Multi-objective adaptive differential evolution algorithm for combinatorial optimisation

K. Lakshmi, A. Rao, K. Bhaskar
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引用次数: 1

Abstract

In this paper we propose an adaptive metaheuristic algorithm based on differential evolution (DE) for solving combinatorial optimization problems. DE is a heuristic method that has yielded promising results for solving complex optimization problems. The potentialities of DE are its simple structure, easy use, convergence property, quality of solution, and robustness. In order to avoid the difficult task of parameter setting, an adaptive feature is introduced into the algorithm. The resulting adaptive DE algorithm is built with typical features like Pareto dominance, density estimation, and an external archive to store the non-dominated solutions in order to handle multiple objectives. The performance of the proposed multi-objective adaptive DE algorithm is demonstrated by solving a hybrid laminate composite pressure vessel problem subjected to both combinatorial as well as design constraints. Further, the proposed algorithm is compared with three state-of-the-art multi-objective optimizers: Non-dominated sorting Genetic Algorithm (NSGA-II), Pareto Archived Evolutionary Strategy (PAES) and multi-objective particle swarm optimisation(MPSO). The studies presented in this paper indicate that proposed algorithm produces very competitive Pareto fronts according to the applied convergence metric and it clearly outperforms the other three algorithms
组合优化的多目标自适应差分进化算法
本文提出了一种基于差分进化的自适应元启发式算法来求解组合优化问题。DE是一种启发式方法,在解决复杂的优化问题方面已经产生了很好的结果。该算法结构简单、易于使用、收敛性好、解的质量好、鲁棒性好。为了避免参数设置的困难,在算法中引入了自适应特征。由此产生的自适应DE算法具有典型的特征,如帕累托优势、密度估计和一个外部存档来存储非主导解决方案,以便处理多个目标。通过求解组合约束和设计约束下的复合层压板复合材料压力容器问题,验证了所提多目标自适应DE算法的性能。此外,将该算法与三种最先进的多目标优化算法进行了比较:非支配排序遗传算法(NSGA-II)、帕累托存档进化策略(PAES)和多目标粒子群优化(MPSO)。本文的研究表明,根据应用的收敛度量,该算法产生了非常有竞争力的帕累托前沿,并且明显优于其他三种算法
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