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A genetic algorithm for fuzzy random and low-carbon integrated forward/reverse logistics network design

机译:一种模糊随机和低碳集成前进/逆向物流网络设计的遗传算法

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摘要

Considering the influence of carbon emissions trading, the fuzzy stochastic programming model was established to cut back the total cost of carbon trading balance. Modeling this chain is carried out by accounting for carbon cap-and-trade considerations and total cost optimization. In this paper, we analyze the low-carbon integrated forward/reverse logistics network and made relevant simulation tests. The results show that the changes of the confidence level and carbon emission limits have obvious influences on logistics costs. If the emission limit is large, carbon trading mechanism has little effect on the total logistics cost in the same scenario. Therefore, the government needs to use the appropriate emission limits to guide enterprises to reduce carbon emissions, and enterprises can make coping strategies according to the different limit at the same time. Therefore, the fuzzy random programming model proposed in this paper is practical. Its decision making applying the proposed algorithm is reasonable and applicable and could provide decision basis for enterprise managers.
机译:考虑到碳排放交易的影响,建立了模糊随机编程模型,以减少碳交易余额的总成本。通过核算碳帽和贸易考虑和总成本优化来进行建模该链。在本文中,我们分析了低碳集成前/逆向物流网络并进行了相关的模拟测试。结果表明,置信水平和碳排放限制的变化对物流成本有明显影响。如果排放限制大,碳交易机制对同一情景中的物流成本几乎没有影响。因此,政府需要利用适当的排放限制来指导企业减少碳排放,企业可以根据不同的限制同时造成应对策略。因此,本文提出的模糊随机编程模型实用。它的决策应用所提出的算法是合理且适用的,可以为企业管理者提供决策依据。

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