Nanda Kumar Karippur, Pushpa Rani Balaramachandran, Elvin John
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引用次数: 0
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.
目的 本文旨在从技术-组织-环境(TOE)框架的角度,确定影响新加坡流程工业采用数据分析进行预测性维护(PdM)意向的关键因素。该研究模型有助于从业人员和研究人员为大规模重资产流程工业制定整体维护战略。设计/方法/途径本研究采用 TOE 框架来考虑一系列广泛的 TOE 因素,并在文献支持下建立研究模型。研究结果本研究强调了数字基础设施就绪程度、安全与隐私、高层管理支持、组织能力、与外部顾问的合作关系以及政府支持在影响数据分析在 PdM 中的应用意向方面的重要作用。本文报告了关于流程制造业采用数据分析意向的宝贵见解,对流程制造业公司的领导和高级管理人员、政府机构、技术顾问和服务提供商等各利益相关者具有重要意义。它揭示了影响采用意向的重要技术、组织和环境因素,并强调了相关见解和对利益相关者的影响。
期刊介绍:
The Journal of Manufacturing Technology Management (JMTM) aspires to be the premier destination for impactful manufacturing-related research. JMTM provides comprehensive international coverage of topics pertaining to the management of manufacturing technology, focusing on bridging theoretical advancements with practical applications to enhance manufacturing practices.
JMTM seeks articles grounded in empirical evidence, such as surveys, case studies, and action research, to ensure relevance and applicability. All submissions should include a thorough literature review to contextualize the study within the field and clearly demonstrate how the research contributes significantly and originally by comparing and contrasting its findings with existing knowledge. Articles should directly address management of manufacturing technology and offer insights with broad applicability.