Adaptive Dimensional Learning with a Tolerance Framework for the Differential Evolution Algorithm

Wei Li;Xinqiang Ye;Ying Huang;Soroosh Mahmoodi
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引用次数: 2

Abstract

The Differential Evolution (DE) algorithm, which is an efficient optimization algorithm, has been used to solve various optimization problems. In this paper, adaptive dimensional learning with a tolerance framework for DE is proposed. The population is divided into an elite subpopulation, an ordinary subpopulation, and an inferior subpopulation according to the fitness values. The ordinary and elite subpopulations are used to maintain the current evolution state and to guide the evolution direction of the population, respectively. The inferior subpopulation learns from the elite subpopulation through the dimensional learning strategy. If the global optimum is not improved in a specified number of iterations, a tolerance mechanism is applied. Under the tolerance mechanism, the inferior and elite subpopulations implement the restart strategy and the reverse dimensional learning strategy, respectively. In addition, the individual status and algorithm status are used to adaptively adjust the control parameters. To evaluate the performance of the proposed algorithm, six state-of-the-art DE algorithm variants are compared on the benchmark functions. The results of the simulation show that the proposed algorithm outperforms other variant algorithms regarding function convergence rate and solution accuracy.
差分进化算法的容差框架自适应维学习
差分进化算法是一种高效的优化算法,已被用于解决各种优化问题。本文提出了一种基于容错框架的自适应维度学习方法。根据适应度值将种群划分为精英亚种群、普通亚种群和劣等亚种群。普通亚种群和精英亚种群分别用于维持种群当前的进化状态和引导种群的进化方向。劣等亚种群通过次元学习策略向精英亚种群学习。如果在指定次数的迭代中没有改进全局最优,则应用容差机制。在容忍机制下,劣势亚种群和精英亚种群分别实施重新启动策略和反向维度学习策略。此外,采用个体状态和算法状态自适应调节控制参数。为了评估该算法的性能,在基准函数上比较了六种最先进的DE算法变体。仿真结果表明,该算法在函数收敛速度和求解精度方面都优于其他变体算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
7.80
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