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首页> 外文期刊>European Journal of Operational Research >Large neighborhood-based metaheuristic and branch-and-price for the pickup and delivery problem with split loads
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Large neighborhood-based metaheuristic and branch-and-price for the pickup and delivery problem with split loads

机译:基于大的邻域的型殖民主义和分支和分支,用于分离负载的拾取和交付问题

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We consider the multi-vehicle one-to-one pickup and delivery problem with split loads, a NP-hard problem linked with a variety of applications for bulk product transportation, bike-sharing systems and inventory re-balancing. This problem is notoriously difficult due to the interaction of two challenging vehicle routing attributes, "pickups and deliveries" and "split deliveries". This possibly leads to optimal solutions of a size that grows exponentially with the instance size, containing multiple visits per customer pair, even in the same route. To solve this problem, we propose an iterated local search metaheuristic as well as a branch-and-price algorithm. The core of the metaheuristic consists of a new large neighborhood search, which reduces the problem of finding the best insertion combination of a pickup and delivery pair into a route (with possible splits) to a resource-constrained shortest path and knapsack problem. Similarly, the branch-and-price algorithm uses sophisticated labeling techniques, route relaxations, preprocessing and branching rules for an efficient resolution. Our computational experiments on classical single-vehicle instances demonstrate the excellent performance of the metaheuristic, which produces new best known solutions for 92 out of 93 test instances, and outperforms all previous algorithms. Experimental results on new multi-vehicle instances with distance constraints are also reported. The branch-and price algorithm produces optimal solutions for instances with up to 20 pickup-and-delivery pairs, and very accurate solutions are found by the metaheuristic. (C) 2018 Elsevier B.V. All rights reserved.
机译:我们考虑使用分割负载的多车辆一对一的拾取和交货问题,与批量产品运输,自行车共享系统和库存重新平衡有关的NP-Hard问题。由于两个具有挑战性的车辆路由属性,“拾取和交付”和“分割交付”的互动,这个问题难以难以困难。这可能导致大小与实例的大小呈指数级增长,包含每个客户对多次访问的最优解,即使在同样的路线。为了解决这个问题,我们提出了一个迭代的本地搜索成果型以及分支价格算法。成分型核心的核心包括一个新的大邻域搜索,这减少了将拾取和递送对的最佳插入组合的问题减少到路由(具有可能的分割)到资源受限的最短路径和背包问题。同样,分支和价格算法使用复杂的标签技术,路由放松,预处理和分支规则以获得有效的分辨率。我们对古典单车实例的计算实验表明了成分型的优异性能,它为93个测试实例中的92种提供了新的最佳已知解决方案,并且优于所有先前的算法。还报道了具有距离约束的新多车辆实例的实验结果。分支机和价格算法为最多20个拾取和交付对的情况产生最佳解决方案,并且通过成群质训练发现了非常准确的解决方案。 (c)2018年elestvier b.v.保留所有权利。

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