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首页> 外文期刊>Journal of Cleaner Production >Multi-depot green vehicle routing problem with shared transportation resource: Integration of time-dependent speed and piecewise penalty cost
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Multi-depot green vehicle routing problem with shared transportation resource: Integration of time-dependent speed and piecewise penalty cost

机译:共享运输资源的多站点绿色车辆路径问题:时变速度和分段惩罚成本的集成

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The control of the environmental impacts is a considerable challenge to the daily operations of modern logistics companies, especially under the current trend of increasing carbon dioxide emission. This paper focusses on freight distribution, introduces a transportation resource sharing strategy to address the multi-depot green vehicle routing problem, and incorporates the time-dependency of speed as well as piecewise penalty costs for earliness and tardiness of deliveries. Transportation resource sharing is proposed to eliminate long and empty-vehicle trips, improve the network's fluidity and the efficiency of resource management. A bi-objective model is proposed to minimize total carbon emission and operating cost, while enforcing piecewise penalty costs on earliness and tardiness to reduce waiting time and improve customer satisfaction. Further, we combine the Clarke and Wright Savings Heuristic Algorithm (CWSHA), the Sweep Algorithm (SwA) and the Multi-Objective Particle Swarm Optimization algorithm (MOPSO) to design a hybrid heuristic algorithm for the vehicle routing optimization. CWSHA and SwA are consecutively used to generate the initial population, and MOPSO is employed for local and global solution search. Computational experiments reveal that sharing transportation resource reduces the total travelled distance, the number of vehicles, and facilitates a cost effective and environment-friendly distribution network. In addition, we also observe that the shortest path sometimes undermines minimum cost and carbon emission objectives. Moreover, sensitivity analyses reveal that vehicle routes are less influenced by piecewise penalty costs under unimodal traffic flows, while bimodal traffic flows would require more investment to reduce carbon emission. (C) 2019 Elsevier Ltd. All rights reserved.
机译:环境影响的控制对现代物流公司的日常运营是一个巨大的挑战,特别是在当前二氧化碳排放增加的趋势下。本文着重于货运分配,介绍了一种运输资源共享策略来解决多仓库绿色车辆的路线选择问题,并结合了速度的时间依赖性以及分段的提前期和延误成本。提出了运输资源共享,以消除长途空车旅行,提高网络的流动性和资源管理效率。提出了一种双目标模型,以最大程度地减少总碳排放量和运营成本,同时强制按时按时延和分段拖延进行分段罚款,以减少等待时间并提高客户满意度。此外,我们结合了Clarke和Wright节省启发式算法(CWSHA),扫描算法(SwA)和多目标粒子群优化算法(MOPSO),以设计用于车辆路线优化的混合启发式算法。 CWSHA和SwA连续用于生成初始种群,而MOPSO用于本地和全局解决方案搜索。计算实验表明,共享运输资源可缩短总行驶距离,减少车辆数量,并促进具有成本效益和环境友好的分销网络。此外,我们还观察到,最短路径有时会破坏最低成本和碳排放目标。此外,敏感性分析表明,在单峰交通流量下,车辆路线受分段罚款成本的影响较小,而双峰交通流量将需要更多投资以减少碳排放。 (C)2019 Elsevier Ltd.保留所有权利。

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