有帝国的LNDS组创建的。所提出的算法中有两个主要运算符,即分散和革命,分别使用GNDS和LNDS组。该研究的重要性在于所提出的算法的显着特征,即没有用于多样化的特殊参数。这使算法能够防止额外计算来维持解决方案的传播。对多目标基准问题的模拟和实验结果表明,与现有的主要多目标优化算法相比,MOICA更有效,因为它为几个测试问题产生了更好的结果。

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