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Multi-objective multi-factorial memetic algorithm based on bone route and large neighborhood local search for VRPTW

机译:基于骨路径和大邻域局部搜索的VRPTW多目标多因子模因算法

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Multi-tasking optimization (MTO) has attracted increasing attention in the domain of evolutionary computation. Different from single-tasking optimization, MTO can solve multiple optimization tasks simultaneously to improve the performance of solving each optimization task by inter-task knowledge transfer. Multifactorial evolutionary algorithm (MFEA) is one of the most widely used MTO algorithm based on assortative mating and vertical cultural transmission. This work extends MFEA by integrating bone route and large neighborhood local search to solve multi-objective vehicle routing problem with time window (VRPTW). The VRPTW is modeled as two related tasks, i.e., one is a multi-objective version of VRPTW (the main task), and the other is a single-objective version of VRPTW (the auxiliary task). The resultant new algorithm namely multi-objective multi-factorial memetic algorithm (MOMFMA) solve the two tasks simultaneously where the information between the tasks is exchanged in the evolutionary process. In addition to the implicit information transfer of MFEA, the bone route is introduced to enable explicit information transfer between tasks. Particularly, bone routes are constructed as semi-finished product solutions and used in large neighborhood local search. The bone route and the large neighborhood local search work together to speed up the convergence of the algorithm. MOMFMA is tested on Solomon’s 56 datasets and the experimental results demonstrate that the efficiency of MOMFMA.
机译:多任务优化(MTO)在进化计算领域引起了越来越多的关注。与单任务优化不同,MTO可以同时解决多个优化任务,从而通过任务间知识转移提高解决每个优化任务的性能。多因子进化算法(MFEA)是基于分类交配和垂直文化传播的最广泛使用的MTO算法之一。这项工作通过结合骨路线和大邻域局部搜索来扩展MFEA,以解决带有时间窗(VRPTW)的多目标车辆路线问题。 VRPTW被建模为两个相关任务,即一个是VRPTW的多目标版本(主要任务),另一个是VRPTW的单目标版本(辅助任务)。由此产生的新算法,即多目标多因子模因算法(MOMFMA),可以同时解决两个任务,在进化过程中交换任务之间的信息。除了MFEA的隐式信息传输外,还引入了骨骼路由以实现任务之间的显式信息传输。特别是,将骨路线构造为半成品解决方案,并用于大型邻域本地搜索。骨骼路线和大邻域局部搜索共同作用以加快算法的收敛速度。 MOMFMA在Solomon的56个数据集上进行了测试,实验结果证明了MOMFMA的效率。

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