供应链运营转型:通过利用人工智能(AI)推动向碳中和(CN)的转变,揭示前方的道路

IF 12.9 1区 管理学 Q1 BUSINESS
Li Zheng , Rong Zhou , Nidhi Singh , Muhammad Zafar Yaqub , Saeed Badghish
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引用次数: 0

摘要

碳排放的负面影响受到越来越多的关注,是一项重大挑战。最近的研究主要集中在通过使用先进的技术来促进网络和实现网络目标。虽然对不同技术的使用和影响存在一些争论,但在实现CN方面使用特定技术(如人工智能)的探索有限,特别是在供应链(SC)领域。本研究报告探讨了人工智能主导的人工智能网络和人工智能网络之间的交集,探索了定义这一不断发展的景观的多方面。本文旨在揭示围绕使用人工智能主导的颠覆性技术在SC操作中实现CN的复杂性和结果。作者对47项相关研究进行了全面的综述,以促进文献的批判性综合。基于广泛的文献综述,该研究确定了人工智能主导的CN目标的各种前因和后果,涵盖了可持续能源、数字和技术转型、生物质转化、废物管理以及SC领域的碳预测和会计等广泛主题的地理范围。研究结果揭示了人工智能主导的CN目标的几个先决条件,包括对能源供应问题、智能系统、进入绿色金融市场和炉渣废物优化的讨论,以及此类实施的一些后果,如基于人工智能的炉渣废物监测方法、生物质问题和碳中和等。该研究还制定了一个框架,突出了优化和运营阶段的各种人工智能主导的CN战略,以及一些人工智能主导的创新及其重要性。该研究提供了一些政策建议,例如设计减排政策,鼓励公私合作伙伴关系,制定监管框架以促进智能建筑的产业转型,以及管理与炉渣废物,生物质,能源系统和其他SC问题相关的不确定性,以确保人工智能主导的CN系统在SC领域的适当实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transforming supply chain operations: Unveiling the path ahead by leveraging artificial intelligence (AI) to drive the shift towards carbon neutrality (CN)
The negative impact of carbon emissions has received greater attention and is a significant challenge. Recent research has focused on promoting CN and achieving CN goals through the use of advanced techniques. While there is some debate on the use and influence of different technologies, there is a limited exploration of the use of specific technologies, such as AI, in achieving CN, particularly in the supply chain (SC) domain. This research paper examines the intersection between AI-led CN and SC, exploring the multifaceted aspects that define this evolving landscape. This paper aims to unravel the complexities and outcomes surrounding the use of AI-led disruptive technologies to achieve CN in SC operations. The authors conducted a comprehensive review of 47 relevant studies to facilitate a critical synthesis of the literature. Based on an extensive literature review, the study identified various antecedents and consequences of AI-led CN goals, spanning a geographical expanse under the broad themes of Sustainable Energy, Digital and Technological Transformation, Biomass Conversion, Waste Management, and Carbon Forecasting and Accounting in the SC domain. The findings revealed several antecedents to AI-led CN goals, including discussion on energy supply issues, intelligent systems, access to green financial markets, and slag waste optimization, as well as a few consequences of such implementation, such as AI-based methods to monitor slag waste, biomass concerns, and carbon neutrality, among others. The study also developed a framework, highlighting various AI-led CN strategies at the optimization and operational stages, as well as several AI-led innovations and their importance. The study offers a few policy suggestions, such as designing emission reduction policies, encouraging public-private partnerships, developing a regulatory framework to promote the industrial transformation of intelligent buildings, and managing uncertainties related to slag waste, biomass, energy systems, and other SC issues to ensure proper implementation of AI-led CN systems in the SC domain.
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来源期刊
CiteScore
21.30
自引率
10.80%
发文量
813
期刊介绍: Technological Forecasting and Social Change is a prominent platform for individuals engaged in the methodology and application of technological forecasting and future studies as planning tools, exploring the interconnectedness of social, environmental, and technological factors. In addition to serving as a key forum for these discussions, we offer numerous benefits for authors, including complimentary PDFs, a generous copyright policy, exclusive discounts on Elsevier publications, and more.
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