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A new randomness approach based on sine waves to improve performance in metaheuristic algorithms

机译:一种基于正弦波的新随机性方法,提高成群质算法性能

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摘要

The main goal of this paper is to outline a new approach to represent the randomness that we can find in different metaheuristics as a stochastic process which helps in the performance of the analyzed metaheuristic. This new way of viewing randomness is based on the behavior of sine waves that we can find in many situations in nature or in physics laws. In this paper, we evaluate this proposed randomness with three metaheuristics: the grey wolf optimizer, firefly algorithm and flower pollination algorithm, with the goal of studying the performance of the proposed randomness method in different types of metaheuristics. A set of standard benchmark functions were used to test the proposed randomness method, which are classified as unimodal and multimodal benchmark functions. In addition, the benchmark functions of the CEC 2015 Competition are used. Finally, we present tests with functions that were presented in the CEC 2017 competition for constrained real-parameter optimization. We also present a comparative study of the analyzed metaheuristics, and this comparison is between their original randomness method and the proposed randomness method for each algorithm. Finally, we present the performance and results of the methods with different number of dimensions to complete the study.
机译:本文的主要目的是概述一种新方法来代表我们可以在不同的殖民学中找到的随机性作为随机过程中的随机过程,有助于分析的成群质主义的性能。这种观察随机性的新方式是基于正弦波的行为,我们可以在自然界中的许多情况下或物理法中找到。在本文中,我们评估了三种半导体中所提出的随机性:灰狼优化器,萤火虫算法和花授粉算法,其目的是研究不同类型的殖民学中所提出的随机性方法的性能。一组标准基准函数用于测试所提出的随机性方法,该方法被分类为单向和多模式基准函数。此外,使用CEC 2015竞争的基准功能。最后,我们对CEC 2017竞争中提出的函数进行了测试,该竞争对手进行了约束的实际参数优化。我们还提出了对分析的成分学的比较研究,这一比较是其原始的随机性方法与每种算法的所提出的随机性方法。最后,我们提出了具有不同数量的方法的性能和结果来完成研究。

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