Otwarty dostęp

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

,  oraz   
30 lis 2022

Zacytuj
Pobierz okładkę

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

Język:
Angielski
Częstotliwość wydawania:
1 razy w roku
Dziedziny czasopisma:
Nauki biologiczne, Nauki biologiczne, inne, Matematyka, Matematyka stosowana, Matematyka ogólna, Fizyka, Fizyka, inne