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Evolutionary algorithm with a directional local search for multiobjective optimization in combinatorial problems

机译:组合问题中多目标优化的定向局部搜索进化算法

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Evolutionary algorithms (EAs) are often employed to multiobjective optimization, because they process an entire population of solutions which can be used as an approximation of the Pareto front of the tackled problem. It is a common practice to couple local search with evolutionary algorithms, especially in the context of combinatorial optimization. In this paper a new local search method is proposed that utilizes the knowledge concerning promising search directions. The proposed method can be used as a general framework and combined with many methods of iterating over a neighbourhood of an initial solution as well as various decomposition approaches. In the experiments the proposed local search method was used with an EA and tested on 2-, 3- and 4-objective versions of two well-known combinatorial optimization problems: the travelling salesman problem (TSP) and the quadratic assignment problem (QAP). For comparison two well-known local search methods, one based on Pareto dominance and the other based on decomposition, were used with the same EA. The results show that the EA coupled with the directional local search yields better results than the same EA coupled with any of the two reference methods on both the TSP and QAP problems.
机译:进化算法(EA)通常用于多目标优化,因为它们处理整个解决方案,可以用作已解决问题的Pareto前沿的近似值。通常将本地搜索与进化算法结合在一起,尤其是在组合优化的情况下。在本文中,提出了一种新的本地搜索方法,该方法利用了有关有希望的搜索方向的知识。所提出的方法可以用作通用框架,并且可以与许多在初始解的邻域上进行迭代的方法以及各种分解方法结合使用。在实验中,将建议的局部搜索方法与EA结合使用,并在两个,三个,四个目标版本的两个著名组合优化问题上进行了测试:旅行商问题(TSP)和二次分配问题(QAP) 。为了进行比较,将两种著名的局部搜索方法(一种基于帕累托优势)和另一种基于分解的方法与同一EA一起使用。结果表明,在TSP和QAP问题上,结合定向局部搜索的EA比在两种参考方法中结合的相同EA产生更好的结果。

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