A New Mathematical Model for the Green Vehicle Routing Problem by Considering a Bi-Fuel Mixed Vehicle Fleet

Q2 Engineering
N. Manavizadeh, H. Farrokhi-asl, S. Lim
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引用次数: 1

Abstract

This paper formulates a mathematical model for the Green Vehicle Routing Problem (GVRP), incorporating bi-fuel (natural gas and gasoline) pickup trucks in a mixed vehicle fleet. The objective is to minimize overall costs relating to service (earliness and tardiness), transportation (fixed, variable and fuel), and carbon emissions. To reflect a real-world situation, the study considers: (1) a comprehensive fuel consumption function with a soft time window, and (2) an en-route fuel refueling option to eliminate the constraint of driving range. A linear set of valid inequalities for computing fuel consumption were introduced. In order to validate the presented model, first, the model is solved for an illustrative example. Then each component of cost objective function is considered separately so as to investigate the effects of each part on the obtained solutions and the importance of vehicles speed on transportation strategies. Computational analysis shows that, despite the limitation of an appropriate service infrastructure, the proposed model demonstrated an average reduction of 44%, 6% and 5% in carbon emission costs, total distribution costs, and transportation costs respectively. Moreover, the study found paradoxical effects of average speed, suggesting the need to manage trade-offs: while higher speeds reduced service costs, they increased carbon emission costs. In the next stage, some experiments modified from the literature are solved. According to these experiments, in all instances greater objective function values for Gasoline vehicles are gained. The difference in the carbon emission objective is also significant, with an average of 44.23% increase. Finally, managerial and institutional implications are discussed.
考虑双燃料混合车队的绿色车辆路径问题的新数学模型
本文将双燃料(天然气和汽油)皮卡车纳入混合车队,建立了绿色车辆路径问题的数学模型。目标是最大限度地减少与服务(提前和延迟)、运输(固定、可变和燃料)和碳排放相关的总体成本。为了反映真实世界的情况,该研究考虑:(1)具有软时间窗口的综合油耗函数,以及(2)消除续航里程限制的途中加油选项。介绍了一组用于计算燃料消耗量的线性有效不等式。为了验证所提出的模型,首先,通过一个示例对模型进行了求解。然后分别考虑成本目标函数的每个组成部分,以研究每个组成部分对获得的解的影响以及车辆速度对运输策略的重要性。计算分析表明,尽管存在适当的服务基础设施的限制,但所提出的模型在碳排放成本、总配送成本和运输成本方面分别平均降低了44%、6%和5%。此外,该研究发现了平均速度的矛盾影响,这表明需要进行权衡:虽然更高的速度降低了服务成本,但却增加了碳排放成本。在下一阶段,解决了一些根据文献修改的实验。根据这些实验,在所有情况下,汽油车都获得了更大的目标函数值。碳排放目标的差异也很大,平均增长了44.23%。最后,讨论了管理和体制方面的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Optimization in Industrial Engineering
Journal of Optimization in Industrial Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
2.90
自引率
0.00%
发文量
0
审稿时长
32 weeks
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