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Large-scale Constrained Clustering For Rationalizing Pickup And Delivery Operations

机译:大规模约束集群,合理化取货和送货操作

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The paper presents a three-phase procedure for clustering a large number of data points subject to both configuration and resource constraints. Motivated by the desire of a shipping carrier to reduce its fixed costs, the problem is to construct a set of compact work areas for regional pickup and delivery operations. In general terms, the objective is to find the minimum number of clusters (homogeneous vehicles) that satisfy volume, time and contiguity constraints. The problem is placed in context by formulating it as a mixed-integer goal program. Because practical instances contain anywhere from 6000 to 50,000 data points and can only be described in probabilistic terms, it is not possible to obtain provably optimal solutions to the proposed model. Instead, a novel solution methodology is developed that makes use of metaheuristic and mathematical programming techniques.rnIn the preprocessing phase, a fraction of the data points are aggregated to reduce the problem size. This is shown to substantially decrease the computational burden without compromising solution quality. In the main step, an efficient adaptive search procedure is used to form the clusters. Randomness is introduced at each inner iteration to ensure a full exploration of the feasible region, and an incremental slicing scheme is used to overcome local optimality. In metaheuristic terms, these two refinements are equivalent to diversification and intensification search strategies. To improve the results, a set covering problem is solved in the final phase. The individual clusters obtained from the heuristic provide the structure for this model.rnTo test the methodology, six data sets provided by the sponsoring company were analyzed. All runs for the first two phases took less than 4 min, and in all but one case produced a tangible improvement over the current service area configurations. The set covering solution provided further improvement, which collectively averaged 11.2%.
机译:本文提出了一个分为三个阶段的过程,用于对大量受配置和资源约束的数据点进行聚类。由于航运公司希望降低其固定成本的动机,问题在于为区域取货和交付操作构建一套紧凑的工作区域。一般而言,目标是找到满足数量,时间和连续性约束的最小集群(同质车辆)。通过将其表述为混合整数目标程序来解决该问题。由于实际实例包含6000到50,000个数据点,并且只能用概率术语来描述,因此不可能为所提出的模型获得可证明的最佳解决方案。取而代之的是,开发了一种利用元启发式和数学编程技术的新颖解决方案方法。在预处理阶段,一部分数据点被汇总以减小问题的大小。事实证明,这在不损害解决方案质量的前提下,可以大大减少计算负担。在主要步骤中,使用有效的自适应搜索过程来形成聚类。在每次内部迭代中都会引入随机性,以确保对可行区域进行全面探索,并使用增量切片方案来克服局部最优性。用元启发式的术语来说,这两个改进等同于多样化和强化搜索策略。为了改善结果,在最后阶段解决了一组覆盖问题。从启发式方法获得的各个聚类提供了该模型的结构。为了测试该方法,分析了赞助公司提供的六个数据集。前两个阶段的所有运行都用了不到4分钟的时间,除了一个案例外,其他所有案例都对当前的服务区域配置产生了明显的改善。固定覆盖解决方案提供了进一步的改进,总计平均为11.2%。

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