Key Laboratory of Special Equipment Manufacturing and Advanced Processing Technology, Ministry of Education, Zhejiang University of Technology, Hangzhou, China.
College of Computer Science, Zhejiang University of Technology, Hangzhou, China.
PLoS One. 2020 Apr 9;15(4):e0230867. doi: 10.1371/journal.pone.0230867. eCollection 2020.
Economic, environmental, and social effects are the most dominating issues in cold chain logistics. The goal of this paper is to propose a cost-saving, energy-saving, and emission-reducing bi-objective model for the cold chain-based low-carbon location-routing problem. In the proposed model, the first objective (economic and environmental effects) is to minimize the total logistics costs consisting of costs of depots to open, renting vehicles, fuel consumption, and carbon emission, and the second one (social effect) is to reduce the damage of cargos, which could improve the client satisfaction. In the proposed model, a strategy is developed to meet the requirements of clients as to the demands on the types of cargos, that is, general cargos, refrigerated cargos, and frozen cargos. Since the proposed problem is NP-hard, we proposed a simple and efficient framework combining seven well-known multiobjective evolutionary algorithms (MOEAs). Furthermore, in the experiments, we first examined the effectiveness of the proposed framework by assessing the performance of seven MOEAs, and also verified the efficiency of the proposed model. Extensive experiments were carried out to investigate the effects of the proposed strategy and variants on depot capacity, hard time windows, and fleet composition on the performance indicators of Pareto fronts and cold chain logistics networks, such as fuel consumption, carbon emission, travel distance, travel time, and the total waiting time of vehicles.
经济、环境和社会影响是冷链物流中最主要的问题。本文旨在提出一个基于冷链的低碳选址-路径问题的节约成本、节能和减排的双目标模型。在提出的模型中,第一个目标(经济和环境影响)是最小化由仓库开放、租用车辆、燃料消耗和碳排放成本组成的总物流成本,第二个目标(社会影响)是减少货物损坏,从而提高客户满意度。在提出的模型中,开发了一种策略来满足客户对货物类型的需求,即普通货物、冷藏货物和冷冻货物。由于所提出的问题是 NP 难问题,因此我们提出了一个结合七种著名多目标进化算法(MOEAs)的简单有效的框架。此外,在实验中,我们首先通过评估七种 MOEAs 的性能来检验所提出框架的有效性,还验证了所提出模型的效率。进行了广泛的实验,以研究所提出的策略和变体对仓库容量、硬时间窗口和车队组成对燃料消耗、碳排放、行驶距离、行驶时间和车辆总等待时间等帕累托前沿和冷链物流网络性能指标的影响。