一种新的具有异构车队和燃油约束的多目标绿色定位路径问题

M. Rabbani, M. Davoudkhani, H. Farrokhi-asl
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引用次数: 11

摘要

本文提出了多目标绿色位置路由问题的一种新变体,其中每条路径的起始位置和结束位置可以不同。在本文中,作者提出了考虑环境问题的MOGLRP的一个新的数学公式。MOGLRP的问题是寻找路线的车辆,以服务一组客户,同时最小化总行驶距离,最小化总成本,包括车辆的固定成本和可变的旅行成本和二氧化碳排放。为了求解所提出的模型,采用了两种求解方法。首先,采用一种能够求解小尺度问题的精确方法。由于精确的方法无法在合理的时间内解决np困难问题,因此考虑了第二种方法,即多目标进化算法MOEA来处理大型实例。利用非支配排序遗传算法NSGA-II和多目标粒子群优化MOPSO、强度帕累托进化算法II SPEA-II和帕累托包膜选择算法II PESA-II四种著名的多目标进化算法对得到的结果进行比较。对比结果表明,该算法在数量度量、多样化度量、间隔度量和平均理想距离四个性能度量方面都达到了较好的效果。最后,对本文的结论和未来的研究方向进行了展望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Multi-Objective Green Location Routing Problem with Heterogonous Fleet of Vehicles and Fuel Constraint
This paper introduces a new variant of Multi-Objective Green Location Routing Problem MOGLRP in which the start and end location of each route can be distinct. In this paper, the authors present a new mathematical formulation for the MOGLRP with consideration of environmentally issues. MOGLRP states for the problem of finding routes for vehicles to serve a set of customers while minimizes the total traveled distance, minimizes the total cost including vehicle fixed cost and variable travel cost and the co2 emissions. In order to solve the proposed model, two solution methods are used. Firstly, an exact method which is able to solve small sized problems is applied. Since the exact methods are not able to solve NP-hard problems in a reasonable time, the second method which is called multi-objective evolutionary algorithms MOEA are taken into account to deal with large instances. Furthermore, four well-known multi-objective evolutionary algorithms, including non-dominated sorting genetic algorithm NSGA-II and multi-objective particle swarm optimization MOPSO, Strength Pareto Evolutionary Algorithm II SPEA-II and Pareto Envelope-based Selection Algorithm II PESA-II are used to compare obtained results. A comparison results show the proficiency of the proposed algorithm with respect to the four performance metrics, including quantity metric, diversification metric, spacing metrics and mean ideal distance. Finally, concluding remarks and future research directions are provided.
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