Knowledge Agora



Similar Articles

Title Big data analytics in supply chain decarbonisation: a systematic literature review and future research directions
ID_Doc 18480
Authors Kumar, D; Singh, RK; Mishra, R; Vlachos, I
Title Big data analytics in supply chain decarbonisation: a systematic literature review and future research directions
Year 2024
Published International Journal Of Production Research, 62.0, 4
Abstract Supply chain decarbonisation has become a strategic requirement in the era of a net-zero economy. Despite the significant role of Big Data Analytics (BDA) in decarbonising the supply chain (SC), no prior study has evaluated it systematically. The present study aims to provide a systematic literature review on the applications and outcomes of big data analytics in SC decarbonisation. A total of 69 papers on applying BDA technology for supply chain decarbonisation published between 2016 and 2021 have been selected following the PRISMA protocol. The findings show that the topic is evolving. Studies employed methods such as surveys (30), case studies (11), and conceptual research designs (8). Thematic analysis reveals that 65% of the studies are grounded in resource-advantage theories, organisational theories, and system theories. Studies from India and China (35%) dominate the topic, while most studies have been conducted on the food and manufacturing industries. Further, this study applied the Antecedent-Decision-Outcomes (ADO) framework in BDA-based SC decarbonisation. Antecedents include BDA resources and capabilities, workforce skills, and supplier capabilities. Decisions refer to improving decision-making across the supply chain. Outcomes refer to improving decarbonisation, sustainable growth, and sustainable innovativeness. Future research directions and questions are provided using the Theory-Context-Methodology (TCM) framework.
PDF

Similar Articles

ID Score Article
6392 Jabbour, CJC; Fiorini, PD; Ndubisi, NO; Queiroz, MM; Piato, ÉL Digitally-enabled sustainable supply chains in the 21st century: A review and a research agenda(2020)
73310 Wang, G; Gunasekaran, A; Ngai, EWT; Papadopoulos, T Big data analytics in logistics and supply chain management: Certain investigations for research and applications(2016)
28273 Kazancoglu, Y; Pala, MO; Sezer, MD; Luthra, S; Kumar, A Drivers of implementing Big Data Analytics in food supply chains for transition to a circular economy and sustainable operations management(2021)
65766 Raut, RD; Mangla, SK; Narwane, VS; Dora, M; Liu, MQ Big Data Analytics as a mediator in Lean, Agile, Resilient, and Green (LARG) practices effects on sustainable supply chains(2021)
23450 Mahajan, PS; Agrawal, R; Raut, RD State-of-the-art perspectives on data-driven sustainable supply chain: A bibliometric and network analysis approach(2023)
73756 Bag, S; Wood, LC; Xu, L; Dhamija, P; Kayikci, Y Big data analytics as an operational excellence approach to enhance sustainable supply chain performance(2020)
18689 Shafique, MN; Yeo, SF; Tan, CL Roles of top management support and compatibility in big data predictive analytics for supply chain collaboration and supply chain performance(2024)
76152 Jeble, S; Dubey, R; Childe, SJ; Papadopoulos, T; Roubaud, D; Prakash, A Impact of big data and predictive analytics capability on supply chain sustainability(2018)International Journal Of Logistics Management, 29, 2
67204 Raj, R; Kumar, V; Verma, P Big data analytics in mitigating challenges of sustainable manufacturing supply chain(2023)Operations Management Research, 16, 4
4870 Perçin, S Evaluating the circular economy-based big data analytics capabilities of circular agri-food supply chains: the context of Turkey(2022)Environmental Science And Pollution Research, 29, 55
Scroll