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An Adaptive Large Neighborhood Search for an E-grocery Delivery Routing Problem

机译:自适应大邻居搜索电子杂货配送路线问题

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Online shopping has become ever more indispensable to many people with busy schedules who have a growing need for services ranging for a wide variety of goods, which include standard (or "staple") goods as well as "premium" goods, i.e. goods such as organic food, specialty gifts, etc. that offer higher value to consumers and higher profit margins to retailers. In this paper, we introduce a new mathematical programming formulation and present an efficient solution approach for planning the delivery services of online groceries to fulfill this diverse consumer demand without incurring additional inventory costs. We refer to our proposed model as the E-grocery Delivery Routing Problem (EDRP) as it generically represents a family of problems that an online grocery is likely to face. The EDRP is based on a distribution network where premium goods are acquired from a set of external vendors at multiple locations in the supply network and delivered to customers in a single visit. To solve this problem, we develop an improved Adaptive Large Neighborhood Search (ALNS) heuristic by introducing new removal, insertion, and vendor selection/allocation mechanisms. We validate the performance of the proposed ALNS heuristic through an extensive computational study using both the well-known Vehicle Routing Problem with Time Windows instances of Solomon and a set of new benchmark instances generated for the EDRP. The results suggest that the proposed solution methodology is effective in obtaining high quality solutions fast. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在线购物对于日程繁忙的许多人而言已变得越来越不可或缺,他们对各种商品的服务需求日益增长,这些商品包括标准(或“装订”)商品以及“高级”商品,例如有机食品,特色礼品等,可以为消费者提供更高的价值,并为零售商提供更高的利润率。在本文中,我们介绍了一种新的数学编程公式,并提出了一种有效的解决方案方法,用于规划在线食品杂货的配送服务,以满足这种多样化的消费者需求,而不会产生额外的库存成本。我们将我们提出的模型称为“电子杂货配送路线问题(EDRP)”,因为它通常代表在线杂货店可能面临的一系列问题。 EDRP基于分销网络,从供应网络中多个位置的一组外部供应商那里购买优质商品,并在一次访问中将其交付给客户。为了解决此问题,我们通过引入新的删除,插入和供应商选择/分配机制,开发了一种改进的自适应大邻域搜索(ALNS)启发式方法。通过使用著名的带有Solomon的Time Windows实例的车辆路径问题和为EDRP生成的一组新的基准实例,我们通过广泛的计算研究来验证提议的ALNS启发式算法的性能。结果表明,所提出的解决方案方法可以有效地快速获得高质量的解决方案。 (C)2015 Elsevier Ltd.保留所有权利。

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