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Digital Twinning, Artificial Intelligence, and Project Management 5.0: The Future of Intelligent Project Delivery

Paulson Geo Philip , Project Manager, UAE Television & Radio – Channel 4 Group City: Ajman Country: United Arab Emirate

Abstract

Contemporary changes in the nature of projects have brought up many challenges associated with the need to increase flexibility and adaptability of project management practices, including decision making under uncertainty, predictive control, stakeholder integration, and flexible implementation. Even though Artificial Intelligence (AI) and Digital Twining approaches separately exhibit substantial potentials for improving managerial practices, the way how they can be combined and incorporated into the new generation of Project Management 5.0 is still not well understood. In this research, we propose a new project delivery system that brings together key advantages of digital twins and AI techniques and incorporates them into the concept of Project Management 5.0. The introduced project delivery solution helps to realize the full-scale integration between project environments and their digital representation in order to improve visualizing, controlling, and managing projects through advanced analytics and decision support systems. Our project delivery solution creates an environment of continual learning based on feedback from project performance and continuous improvement through self-adapting project processes. This work contributes to advancing the theory of intelligent project management by introducing the notion of cognitive project intelligence that integrates predictive intelligence, digital synchronization, and human-AI cooperation.

Keywords

Integration of Digital Twins into project contexts, AI technology in project management systems, intelligent frameworks for Project Management 5.0, Cognitive project intelligence & decision making, autonomous project governance & human-AI collaboration projects.

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Philip, P. G. (2024). Digital Twinning, Artificial Intelligence, and Project Management 5.0: The Future of Intelligent Project Delivery . The American Journal of Interdisciplinary Innovations and Research, 6(12), 63–80. Retrieved from https://theamericanjournals.com/index.php/tajiir/article/view/digital-twinning-ai-project-management-5-0