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自营货车与公交车协同快件配送优化

贺韵竹 杨忠振

贺韵竹, 杨忠振. 自营货车与公交车协同快件配送优化[J]. 交通运输工程学报, 2017, 17(6): 97-103.
引用本文: 贺韵竹, 杨忠振. 自营货车与公交车协同快件配送优化[J]. 交通运输工程学报, 2017, 17(6): 97-103.
HE Yun-zhu, YANG Zhong-zhen. Optimization of express distribution by cooperatively using private trucks and buses[J]. Journal of Traffic and Transportation Engineering, 2017, 17(6): 97-103.
Citation: HE Yun-zhu, YANG Zhong-zhen. Optimization of express distribution by cooperatively using private trucks and buses[J]. Journal of Traffic and Transportation Engineering, 2017, 17(6): 97-103.

自营货车与公交车协同快件配送优化

基金项目: 

国家自然科学基金项目 71402013

中央高校基本科研业务费专项资金项目 3132016303

详细信息
    作者简介:

    贺韵竹(1992-), 女, 山东烟台人, 大连海事大学工学博士研究生, 从事交通运输规划与管理研究

    杨忠振(1964-), 男, 辽宁凌海人, 宁波大学教授, 工学博士

  • 中图分类号: U492.31

Optimization of express distribution by cooperatively using private trucks and buses

More Information
  • 摘要: 为了应对数量多、货件小、批次频、时效性高的城市快件配送需求, 提出了公交车与自营货车协同配送的运营模式, 构建了以快递运营总成本最低为目标的快件配送优化模型; 通过决策快递的配送批次、起运时间和运输路径, 优化了公交车与货车协同配送下的快件运输网络; 设计了蚁群算法求解模型; 基于大连市道路网与公交线网, 分别求解有97个需求点的协同配送和货车单独配送方案, 并比较了配送结果。分析结果表明: 在协同配送模式下, 总成本降低了9.5%, 货车的行驶距离减少了12.6%, 二氧化碳排放量由0.159t减少到0.139t, 未按时配送的需求点减少了26.2%, 总延误降低了57.7%;协同配送的单位时间惩罚成本适用范围为0.2~0.4元·min-1, 公交车最优单位配送价格为1.5元· (t·km) -1。可见, 在一定范围内, 协同运输模式的配送成本低, 配送准时性高, 产生的环境负荷少, 可以提供比货车单独配送更好的服务。

     

  • 图  1  单批货物走行路径

    Figure  1.  Path of single batch of goods

    图  2  部分配送路线

    Figure  2.  Partial distribution paths

    图  3  单位时间惩罚成本的敏感度分析

    Figure  3.  Sensitivity analysis of unit time penalty cost

    图  4  配送总成本随公交车单位配送成本的变化

    Figure  4.  Change of distribution total cost with bus unit distribtuion cost

    表  1  求解结果比较

    Table  1.   Solving results comparison

    下载: 导出CSV

    表  2  协同配送方案

    Table  2.   Collaborative distribution schemes

    下载: 导出CSV
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出版历程
  • 收稿日期:  2017-06-30
  • 刊出日期:  2017-12-25

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