首页> 外文会议>IEEE Congress on Evolutionary Computation >Nature-inspired heuristics for the multiple-vehicle selective pickup and delivery problem under maximum profit and incentive fairness criteria
【24h】

Nature-inspired heuristics for the multiple-vehicle selective pickup and delivery problem under maximum profit and incentive fairness criteria

机译:在最大利润和激励公平性条件下,针对多车选择性收货和发货问题的自然启发式启发法

获取原文

摘要

This work focuses on wide-scale freight transportation logistics motivated by the sharp increase of on-line shopping stores and the upsurge of Internet as the most frequently utilized selling channel during the last decade. This huge ecosystem of one-click-away catalogs has ultimately unleashed the need for efficient algorithms aimed at properly scheduling the underlying transportation resources in an efficient fashion, especially over the so-called last mile of the distribution chain. In this context the selective pickup and delivery problem focuses on determining the optimal subset of packets that should be picked from its origin city and delivered to their corresponding destination within a given time frame, often driven by the maximization of the total profit of the courier service company. This manuscript tackles a realistic variant of this problem where the transportation fleet is composed by more than one vehicle, which further complicates the selection of packets due to the subsequent need for coordinating the delivery service from the command center. In particular the addressed problem includes a second optimization metric aimed at reflecting a fair share of the net benefit among the company staff based on their driven distance. To efficiently solve this optimization problem, several nature-inspired metaheuristic solvers are analyzed and statistically compared to each other under different parameters of the problem setup. Finally, results obtained over a realistic scenario over the province of Bizkaia (Spain) using emulated data will be explored so as to shed light on the practical applicability of the analyzed heuristics.
机译:这项工作着重于大规模的货运物流,其动机是在线购物商店的急剧增加以及互联网在最近十年中作为最常用的销售渠道的兴起。这种庞大的一键式目录生态系统最终释放了对高效算法的需求,这些算法旨在以高效方式正确调度基础运输资源,尤其是在所谓的分销链的最后一英里。在这种情况下,选择性拣选和交付问题着眼于确定应从其始发城市中提取并在给定时间范围内交付到其相应目的地的最佳数据包子集,这通常是由快递服务总利润的最大化驱动的公司。该手稿解决了该问题的一个现实变体,其中运输车队由不止一辆车组成,由于随后需要协调指挥中心的交付服务,因此使包裹的选择更加复杂。尤其要解决的问题包括第二个优化指标,该指标旨在根据公司员工的行驶距离反映其净收益中公平的份额。为了有效地解决此优化问题,在问题设置的不同参数下,分析了多个受自然启发的元启发式求解器,并进行了统计比较。最后,将探索使用仿真数据在Bizkaia(西班牙)省的实际情况下获得的结果,以阐明所分析的启发式方法的实际适用性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号