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Title Situation Awareness of Energy Internet of Things in Smart City Based on Digital Twin: From Digitization to Informatization
ID_Doc 39147
Authors He, X; Ai, Q; Wang, JB; Tao, F; Pan, B; Qiu, RB; Yang, B
Title Situation Awareness of Energy Internet of Things in Smart City Based on Digital Twin: From Digitization to Informatization
Year 2023
Published Ieee Internet Of Things Journal, 10, 9
DOI 10.1109/JIOT.2022.3203823
Abstract Rapid growth of diversity, uncertainty, and coupling effect of units in modern energy systems jointly challenges the traditional model-based situation awareness (SA) in Energy Internet of Things (EIoT). This work explores the digital twin of EIoT (EIoT-DT) and then provides a novel data-driven SA paradigm, named DT-SA, as a promising alternative. Based on the combination of the latest data technologies and machine learning algorithms, DT-SA transfers those stubborn SA challenges to digital space, and then addresses them by building a domain-specific and data-friendly digital twin (DT) model upon massive data. The established model can be quantitatively tested via iterative virtual-real interaction and, thus, be evaluated and updated through closed-loop feedback to improve its performance in the physical world. To this end, some engineering and scientific problems are raised: 1) virtual-real interaction mechanism relevant to resource flow and data flow; 2) unified modeling and analysis of heterogeneous spatial-temporal data; 3) DT configuration and evolution; and 4) domain-specific DT-SA characterization. To solve these problems, cloud-edge-terminal configuration, big data analytics (BDA), DT, and SA indicator systems are studied, respectively. Then, the random matrix theory (RMT) and overarching DT-SA framework are designed as a roadmap. Besides, some potential applications and undergoing projects on the terminal, edge, or cloud are discussed, e.g., condition assessment of equipment, digital monitoring and diagnosis of the power grid network, and EIoT construction in the smart city. Finally, some perspectives and recommendations are proposed in conclusion for future research. This research can be regarded as an efficient handbook for both energy engineering and data science, which may benefit enterprise digitization, smart city, etc.
Author Keywords Data models; Internet of Things; Uncertainty; Smart cities; Systematics; Digital twins; Complexity theory; Data driven; digital twin (DT); framework; high-dimensional indicator; jointly spatial-temporal analysis; situation awareness (SA); uncertainty
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:000976244700003
WoS Category Computer Science, Information Systems; Engineering, Electrical & Electronic; Telecommunications
Research Area Computer Science; Engineering; Telecommunications
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