An Effective Improved Multi-objective Evolutionary Algorithm (IMOEA) for Solving Constraint Civil Engineering Optimization Problems

IF 0.8 4区 工程技术 Q4 ENGINEERING, CIVIL Teknik Dergi Pub Date : 2021-03-01 DOI:10.18400/tekderg.541640
H. G. Arab, A. M. Rayeni, M. Ghasemi
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引用次数: 3

Abstract

This paper introduces a new metaheuristic optimization method based on evolutionary algorithms to solve single-objective engineering optimization problems faster and more efficient. By considering constraints as a new objective function, problems turned to multi objective optimization problems. To avoid regular local optimum, different mutations and crossovers are studied and the best operators due their performances are selected as main operators of algorithm. Moreover, certain infeasible solutions can provide useful information about the direction which lead to best solution, so these infeasible solutions are defined on basic concepts of optimization and uses their feature to guide convergence of algorithm to global optimum. Dynamic interference of mutation and crossover are considered to prevent unnecessary calculation and also a selection strategy for choosing optimal solution is introduced. To verify the performance of the proposed algorithm, some CEC 2006 optimization problems which prevalently used in the literatures, are inspected. After satisfaction of acquired result by proposed algorithm on mathematical problems, four popular engineering optimization problems are solved. Comparison of results obtained by proposed algorithm with other optimization algorithms show that the suggested method has a powerful approach in finding the optimal solutions and exhibits significance accuracy and appropriate convergence in reaching the global optimum.
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求解约束型土木工程优化问题的改进多目标进化算法(IMOEA
本文提出了一种基于进化算法的元启发式优化方法,以更快、更高效地解决单目标工程优化问题。将约束作为新的目标函数,将问题转化为多目标优化问题。为了避免正则的局部最优,研究了不同的突变和交叉,并根据其性能选择最佳算子作为算法的主要算子。此外,某些不可行解可以提供通向最佳解的方向的有用信息,因此这些不可行解是在优化的基本概念上定义的,并利用它们的特征来指导算法收敛到全局最优。考虑了突变和交叉的动态干扰,避免了不必要的计算,并提出了一种选择最优解的策略。为了验证所提算法的性能,对文献中常用的CEC 2006优化问题进行了检验。在求解数学问题获得满意结果后,对四种常见的工程优化问题进行了求解。与其他优化算法的结果比较表明,所提算法在寻找最优解方面具有强大的能力,在达到全局最优时具有显著的准确性和适当的收敛性。
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来源期刊
Teknik Dergi
Teknik Dergi 工程技术-工程:土木
自引率
30.80%
发文量
65
审稿时长
>12 weeks
期刊介绍: The scope of Teknik Dergi is naturally confined with the subjects falling in the area of civil engineering. However, the area of civil engineering has recently been significantly enlarged, even the definition of civil engineering has somewhat changed. Half a century ago, engineering was simply defined as “the art of using and converting the natural resources for the benefit of the mankind”. Today, the same objective is expected to be realised (i) by complying with the desire and expectations of the people concerned and (ii) without wasting the resources and within the sustainability principles. This change has required an interaction between engineering and social and administrative sciences. Some subjects at the borderline between civil engineering and social and administrative sciences have consequently been included in the area of civil engineering. Teknik Dergi defines its scope in line with this understanding. However, it requires the papers falling in the borderline to have a significant component of civil engineering.
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