Evaluation of critical success determinants to the implementation of additive manufacturing technology in the spare parts supply chain: a grey causal modelling approach
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引用次数: 0
Abstract
PurposeAdditive Manufacturing technology (AMT) is swiftly gaining prominence to induce automation and innovation in manufacturing systems. It holds immense potential to change supply chain dynamics by providing the possibility of printing objects on demand. This study thus formulates and analyzes the framework to incorporate AMT to handle the spare parts supply chain management (SPSCM) in capital-intensive industries by identifying and assessing the critical success factors (CSFs).Design/methodology/approachAssessment of the CSFs is performed using the novel Grey Causal Modeling method (GCM) with the objective of making SPSCM resilient and efficient. GCM conducts causal analysis by taking into consideration cause, effects, the objectives, and the situations.FindingsFindings indicate that; Logistics Lead Time (SD4), Time to manufacture (SD3), Management Support (SD11), and Risk Management (SD20) are the most prominent causal factor having a maximum impact when incorporating AMT in SPSCM. The results also reveal that the performance of manufacturing organizations that adopt AMT is substantially influenced by internal and external factors such as Management Support (SD11) and Government Regulations (SD16).Research limitations/implicationsThis research provides valuable information for getting the global spare parts supply chain equipped for the post-COVID age, where digital technologies such as AMT will be fundamental for bolstering supply chain resilience and efficiency.Originality/valueThis research proposes a framework for performance assessment when incorporating AMT in SPSCM. Study also demonstrates methodological application of novel Grey Causal Modelling technique using a real case in a spare parts manufacturing industry in India.
目的快速成型制造技术(AMT)在促进制造系统自动化和创新方面的作用日益突出。它提供了按需打印物品的可能性,在改变供应链动态方面具有巨大潜力。因此,本研究通过识别和评估关键成功因素(CSFs),制定并分析了将 AMT 纳入资本密集型行业备件供应链管理(SPSCM)的框架。GCM 通过考虑原因、影响、目标和情况来进行因果分析。研究结果研究结果表明,在将 AMT 纳入 SPSCM 时,物流前置时间(SD4)、制造时间(SD3)、管理支持(SD11)和风险管理(SD20)是影响最大的突出因果因素。结果还显示,采用 AMT 的制造组织的绩效受到管理支持(SD11)和政府法规(SD16)等内部和外部因素的重大影响。研究局限/意义本研究为全球备件供应链在后 COVID 时代的装备提供了有价值的信息,在后 COVID 时代,AMT 等数字技术将成为提高供应链弹性和效率的基础。研究还利用印度备件制造业的实际案例,展示了新型灰色因果建模技术在方法论上的应用。
期刊介绍:
Business processes are a fundamental building block of organizational success. Even though effectively managing business process is a key activity for business prosperity, there remain considerable gaps in understanding how to drive efficiency through a process approach. Building a clear and deep understanding of the range process, how they function, and how to manage them is the major challenge facing modern business. Business Process Management Journal (BPMJ) examines how a variety of business processes intrinsic to organizational efficiency and effectiveness are integrated and managed for competitive success. BPMJ builds a deep appreciation of how to manage business processes effectively by disseminating best practice. Coverage includes: BPM in eBusiness, eCommerce and eGovernment Web-based enterprise application integration eBPM, ERP, CRM, ASP & SCM Knowledge management and learning organization Methodologies, techniques and tools of business process modeling, analysis and design Techniques of moving from one-shot business process re-engineering to continuous improvement Best practices in BPM Performance management Tools and techniques of change management BPM case studies.