工程设计问题的约束优化:基于高斯映射的混沌粒子群优化分析

IF 1.1 Q3 INFORMATION SCIENCE & LIBRARY SCIENCE JOURNAL OF INFORMATION & OPTIMIZATION SCIENCES Pub Date : 2023-01-01 DOI:10.47974/jios-1313
Hasan Koyuncu
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引用次数: 1

摘要

约束优化是一个具有挑战性的问题,涉及到模型的约束条件、目标和约束条件的评价。为此,专门生成或改进各种优化算法,以达到最佳设计。算法的性能与所使用现象的搜索能力密切相关。在这里,最先进的方法可能在约束优化上提供较差的结果,而它在不同类型的优化问题上的性能是显著的。许多工程设计问题被归类为约束和非线性问题。决策变量、约束函数和目标函数总是随着问题的不同而变化。这种情况揭示了鲁棒优化算法的必要性。受此启发,在看到其在不同领域(全局优化、连续函数优化、混合分类器设计等)的卓越表现后,本文研究了一种最先进的技术——基于高斯映射的混沌粒子群优化(GM-CPSO),用于工程设计问题的约束优化。首先将GM-CPSO应用于约束优化。然后,利用罚函数法形成优化算法的适应度输出。处理了6个具有挑战性的设计问题,分别是轮系设计、工字梁设计、拉/压缩弹簧设计、三杆桁架设计、管状柱设计和汽车侧碰撞设计。在实验中,将GM-CPSO与处理设计问题的最新研究进行了比较。因此,GM-CPSO在给定的设计问题上实现了文献记录的最佳结果或增强了最优结果。
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Constrained optimization of engineering design problems: Analyses with Gauss map-based chaotic particle swarm optimization
Constrained optimization rises as a challenging issue concerning the evaluation of restrictions, objective and constraints of a model. For this purpose, various optimization algorithms are specifically generated or improved to achieve the best design. Performance of algorithms is strictly concerned with the search capability of the phenomena used. Herein, a state-of-the-art approach can provide worse results on constrained optimization while its performance is remarkable on a different type of optimization problem. Many engineering design problems are categorized as constrained and nonlinear. Decision variables, constraint functions and objective function always change from one problem to another. This condition reveals the necessity of robust optimization algorithms. With this inspiration, after seeing its remarkable performance on different areas (global optimization, continuous function optimization, hybrid classifier design, etc.), this paper examines a state-of-the-art technique named Gauss map-based chaotic particle swarm optimization (GM-CPSO) on constrained optimization of engineering design problems. GM-CPSO is firstly adapted to operate for constrained optimization. Then, penalty function method is utilized to form the fitness output of optimization algorithm. Six challenging design problems are handled that are gear train design, I-shaped beam design, tension / compression spring design, three-bar truss design, tubular column design, and car side impact design. In experiments, GM-CPSO is compared with the state-of-the-art studies handling the design problems. As a result, GM-CPSO achieves the best results recorded in the literature or enhances the optimum result on the specified design problem.
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来源期刊
JOURNAL OF INFORMATION & OPTIMIZATION SCIENCES
JOURNAL OF INFORMATION & OPTIMIZATION SCIENCES INFORMATION SCIENCE & LIBRARY SCIENCE-
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21.40%
发文量
88
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