在美国应用预测分析和机器学习技术促进可持续供应链运营和减少碳足迹

IF 0.5 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Md Rokibul Hasan, Md zahidul Islam, Mahfuz Alam, Md Sumsuzoha, Md Rokibul Hasan
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引用次数: 0

摘要

随着全球对气候变化和环境可持续发展的关注不断升级,在美国,人们越来越关注减少供应链运营中的排放和生态足迹。本研究探讨了预测分析和机器学习在供应链管理领域的应用,以减少碳排放,实现可持续运营。在本研究论文中,沃尔玛组织提供了用于本研究的所有供应链活动数据,其中包括其工业活动水平、生产产出、能源消耗、所用燃料类型、地理数据和天气条件等综合数据。对三种机器学习算法进行了训练和测试,特别是随机森林算法、XG-Boost 算法和 Bagging 算法。从所有指标来看,随机森林是最好的分类器,因为它具有出色的泛化能力、较高的精确度和召回率,以及较高的 AUC。根据结果,随机森林算法是所有评估模型中预测最准确的。 在美国,采用随机森林算法可以使企业受益,因为它具有高精确度和稳健性、灵活性、可扩展性、风险管理和缓解能力。就美国经济而言,部署随机森林可使政府在以下方面受益:减少碳足迹、吸引外国投资和增强竞争优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Analytics and Machine Learning Applications in the USA for Sustainable Supply Chain Operations and Carbon Footprint Reduction
With the escalating concerns worldwide regarding climate change and environmental sustainability, there is an increasing focus on emissions and ecological footprint reduction in supply chain operations in the USA. This study explored the application of predictive analytics and machine learning in the supply chain management domain for reducing carbon emissions and granting sustainable operations. For the present research paper, Walmart organization provided all the supply chain activity data used in this research study, it consisted of comprehensive data on their industrial activity levels, production outputs, energy consumption, types of fuels used, geographical data, and weather conditions. Three Machine learning algorithms were trained and tested, notably, Random Forest, XG-Boost, and the Bagging algorithm. Based on all the metrics, Random Forest was the best classifier because of its excellent generalization, high measure of precision and recall, and high AUC. As per the results, the random forest algorithm was the most accurate in its predictions of all the models evaluated.  Implementing the random forest benefits businesses in America with high accuracy and robustness, flexibility, scalability, risk management, and Mitigation. As regards the US economy, deploying the Random Forest can benefit the government in the following ways: reducing carbon footprint, attracting foreign investment, and enhancing competitive advantage. 
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来源期刊
Journal of Electrical Systems
Journal of Electrical Systems ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
1.10
自引率
25.00%
发文量
0
审稿时长
10 weeks
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