Acceso abierto

Construction and intelligent analysis of power grid physical data knowledge graph based on Internet of Things for power system


Cite

Dan L, Xin C, Huang C, et al. Intelligent Agriculture Greenhouse Environment Monitoring System Based on IOT Technology[C]//2015 International Conference on Intelligent Transportation, Big Data & Smart City (ICITBS). IEEE, 2016. Search in Google Scholar

Zhao J C, Zhang J F, Yu F, et al. The study and application of the IOT technology in agriculture[C]//IEEE International Conference on Computer Science & Information Technology. 0. Search in Google Scholar

Muzik V, Vostracky Z. Communication and Intelligent Control in a Power Grid Using Open Source IoT Technology[C]//2020 21st International Scientific Conference on Electric Power Engineering (EPE). 2020. Search in Google Scholar

Ali S, Rehman O, Cha K, et al. Performance Analysis of ZigBee-based IoT Prototype for Remote Monitoring in Power Grid Systems[C]//9th International Conference on Smart Media and Applications. 2020. Search in Google Scholar

ZHANG Kong, QIAN Gang. Research on named entity recognition technology for chinese titles[C]//Proceedings of The 2019 World Congress on Computational Intelligence, Engineering and Information Technology (WCEIT 2019), 2019: 713-720. Search in Google Scholar

Xiao J, Liu W, Zhao M X, et al. Research on Smart Energy System Technology Based on Cloud Computing Platform[J]. IOP Conference Series Earth and Environmental Science, 2020, 619:012010. Search in Google Scholar

Liu X, Zhou Q, Qin Q, et al. Research on the technology of Smart Energy Meter integrating time-sharing Metering and Billing[J]. IOP Conference Series: Earth and Environmental Science, 2021, 714(4):042051 (7pp). Search in Google Scholar

Patil N, Patil A, Pawar B V. Named entity recognition using conditional random fields[J]. Procedia Computer Science, 2020(167): 1181-1188. Search in Google Scholar

TAO Yuan, PENG Yanbing. Chinese named entity recognition based on Gated-CNN-CRF[J]. Electronic Design Engineering, 2020, 28(4): 42-46, 51. Search in Google Scholar

Zhang Y, Qian T, Tang W. Buildings-to-distribution-network integration considering power transformer loading capability and distribution network reconfiguration[J]. Energy, 2022, 244. Search in Google Scholar

Cheng Zhou, Li Bin, Sun Xiaobing. Improving software bugspecific named entity recognition with deep neural network[J]. Journal of Systems and Software, 2020, 165(7): 110572. Search in Google Scholar

T. Qian, Xingyu Chen, Yanli Xin, W. H. Tang, Lixiao Wang. Resilient Decentralized Optimization of Chance Constrained Electricity-gas Systems over Lossy Communication Networks [J]. Energy, 2022, 239, 122158. Search in Google Scholar

WU Yonghui, Jiang Min, Lei Jianbo, et al. Named entity recognition in chinese clinical text using deep neural network[J]. Studies in Health Technology and Informatics, 2015(216): 624-628. Search in Google Scholar

CH Fang, YN Tao, JG Eang, et al. Mapping Relation of Leakage Currents of Polluted Insulators and Discharge Arc Area[J]. Frontiers in Energy Research, 2021. Search in Google Scholar

HAN Hongqi, XU Shuo, GUI Jie. Term hierarchical relation extraction method based on morphology rule template[J]. Journal of The China Society for Scientific and Technical Information, 2013, 32(7): 708-715. Search in Google Scholar

T. Qian, Y. Liu, W. H Zhang, W. H. Tang, M. Shahidehpour. Event-Triggered Updating Method in Centralized and Distributed Secondary Controls for Islanded Microgrid Restoration[J]. IEEE Transactions on Smart Gird, 2020, 11(2): 1387-1395. Search in Google Scholar

Gao Haixiang, Miao Lu, Liu Jianing, et al. Review on knowledge graph and its application in power systems[J]. Guangdong Electric Power, 2020, 33(9): 66-76. Search in Google Scholar

Zhen W, Zhang J, Feng J, et al. Knowledge Graph Embedding by Translating on Hyperplanes[C]//National Conference on Artificial Intelligence. AAAI Press, 2014. Search in Google Scholar

WANG Yuan, PENG Chenhui, WANG Zhiqiang. Application of knowledge graph in full-service unified data center of national grid[J]. Computer Engineering and Applications, 2019, 55(15): 104-109. Search in Google Scholar

Tan Gang, Chen Yu, Peng Yunzhu. Hybrid domain feature knowledge graph smart question answering system[J]. Computer Engineering and Applications, 2020, 56(3): 232-239 Search in Google Scholar

Yang M, Chen K, Sun S, et al. A Pattern Driven Graph Ranking Approach to Attribute Extraction for Knowledge Graph[J]. IEEE Transactions on Industrial Informatics, 2021, PP(99):1-1. Search in Google Scholar

Nordsieck R, Heider M, Winschel A, et al. Knowledge Extraction via Decentralized Knowledge Graph Aggregation[C]//2021 IEEE 15th International Conference on Semantic Computing (ICSC). IEEE, 2021. Search in Google Scholar

Shen L, He R, Huang S. Entity alignment with adaptive margin learning knowledge graph embedding[J]. Data & Knowledge Engineering, 2022, 139:101987-. Search in Google Scholar

Yu J, Zhang Y, Wu Y, et al. Research on the Practical Application of Visual Knowledge Graph in Technology Service Model and Intelligent Supervision[J]. Journal of Physics: Conference Series, 2021, 1982(1):012040-. Search in Google Scholar

Wu Y. Summary of Research on Contract Risk Management of EPC General Contracting Project – Based on VOSviewer Knowledge Graph Analysis[J]. Springer Books, 2021. Search in Google Scholar

eISSN:
2444-8656
Idioma:
Inglés
Calendario de la edición:
Volume Open
Temas de la revista:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics