Knowledge Agora



Similar Articles

Title Big data analytics in mitigating challenges of sustainable manufacturing supply chain
ID_Doc 67204
Authors Raj, R; Kumar, V; Verma, P
Title Big data analytics in mitigating challenges of sustainable manufacturing supply chain
Year 2023
Published Operations Management Research, 16, 4
Abstract Manufacturing Supply Chain (MSC) becomes more complex not only from the business viewpoint but also for environmental care and sustainability. Despite the current progress in realizing how Big Data Analytics (BDA) can considerably enhance the Sustainable Manufacturing Supply Chain (SMSC), there is a major research gap in the storyline relating to factors of Big Data-based operations in managing several forms of SMSC operations. This study attempts to fill this major research gap by studying the key challenges of using Big Data in SMSC operations obtained from IoT devices, group behavior parameters, social networks, and ecosystem frameworks. Big Data Analytics (BDA) is receiving more attention in management, yet there is relatively little empirical research available on the topic. The authors use the multi-criteria strategy employing analytic hierarchy process (AHP) and grey relational analysis (GRA) methodology due to the dearth of comparable information at the junction of BDA and MSC. The presented multi-criteria strategy findings add to the body of understanding by identifying eleven critical criteria and five associated challenges (Financial, Quality, Operation, Technical, and Logistics) related to the emergence of Big Data Analytics from a corporate and supply chain perspective. The findings reveal that product safety barriers (C4) and lack of information sharing (C8) are the critical factor immensely surge and affect the MSC in attaining sustainability. As no empirical study has yet been presented, it is important to examine the challenges at the organizational and MSC levels with a focus on the effects of BDA implementation to achieve sustainability with enhanced customer trust and improved SMSC performance.
PDF

Similar Articles

ID Score Article
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)
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)
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)
65962 Narwane, VS; Raut, RD; Yadav, VS; Cheikhrouhou, N; Narkhede, BE; Priyadarshinee, P The role of big data for Supply Chain 4.0 in manufacturing organisations of developing countries(2021)Journal Of Enterprise Information Management, 34.0, 5
19567 Rashid, A; Baloch, N; Rasheed, R; Ngah, AH Big data analytics-artificial intelligence and sustainable performance through green supply chain practices in manufacturing firms of a developing country(2024)
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)
18552 Gholami, H; Lee, JKY; Ali, A Big Data Analytics for Sustainable Products: A State-of-the-Art Review and Analysis(2023)Sustainability, 15.0, 17
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)
3868 Cheng, TCE; Kamble, SS; Belhadi, A; Ndubisi, NO; Lai, KH; Kharat, MG Linkages between big data analytics, circular economy, sustainable supply chain flexibility, and sustainable performance in manufacturing firms(2022)International Journal Of Production Research, 60, 22
34492 Raut, RD; Mangla, SK; Narwane, VS; Gardas, BB; Priyadarshinee, P; Narkhede, BE Linking big data analytics and operational sustainability practices for sustainable business management(2019)
Scroll