Author Identifier
Muhammad Waqas: https://orcid.org/0000-0003-0814-7544
Document Type
Journal Article
Publication Title
IEEE Access
Volume
13
First Page
72142
Last Page
72152
Publisher
IEEE
School
School of Engineering
RAS ID
82056
Funders
Deanship of Scientific Research at King Khalid University (RGP.2/373/45)
Abstract
The Digital Twin (DT) technology is considered as a backbone in the Industrial 4.0 revolution as it is playing a vital role in the digitization of various industries. A DT is a virtual representation of a physical entity, thus having the ability to simulate real data generated at physical space to optimize, estimate, control, monitor and forecast states/configurations. Despite enormous benefits, DT technology has several implementation challenges. Although deploying DT on edge or cloud platforms yields a plethora of services, its implementation in both spaces faces certain limitations. These limitations include latency, data communication overload, transmission energy consumption, privacy concerns, and communication inefficiencies. It is evident that these shortcomings could significantly impact real-time monitoring and control. Therefore, when considering whether to deploy DT on the edge or on the cloud, it is necessary to make a trade-off, or alternatively, adopt a hybrid approach. However, it is important to acknowledge that even with a hybrid approach, the aforementioned issues will persist to some extent. To address these challenges, this article introduces two innovative approaches. Local DT (LDT) and Distributed DT (DDT). These deployment strategies are designed to mitigate latency, minimize data communication overload, reduce energy consumption, improve communication efficiency, and strengthen privacy measures. Thus, resulting in environmental and economic sustainability. Consequently, these advancements facilitate superior real-time monitoring and control capabilities. Through the utilization of LDT and DDT methodologies, organizations can harness the full potential of DT technology, thereby maximizing its benefits.
DOI
10.1109/ACCESS.2025.3561354
Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.
Comments
Rauf, S., Muhammad, F., Badshah, A., Alasmary, H., Waqas, M., & Chen, S. (2025). Novel digital twin deployment approaches: Local and distributed digital twin. IEEE Access, 13, 72142-72152. https://doi.org/10.1109/ACCESS.2025.3561354