Back to Search Start Over

Data-driven quality improvement approach to reducing waste in manufacturing.

Authors :
Clancy, Rose
O'Sullivan, Dominic
Bruton, Ken
Source :
TQM Journal; 2023, Vol. 35 Issue 1, p51-72, 22p
Publication Year :
2023

Abstract

Purpose: Data-driven quality management systems, brought about by the implementation of digitisation and digital technologies, is an integral part of improving supply chain management performance. The purpose of this study is to determine a methodology to aid the implementation of digital technologies and digitisation of the supply chain to enable data-driven quality management and the reduction of waste from manufacturing processes. Design/methodology/approach: Methodologies from both the quality management and data science disciplines were implemented together to test their effectiveness in digitalising a manufacturing process to improve supply chain management performance. The hybrid digitisation approach to process improvement (HyDAPI) methodology was developed using findings from the industrial use case. Findings: Upon assessment of the existing methodologies, Six Sigma and CRISP-DM were found to be the most suitable process improvement and data mining methodologies, respectively. The case study revealed gaps in the implementation of both the Six Sigma and CRISP-DM methodologies in relation to digitisation of the manufacturing process. Practical implications: Valuable practical learnings borne out of the implementation of these methodologies were used to develop the HyDAPI methodology. This methodology offers a pragmatic step by step approach for industrial practitioners to digitally transform their traditional manufacturing processes to enable data-driven quality management and improved supply chain management performance. Originality/value: This study proposes the HyDAPI methodology that utilises key elements of the Six Sigma DMAIC and the CRISP-DM methodologies along with additions proposed by the author, to aid with the digitisation of manufacturing processes leading to data-driven quality management of operations within the supply chain. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
17542731
Volume :
35
Issue :
1
Database :
Complementary Index
Journal :
TQM Journal
Publication Type :
Academic Journal
Accession number :
161275401
Full Text :
https://doi.org/10.1108/TQM-02-2021-0061