Digital Twin: From Concept to Practice
January 14, 2022 Β· Declared Dead Β· π Journal of Management in Engineering
"No code URL or promise found in abstract"
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Authors
Ashwin Agrawal, Martin Fischer, Vishal Singh
arXiv ID
2201.06912
Category
cs.SE: Software Engineering
Cross-listed
cs.AI,
cs.HC
Citations
70
Venue
Journal of Management in Engineering
Last Checked
3 months ago
Abstract
Recent technological developments and advances in Artificial Intelligence (AI) have enabled sophisticated capabilities to be a part of Digital Twin (DT), virtually making it possible to introduce automation into all aspects of work processes. Given these possibilities that DT can offer, practitioners are facing increasingly difficult decisions regarding what capabilities to select while deploying a DT in practice. The lack of research in this field has not helped either. It has resulted in the rebranding and reuse of emerging technological capabilities like prediction, simulation, AI, and Machine Learning (ML) as necessary constituents of DT. Inappropriate selection of capabilities in a DT can result in missed opportunities, strategic misalignments, inflated expectations, and risk of it being rejected as just hype by the practitioners. To alleviate this challenge, this paper proposes the digitalization framework, designed and developed by following a Design Science Research (DSR) methodology over a period of 18 months. The framework can help practitioners select an appropriate level of sophistication in a DT by weighing the pros and cons for each level, deciding evaluation criteria for the digital twin system, and assessing the implications of the selected DT on the organizational processes and strategies, and value creation. Three real-life case studies illustrate the application and usefulness of the framework.
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