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Bi-objective Elite Differential Evolution Algorithm for Multivalued Logic Networks

机译:多值逻辑网络的双目标精英差分演化算法

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摘要

In this paper, a novel algorithm called bi-objective elite differential evolution (BOEDE) is proposed to optimize multivalued logic (MVL) networks. It is a multiobjective algorithm completely different from all previous single-objective optimization ones. The two objective functions, error and optimality, are put into evaluating the fitness of individuals in evolution simultaneously. BOEDE innovatively uses an archive population with different ranks to store elite individuals and off-springs. Moreover, a characteristic updating method based on this archive structure is designed to produce the parent population. Because of the particularity of MVL network problems, the performance of BOEDE to solve them is further improved by strictly distinguishing elite solutions and Pareto optimal solutions, and by modifying the method of dealing with illegal variables. The simulations show that BOEDE can collect a great number of solutions to provide decision support for a variety of applications. The comparison results also indicate that BOEDE is significantly better than the existing algorithms.
机译:在本文中,提出了一种称为双目标精英差分进化(BOEDE)的新颖算法来优化多值逻辑(MVL)网络。它是一种多目标算法,与以前的所有单目标优化算法完全不同。误差和最优性这两个目标函数同时用于评估个体在进化中的适应性。 BOEDE创新地使用了不同级别的档案种群来存储精英个人和后代。此外,设计了一种基于此存档结构的特征更新方法来生成父种群。由于MVL网络问题的特殊性,通过严格区分精英解决方案和Pareto最优解决方案以及修改处理非法变量的方法,BOEDE解决这些问题的性能得到了进一步提高。仿真表明,BOEDE可以收集大量解决方案,为各种应用程序提供决策支持。比较结果还表明,BOEDE明显优于现有算法。

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