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Data driven predictive maintenance for large-scale asset-heavy process industries in Singapore

Nanda Kumar Karippur (Department of IT, S P Jain School of Global Management - Singapore Campus, Singapore, Singapore)
Pushpa Rani Balaramachandran (Department of IT, S P Jain School of Global Management - Singapore Campus, Singapore, Singapore)
Elvin John (Department of IT, S P Jain School of Global Management - Singapore Campus, Singapore, Singapore)

Journal of Manufacturing Technology Management

ISSN: 1741-038X

Article publication date: 21 March 2024

Issue publication date: 18 April 2024

178

Abstract

Purpose

This paper aims at identifying the key factors influencing the adoption intention of data analytics for predictive maintenance (PdM) from the lens of the Technology–Organization–Environment (TOE) framework in the Singapore Process Industries context. The research model aids practitioners and researchers in developing a holistic maintenance strategy for large-scale asset-heavy process industries.

Design/methodology/approach

The TOE framework has been used in this study to consider a wide set of TOE factors and develop a research model with the support of literature. A survey is undertaken and the structural equation modelling (SEM) technique is adopted to test the hypotheses of the proposed model.

Findings

This research highlights the significant roles of digital infrastructure readiness, security and privacy, top management support, organizational competence, partnership with external consultants and government support in influencing adoption intention of data analytics for PdM. Perceived challenges related to organizational restructuring and process automation are not found significant in influencing the adoption intention.

Practical implications

This paper reports valuable insights on adoption intention of data analytics for PdM with relevant implications for the various stakeholders such as the leaders and senior managers of process manufacturing industry companies, government agencies, technology consultants and service providers.

Originality/value

This research uniquely validates the model for the adoption of data analytics for PdM in the process industries using the TOE framework. It reveals the significant technology, organizational and environmental factors influencing the adoption intention and highlights the relevant insights and implications for stakeholders.

Keywords

Acknowledgements

The authors would like to thank the editor and the reviewers for their constructive inputs and suggestions for this paper.

Citation

Karippur, N.K., Balaramachandran, P.R. and John, E. (2024), "Data driven predictive maintenance for large-scale asset-heavy process industries in Singapore", Journal of Manufacturing Technology Management, Vol. 35 No. 3, pp. 544-567. https://doi.org/10.1108/JMTM-05-2023-0173

Publisher

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Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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