Enhanced quadratic approximation integrated with butterfly optimization: a new search algorithm tested on structural and mathematical problems

IF 1.4 4区 工程技术 Revista de la Construccion Pub Date : 2021-08-01 DOI:10.7764/rdlc.20.2.215
A. Mortazavi, S. Seker
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引用次数: 0

Abstract

The Butterfly Optimization Algorithm (BOA) is a swarm based technique, inspired from mating and food searching process of butterflies, developed in last year. Experiments indicate that BOA provides substantial exploration capability on conventional non-constrained benchmark problems, however for the cases with more complex and noisy domains the algorithm can easily be trapped into local minima due to its restricted exploitation behavior. To tackle this issue, current study deals with introducing an alternative search strategy to explore the region of the search domain with high certainty. Such that, firstly a weighted agent is defined and then a quadratic search is performed in the vicinity of this pre-defined agent. This alternative search strategy is named as Enhanced Quadratic Approximation (EQA) and it is combined with BOA method to improve its exploitation behavior and provide an efficient search algorithm. Thus, obtained new method is named as Enhanced Quadratic Approximation Integrated with Butterfly Optimization (EQB) algorithm. Different properties of proposed EQB are tested on mathematical and structural benchmark problems. Acquired results show that the introduced algorithm, in comparison with its parent method and some other well-stablished reported algorithms in the literature, provides a competitive performance in terms of stability, accuracy and convergence rate.
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结合蝴蝶优化的增强二次逼近:在结构和数学问题上测试的一种新的搜索算法
蝴蝶优化算法(BOA)是去年开发的一种基于群体的技术,灵感来自蝴蝶的交配和觅食过程。实验表明,BOA算法在常规的无约束基准问题上具有较强的探测能力,但在具有复杂和噪声域的情况下,由于其开发行为的限制,容易陷入局部极小值。为了解决这一问题,目前的研究涉及引入一种替代搜索策略,以高确定性地探索搜索域的区域。这样,首先定义一个加权代理,然后在该预定义代理附近进行二次搜索。这种替代搜索策略被称为增强二次逼近(Enhanced Quadratic Approximation, EQA),并与BOA方法相结合,改进了其利用行为,提供了一种高效的搜索算法。因此,所得到的新方法被命名为增强二次逼近结合蝴蝶优化(EQB)算法。在数学和结构基准问题上测试了所提出的EQB的不同性能。实验结果表明,该算法在稳定性、准确性和收敛速度等方面,与母算法和文献中已有的算法相比,具有较强的竞争力。
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来源期刊
Revista de la Construccion
Revista de la Construccion 工程技术-工程:土木
CiteScore
2.30
自引率
21.40%
发文量
0
期刊介绍: The Journal of Construction is aimed at professionals, constructors, academics, researchers, companies, architects, engineers, and anyone who wishes to expand and update their knowledge about construction. We therefore invite all researchers, academics, and professionals to send their contributions for assessment and possible publication in this journal. The publications are free of publication charges. OBJECTIVES The objectives of the Journal of Construction are: 1. To disseminate new knowledge in all areas related to construction (Building, Civil Works, Materials, Business, Education, etc.). 2. To provide professionals in the area with material for discussion to refresh and update their knowledge. 3. To disseminate new applied technologies in construction nationally and internationally. 4. To provide national and foreign academics with an internationally endorsed medium in which to share their knowledge and debate the topics raised.
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