Reduction of carbon emissions under sustainable supply chain management with uncertain human learning

IF 1.6 Q4 ENVIRONMENTAL SCIENCES
Richi Singh, Dharmendra Yadav, S.R. Singh, Ashok Kumar, Biswajit Sarkar
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引用次数: 0

Abstract

Customers' growing concern for environmentally friendly goods and services has created a competitive and environmentally responsible business scenario. This global awareness of a green environment has motivated several researchers and companies to work on reducing carbon emissions and sustainable supply chain management. This study explores a sustainable supply chain system in the context of an imperfect flexible production system with a single manufacturer and multiple competitive retailers. It aims to reduce the carbon footprints of the developed system through uncertain human learning. Three carbon regulation policies are designed to control carbon emissions caused by various supply chain activities. Despite the retailers being competitive in nature, the smart production system with a sustainable supply chain and two-level screening reduces carbon emissions effectively with maximum profit. Obtained results explore the significance of uncertain human learning, and the total profit of the system increases to 0.039% and 2.23%, respectively. A comparative study of the model under different carbon regulatory policies shows a successful reduction in carbon emissions (beyond 20%), which meets the motive of this research.

人类学习不确定的可持续供应链管理下的碳减排
客户对环保产品和服务的日益关注创造了一个具有竞争力和对环境负责的商业场景。全球对绿色环境的意识促使一些研究人员和公司致力于减少碳排放和可持续供应链管理。本研究探讨了在单一制造商和多个竞争零售商的不完全柔性生产系统下的可持续供应链系统。它旨在通过不确定的人类学习来减少发达系统的碳足迹。三种碳调控政策旨在控制各种供应链活动造成的碳排放。尽管零售商本质上是竞争的,但具有可持续供应链和两级筛选的智能生产系统有效地减少了碳排放,实现了利润最大化。所得结果探讨了不确定人类学习的意义,系统的总收益分别提高到0.039%和2.23%。通过对模型在不同碳监管政策下的比较研究表明,该模型的碳排放量成功减少(超过20%),这符合本研究的动机。
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
AIMS Environmental Science
AIMS Environmental Science ENVIRONMENTAL SCIENCES-
CiteScore
2.90
自引率
0.00%
发文量
31
审稿时长
5 weeks
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