数字孪生动力学
Digital Twin Dynamics
Aims
Digital Twin Dynamics (DTD) is a peer-reviewed, interdisciplinary journal dedicated to advancing the science, engineering, and applications of digital twin technology across industries. Digital twins—virtual replicas of physical systems enabled by real-time monitoring, simulation, and optimizat...
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- Scopes
- The journal covers interdisciplinary research and applications related to digital twin technology, including but not limited to:
- Core technology development of digital twins: such as virtual modeling methods, real-time data acquisition and transmission technologies, dynamic simulation algorithms
- Validation and optimization of digital twins: involving model accuracy verification, system performance optimization, lifecycle management
- AI-driven digital twin modeling: including the application of machine learning and deep learning in twin model construction and predictive analysis
- Real-time data integration: cross-platform data fusion, edge computing and cloud collaboration, real-time data stream processing
- Interoperability of cyber-physical systems (CPS): seamless interaction between digital twins and physical systems, cross-system data sharing and collaboration mechanisms
- Industry-specific applications: practical implementations of digital twins in manufacturing (e.g., smart factories, equipment operation and maintenance), healthcare (e.g., patient virtual twins, personalized treatment simulation), smart cities (e.g., transportation systems, energy management), and aerospace (e.g., aircraft condition monitoring, fault prediction)
