Digital Twin
Digital twins are virtual representations of physical systems, aiming to mirror their behavior and enable predictive modeling, optimization, and analysis. Current research emphasizes developing digital twins across diverse domains, from supercomputers and transportation systems to healthcare and manufacturing, often employing machine learning models (like transformers and neural ODEs), graph-based methods, and large language models for data integration, prediction, and control. This technology's significance lies in its ability to improve efficiency, safety, and decision-making in various sectors by providing a virtual testing ground for complex systems and facilitating data-driven insights.
Papers
Leveraging Industry 4.0 -- Deep Learning, Surrogate Model and Transfer Learning with Uncertainty Quantification Incorporated into Digital Twin for Nuclear System
M. Rahman, Abid Khan, Sayeed Anowar, Md Al-Imran, Richa Verma, Dinesh Kumar, Kazuma Kobayashi, Syed Alam
Digital Twin and Artificial Intelligence Incorporated With Surrogate Modeling for Hybrid and Sustainable Energy Systems
Abid Hossain Khan, Salauddin Omar, Nadia Mushtary, Richa Verma, Dinesh Kumar, Syed Alam
Digital Twin in Safety-Critical Robotics Applications: Opportunities and Challenges
Sabur Baidya, Sumit K. Das, Mohammad Helal Uddin, Chase Kosek, Chris Summers
Edge-assisted Collaborative Digital Twin for Safety-Critical Robotics in Industrial IoT
Sumit K. Das, Mohammad Helal Uddin, Sabur Baidya
The Interplay of AI and Digital Twin: Bridging the Gap between Data-Driven and Model-Driven Approaches
Lina Bariah, Merouane Debbah
The Digital Twin Landscape at the Crossroads of Predictive Maintenance, Machine Learning and Physics Based Modeling
Brian Kunzer, Mario Berges, Artur Dubrawski
Online Trajectory Prediction for Metropolitan Scale Mobility Digital Twin
Zipei Fan, Xiaojie Yang, Wei Yuan, Renhe Jiang, Quanjun Chen, Xuan Song, Ryosuke Shibasaki