Optimization of energy acquisition system in smart grid based on artificial intelligence and digital twin technology

被引:0
作者
Jing, Zhen [1 ]
Wang, Qing [1 ]
Chen, Zhiru [1 ]
Cao, Tong [1 ]
Zhang, Kun [2 ]
机构
[1] Marketing Service Center (Metrology Center), State Grid Shandong Electric Power Company, Jinan
[2] D Center, Shandong Doreen Power Technology Co., Ltd, Jinan
关键词
Convolutional neural networks; Digital twin; Energy harvesting; Optimization; Smart grid;
D O I
10.1186/s42162-024-00425-0
中图分类号
学科分类号
摘要
In response to the low operating speed and poor stability of energy harvesting systems in smart grids, an energy harvesting optimization method based on improved convolutional neural networks and digital twin technology is proposed in the experiment. Firstly, a smart grid data transmission framework integrating digital twin technology is proposed. A digital twin mapping method based on time, data, and topology structure is used to realize the digital twin mapping at the device level of power grid. Through data synchronization and interaction between the physical power grid and the digital twin model, the operational efficiency and reliability of the power grid are improved. Then, the classical convolutional neural network and attention mechanism are used to comprehensively analyze the physical topology data in the smart grid energy acquisition system. The improved lightweight target detection model is combined to monitor the equipment status of the smart grid and extract key features. Simultaneously utilizing convolutional attention mechanism to dynamically adjust the feature weights of channels or spaces, completing the preprocessing of energy harvesting data. Finally, combined with energy harvesting and power grid switching system, the process of energy harvesting and power grid operation are optimized together. On the training and validation sets, when the channels exceeded 60, the proposed method achieved a system energy efficiency of 55% during operation. The system energy efficiency of the other three comparative algorithms was all less than 40%. In practical applications, as the energy transfer loss increased to 1.0, the system throughput increased to 50 bits. The electricity needs of different users were met, and the difference between power allocation and optimal power allocation was small, which was very reasonable. This proves that the research has effectively optimized the energy harvesting system in the smart grid, improving the efficiency and reliability of the system in practical applications of the smart grid. At the same time, in the increasingly severe energy problem, this system can further provide technical references for the utilization of renewable energy and help achieve the goal of sustainable energy. © The Author(s) 2024.
引用
收藏
相关论文
共 26 条
  • [1] Zhao F., Chen Y., Zhang Y., Liu Z., Chen X., Dynamic offloading and resource scheduling for mobile-edge computing with energy harvesting devices, IEEE Trans Netw Serv Manage, 18, 2, pp. 2154-2165, (2021)
  • [2] Deng X., Guan P., Hei C., Li F., Liu J., Xiong N., An intelligent resource allocation scheme in energy harvesting cognitive wireless sensor networks, IEEE Trans Netw Sci Eng, 8, 2, pp. 1900-1912, (2021)
  • [3] Paul A., Maity S.P., Outage analysis in cognitive radio networks with energy harvesting and Q-routing, IEEE Trans Veh Technol, 69, 6, pp. 6755-6765, (2020)
  • [4] Pal S., Roy A., Shivakumara P., Pal U., Adapting a swin transformer for license plate number and text detection in drone images, Artif Intell Appl, 1, 3, pp. 145-154, (2023)
  • [5] Xie Z., Song X., A renewable-energy-driven energy-harvesting-based task scheduling and energy management framework, ICT Express, 10, 1, pp. 39-45, (2024)
  • [6] Hu S., Chen X., Ni W., Wang X., Hossain E., Modeling and analysis of energy harvesting and smart grid-powered wireless communication networks: a contemporary survey, IEEE Trans Green Commun Netw, 4, 2, pp. 461-496, (2020)
  • [7] Zhang H., Wang Y., Ji H., Li X., A sleeping mechanism for cache-enabled small cell networks with energy harvesting function, IEEE Trans Green Commun Netw, 4, 2, pp. 497-505, (2020)
  • [8] Jiang Z., Lv H., Li Y., Guo Y., A novel application architecture of digital twin in smart grid, J Ambient Intell Humaniz Comput, 13, 8, pp. 3819-3835, (2022)
  • [9] Mansour D.E.A., Numair M., Zalhaf A.S., Ramadan R., Darwish M.M., Huang Q., Abdel-Rahim O., Applications of IoT and digital twin in electrical power systems: A comprehensive survey, IET Generation, Transmission & Distribution, 17, 20, pp. 4457-4479, (2023)
  • [10] Kovalyov S.P., Distributed energy resources management: from digital twin to digital platform, IFAC-PapersOnLine, 55, 9, pp. 460-465, (2022)