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
Sitting on a gold mine: the story of the process industry's automatic formation of a digital twin
Mohammad Azangoo, Seppo Sierla, Valeriy Vyatkin
Robust 6DoF Pose Estimation Against Depth Noise and a Comprehensive Evaluation on a Mobile Dataset
Zixun Huang, Keling Yao, Seth Z. Zhao, Chuanyu Pan, Chenfeng Xu, Kathy Zhuang, Tianjian Xu, Weiyu Feng, Allen Y. Yang
Smart City Digital Twin Framework for Real-Time Multi-Data Integration and Wide Public Distribution
Lorenzo Adreani, Pierfrancesco Bellini, Marco Fanfani, Paolo Nesi, Gianni Pantaleo
Heterogeneous Feature Representation for Digital Twin-Oriented Complex Networked Systems
Jiaqi Wen, Bogdan Gabrys, Katarzyna Musial
Using Unsupervised and Supervised Learning and Digital Twin for Deep Convective Ice Storm Classification
Jason Swope, Steve Chien, Emily Dunkel, Xavier Bosch-Lluis, Qing Yue, William Deal
Digital Twin System for Home Service Robot Based on Motion Simulation
Zhengsong Jiang, Guohui Tian, Yongcheng Cui, Tiantian Liu, Yu Gu, Yifei Wang