What is it about?
This work aims to review past and present articles about data-driven quality management (DDQM) in supply chains (SCs). The motive behind the review is to identify associated literature gaps and to provide a future research direction in the field of DDQM in SCs. A systematic literature review was done in the field of DDQM in SCs. SCOPUS database was chosen to collect articles in the selected field then an SLR methodology has been followed to review the selected articles. The bibliometric and network analysis has also been conducted to analyse the contributions of various authors, countries, and institutions in the field of DDQM in SCs. Network analysis was done by using VOS viewer package to analyse collaboration among researchers. The findings of the study reveal that the adoption of data-driven technologies and quality management tools can help in strategic decision making. The usage of data-driven technologies such as artificial intelligence and machine learning can significantly enhance the performance of supply chain operations and network. The paper discusses the importance of data-driven techniques enabling quality in SCs management systems. The linkage between the data-driven techniques and quality management for improving the SCs performance was also elaborated in the presented study.
Featured Image
Read the Original
This page is a summary of: A systematic and network-based analysis of data-driven quality management in supply chains and proposed future research directions, The TQM Journal, May 2021, Emerald,
DOI: 10.1108/tqm-12-2020-0285.
You can read the full text:
Contributors
The following have contributed to this page