IEEE Trans Cybern. 2022 Sep;52(9):9797-9808. doi: 10.1109/TCYB.2021.3070143. Epub 2022 Aug 18.
A colored traveling salesman problem (CTSP) as a generalization of the well-known multiple traveling salesman problem utilizes colors to distinguish the accessibility of individual cities to salesmen. This work formulates a precedence-constrained CTSP (PCTSP) over hypergraphs with asymmetric city distances. It is capable of modeling the problems with operations or activities constrained to precedence relationships in many applications. Two types of precedence constraints are taken into account, i.e., 1) among individual cities and 2) among city clusters. An augmented variable neighborhood search (VNS) called POPMUSIC-based VNS (PVNS) is proposed as a main framework for solving PCTSP. It harnesses a partial optimization metaheuristic under special intensification conditions to prepare candidate sets. Moreover, a topological sort-based greedy algorithm is developed to obtain a feasible solution at the initialization phase. Next, mutation and multi-insertion of constraint-preserving exchanges are combined to produce different neighborhoods of the current solution. Two kinds of constraint-preserving k -exchange are adopted to serve as a strong local search means. Extensive experiments are conducted on 34 cases. For the sake of comparison, Lin-Kernighan heuristic, two genetic algorithms and three VNS methods are adapted to PCTSP and fine-tuned by using an automatic algorithm configurator-irace package. The experimental results show that PVNS outperforms them in terms of both search ability and convergence rate. In addition, the study of four PVNS variants each lacking an important operator reveals that all operators play significant roles in PVNS.
带颜色的旅行商问题(CTSP)作为著名的多旅行商问题的推广,利用颜色来区分销售人员对各个城市的可达性。这项工作在超图上形式化了具有不对称城市距离的优先约束 CTSP(PCTSP)。它能够在许多应用中对受操作或活动优先关系约束的问题进行建模。考虑了两种类型的优先约束,即 1)在各个城市之间,2)在城市集群之间。提出了一种名为基于 POPMUSIC 的增强变邻域搜索(PVNS)作为求解 PCTSP 的主要框架。它利用特殊强化条件下的部分优化元启发式来准备候选集。此外,开发了一种基于拓扑排序的贪婪算法在初始化阶段获得可行解。接下来,进行变异和约束保持交换的多插入,以生成当前解的不同邻域。采用两种约束保持的 k-交换作为强局部搜索手段。在 34 个案例上进行了广泛的实验。为了进行比较,将 Lin-Kernighan 启发式、两种遗传算法和三种 VNS 方法应用于 PCTSP,并使用自动算法配置器 irace 包进行微调。实验结果表明,PVNS在搜索能力和收敛速度方面均优于其他方法。此外,对缺少一个重要算子的四个 PVNS 变体的研究表明,所有算子在 PVNS 中都发挥了重要作用。