Digital Twin Technology
3 researchers across 2 institutions
Researchers explore the creation and application of digital twins, which are virtual replicas of physical systems, processes, or products. This work involves developing methodologies for data acquisition, synchronization, and analysis to ensure the digital twin accurately reflects its physical counterpart. Research areas include modeling complex systems, simulating performance under various conditions, and using these insights for monitoring, predictive maintenance, and optimization. Specific applications range from replicating individual components to entire operational environments.
This research holds particular relevance for Arkansas's manufacturing and logistics sectors, enabling the optimization of production lines and supply chain management. Digital twins can also be applied to infrastructure monitoring, such as bridges and utilities, enhancing public safety and resource allocation. Furthermore, the development of advanced simulations can support agricultural technology, a significant part of the state's economy, by modeling crop growth and resource utilization.
This field draws upon expertise in areas such as advanced neural networks, robotics, industrial automation, and embedded systems. The research is conducted across multiple institutions within the state, fostering interdisciplinary collaboration and a broad base of expertise.
Top Researchers
| Name | Institution | h-index | Citations | Career Stage | Badges |
|---|---|---|---|---|---|
| Ali A. Abushaiba | UA Little Rock | 5 | 81 | ||
| Mohammad Rahman | UA Little Rock | 4 | 26 | ||
| Kelby Haulmark | University of Arkansas | 3 | 40 |
Related Research Areas
Cross-Institution Connections
Researchers at different institutions with overlapping expertise in Digital Twin Technology.