连续适应度景观分析的lsamvy飞行启发随机漫步算法

Pub Date : 2023-09-21 DOI:10.4018/ijcini.330535
Yi Wang, Kangshun Li
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引用次数: 0

摘要

启发式算法是求解复杂优化问题的有效方法。针对特定优化问题的最优算法选择是一项具有挑战性的任务。适应度景观分析(FLA)用于了解优化问题的特点,帮助选择最优算法。在连续搜索空间中,随机游走算法是FLA的关键技术。然而,目前提出的大多数随机漫步算法都存在采样点不平衡的问题。本文提出了一种基于lvys飞行的随机漫步(LRW)算法来解决这个问题。利用lsamvy飞行产生随机行走算法的可变步长和方向。实验表明,该算法在采样点均匀性方面有较好的表现。此外,作者还使用提出的LRW算法分析了CEC2017基准函数的适应度景观。实验结果表明,与其他几种RW算法相比,本文提出的LRW算法能够更好地获取景观的结构特征,并且具有更好的稳定性。
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A Lévy Flight-Inspired Random Walk Algorithm for Continuous Fitness Landscape Analysis
Heuristic algorithms are effective methods for solving complex optimization problems. The optimal algorithm selection for a specific optimization problem is a challenging task. Fitness landscape analysis (FLA) is used to understand the optimization problem's characteristics and help select the optimal algorithm. A random walk algorithm is an essential technique for FLA in continuous search space. However, most currently proposed random walk algorithms suffer from unbalanced sampling points. This article proposes a Lévy flight-based random walk (LRW) algorithm to address this problem. The Lévy flight is used to generate the proposed random walk algorithm's variable step size and direction. Some tests show that the proposed LRW algorithm performs better in the uniformity of sampling points. Besides, the authors analyze the fitness landscape of the CEC2017 benchmark functions using the proposed LRW algorithm. The experimental results indicate that the proposed LRW algorithm can better obtain the structural features of the landscape and has better stability than several other RW algorithms.
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