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Conceptual modeling of evolvable local searches in memetic algorithms using linear genetic programming: a case study on capacitated vehicle routing problem

机译:基于线性遗传规划的模因算法中可演化局部搜索的概念建模:以容量限制车辆路径问题为例

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This paper presents a study on the conceptual modeling of memetic algorithm with evolvable local search in the form of linear programs, self-assembled by linear genetic programming based evolution. In particular, the linear program structure for local search and the associated local search self-assembling process in the lifetime learning process of memetic algorithm are proposed. Results showed that the memetic algorithm with evolvable local search provides a means of creating highly robust, self-configuring and scalable algorithms, thus generating improved or competitive results when benchmarking against several existing adaptive or human-designed state-of-the-art memetic algorithms and meta-heuristics, on a plethora of capacitated vehicle routing problem sets considered.
机译:本文以线性程序的形式,通过基于线性遗传规划的进化自组装,对具有可进化局部搜索的模因算法的概念建模进行了研究。特别地,提出了模因算法寿命学习过程中用于局部搜索的线性程序结构及相关的局部搜索自组装过程。结果表明,具有可演化本地搜索的模因算法提供了一种创建高度健壮,自我配置和可扩展算法的方法,从而在以几种现有的自适应或人工设计的最新模因算法为基准进行测试时,可以产生改进或具有竞争力的结果和元启发式方法,考虑了过多的车辆行车路线问题集。

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