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A green vehicle routing model based on modified particle swarm optimization for cold chain logistics

机译:基于改进粒子群算法的冷链物流绿色车辆路径模型

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Purpose This paper studies green vehicle routing problems of cold chain logistics with the consideration of the full set of greenhouse gas (GHG) emissions and an optimization model of green vehicle routing for cold chain logistics (with an acronym of GVRPCCL) is developed. The purpose of this paper is to minimize the total costs, which include vehicle operating cost, quality loss cost, product freshness cost, penalty cost, energy cost and GHG emissions cost. In addition, this research also investigates the effect of changing the vehicle maximum load in relation to cost and GHG emissions. Design/methodology/approach This study develops a mathematical optimization model, considering the total cost and GHG emission. The standard particle swarm optimization and modified particle swarm optimization (MPSO), based on an intelligent optimization algorithm, are applied in this study to solve the routing problem of a real case. Findings The results of this study show the extend of the proposed MPSO performing better in achieving green-focussed vehicle routing and that considering the full set of GHG costs in the objective functions will reduce the total costs and environmental-diminishing emissions of GHG through the comparative analysis. The research outputs also evaluated the effect of different enterprises' conditions (e.g. customers' locations and demand patterns) for better distribution routes planning. Originality/value Prior studies, particularly in green cold chain logistics vehicle routing problem, are fairly limited. The prior works revolved around GHG emissions problem have not considered methane and nitrous oxides. This study takes into account the characteristics of cold chain logistics and the full set of GHGs.
机译:目的本文在考虑温室气体排放总量的基础上研究冷链物流中的绿色车辆路径问题,并建立了冷链物流中绿色车辆路径的优化模型(缩写为GVRPCCL)。本文的目的是使总成本最小化,其中包括车辆运营成本,质量损失成本,产品新鲜度成本,罚款成本,能源成本和温室气体排放成本。此外,本研究还研究了改变车辆最大负载与成本和温室气体排放量有关的影响。设计/方法/方法这项研究考虑了总成本和温室气体排放量,开发了一个数学优化模型。本研究采用基于智能优化算法的标准粒子群优化算法和改进的粒子群优化算法(MPSO)来解决实际案例的路由问题。调查结果研究结果表明,拟议的MPSO的扩展在实现绿色车辆路线方面表现得更好,并且考虑到目标函数中的全部温室气体成本,通过比较可降低总成本和减少环境温室气体排放分析。研究结果还评估了不同企业条件(例如客户的位置和需求模式)的影响,以更好地规划分销路线。原创性/价值先前的研究,特别是在绿色冷链物流车辆路径问题中的研究相当有限。围绕温室气体排放问题的先前工作并未考虑甲烷和一氧化二氮。这项研究考虑了冷链物流的特点和整套温室气体。

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