Open Access

Research on real-time data processing and evaluation of new power system wide-area digital metering equipment based on deep learning algorithm

, , , ,  and   
Mar 24, 2025

Cite
Download Cover

Kurnosov, R. Y., Chernyshova, T. I., & Chernyshov, V. N. (2021). Methodology for Assessing Metrological Reliability Analog-To-digital Converter in the Structure Information and Measurement Systems. In Proceedings-2021 3rd International Conference on Control Systems, Mathematical Modeling, Automation and Energy Efficiency, SUMMA 2021 (pp. 90-93). KurnosovR. Y.ChernyshovaT. I. & ChernyshovV. N. (2021). Methodology for Assessing Metrological Reliability Analog-To-digital Converter in the Structure Information and Measurement Systems. In Proceedings-2021 3rd International Conference on Control Systems, Mathematical Modeling, Automation and Energy Efficiency, SUMMA 2021 (pp. 90-93).Search in Google Scholar

Mustapää, T., Autiosalo, J., Nikander, P., Siegel, J. E., & Viitala, R. (2020, June). Digital Metrology for the Internet of Things. In Global Internet of Things Summit (p. 9119603). IEEE. MustapääT.AutiosaloJ.NikanderP.SiegelJ. E. & ViitalaR. (2020, June). Digital Metrology for the Internet of Things. In Global Internet of Things Summit (p. 9119603). IEEE.Search in Google Scholar

Eichstädt, S., Keidel, A., & Tesch, J. (2021). Metrology for the digital age. Measurement: Sensors, 18, 100232. EichstädtS.KeidelA. & TeschJ. (2021). Metrology for the digital age. Measurement: Sensors, 18, 100232.Search in Google Scholar

Heeren, W., Muller, B., Miele, G., Mustapaa, T., Hutzschenreuter, D., Brown, C., & Baer, O. (2021, June). SmartCom-Key findings for digitalisation in metrology. In IEEE International Workshop on Metrology for Industry 4.0 and IoT (pp. 364-369). IEEE. HeerenW.MullerB.MieleG.MustapaaT.HutzschenreuterD.BrownC. & BaerO. (2021, June). SmartCom-Key findings for digitalisation in metrology. In IEEE International Workshop on Metrology for Industry 4.0 and IoT (pp. 364-369). IEEE.Search in Google Scholar

Chen, Z. (2017). A digital metrology process model (MPM) for measuring planning and data analysis and its application with a computer-aided system. The International Journal of Advanced Manufacturing Technology, 92(5-8), 1967-1977. ChenZ. (2017). A digital metrology process model (MPM) for measuring planning and data analysis and its application with a computer-aided system. The International Journal of Advanced Manufacturing Technology, 92(5-8), 1967-1977.Search in Google Scholar

Kurnosov, R. Y., Chernyshova, T. I., Chernyshov, N. V., & Kamenskaya, M. A. (2020). Metrological Analysis of Analog-To-Digital Conversion Measurement Procedure in Information-Measuring and Control Systems. In Proceedings-2020 2nd International Conference on Control Systems, Mathematical Modeling, Automation and Energy Efficiency, SUMMA 2020 (pp. 61-64). KurnosovR. Y.ChernyshovaT. I.ChernyshovN. V. & KamenskayaM. A. (2020). Metrological Analysis of Analog-To-Digital Conversion Measurement Procedure in Information-Measuring and Control Systems. In Proceedings-2020 2nd International Conference on Control Systems, Mathematical Modeling, Automation and Energy Efficiency, SUMMA 2020 (pp. 61-64).Search in Google Scholar

Tiwari, A., & Pindoriya, N. M. (2022). Automated Demand Response in Smart Distribution Grid: A Review on Metering Infrastructure, Communication Technology and Optimization Models. Electric Power Systems Research, 206, 107835. TiwariA. & PindoriyaN. M. (2022). Automated Demand Response in Smart Distribution Grid: A Review on Metering Infrastructure, Communication Technology and Optimization Models. Electric Power Systems Research, 206, 107835.Search in Google Scholar

Stewart, R. A., Nguyen, K., Beal, C., Zhang, H., Sahin, O., Bertone, E., ... & Kossieris, P. (2018). Integrated intelligent water-energy metering systems and informatics: visioning a digital multi-utility service provider. Environmental Modelling and Software, 105, 94-117. StewartR. A.NguyenK.BealC.ZhangH.SahinO.BertoneE. ... & KossierisP. (2018). Integrated intelligent water-energy metering systems and informatics: visioning a digital multi-utility service provider. Environmental Modelling and Software, 105, 94-117.Search in Google Scholar

Mohebifard, R., & Hajbabaie, A. (2019). Distributed Optimization and Coordination Algorithms for Dynamic Traffic Metering in Urban Street Networks. IEEE Transactions on Intelligent Transportation Systems, 20(5). MohebifardR. & HajbabaieA. (2019). Distributed Optimization and Coordination Algorithms for Dynamic Traffic Metering in Urban Street Networks. IEEE Transactions on Intelligent Transportation Systems, 20(5).Search in Google Scholar

Somefun, T. E., Awosope, C. O. A., & Chiagoro, A. (2019). Smart prepaid energy metering system to detect energy theft with facility for real time monitoring. International Journal of Electrical and Computer Engineering, 9(5), 4184. SomefunT. E.AwosopeC. O. A. & ChiagoroA. (2019). Smart prepaid energy metering system to detect energy theft with facility for real time monitoring. International Journal of Electrical and Computer Engineering, 9(5), 4184.Search in Google Scholar

Haes Alhelou, H., Hamedani Golshan, M. E., & Hajiakbari Fini, M. (2018). Wind Driven Optimization Algorithm Application to Load Frequency Control in Interconnected Power Systems Considering GRC and GDB Nonlinearities. Electric Power Components and Systems, 46(11-12), 1223-1238. Haes AlhelouH.Hamedani GolshanM. E. & Hajiakbari FiniM. (2018). Wind Driven Optimization Algorithm Application to Load Frequency Control in Interconnected Power Systems Considering GRC and GDB Nonlinearities. Electric Power Components and Systems, 46(11-12), 1223-1238.Search in Google Scholar

Manna, D., Goswami, S. K., & Chattopadhyay, P. K. (2018). A Power Flow Solution Technique for Autonomous and Non Autonomous Mode of Operation of Microgrid System. Electric Power Components and Systems, 46(4), 429-444. MannaD.GoswamiS. K. & ChattopadhyayP. K. (2018). A Power Flow Solution Technique for Autonomous and Non Autonomous Mode of Operation of Microgrid System. Electric Power Components and Systems, 46(4), 429-444.Search in Google Scholar

Zhao, J., Tan, J., Wu, L., Zhan, L., Yao, W., & Liu, Y. (2019). Impact of the Measurement Errors on Synchrophasor-Based WAMS Applications. IEEE Access, 7. ZhaoJ.TanJ.WuL.ZhanL.YaoW. & LiuY. (2019). Impact of the Measurement Errors on Synchrophasor-Based WAMS Applications. IEEE Access, 7.Search in Google Scholar

Lin, Z., Wen, F., Ding, Y., Xue, Y., Liu, S., Zhao, Y., & Yi, S. (2018). WAMS-Based Coherency Detection for Situational Awareness in Power Systems With Renewables. IEEE Transactions on Power Systems, 33(5), 5410-5426. LinZ.WenF.DingY.XueY.LiuS.ZhaoY. & YiS. (2018). WAMS-Based Coherency Detection for Situational Awareness in Power Systems With Renewables. IEEE Transactions on Power Systems, 33(5), 5410-5426.Search in Google Scholar

Martinez-Velasco, J. A. (Ed.). (2017). Power System Transients: Parameter Determination. CRC Press. Martinez-VelascoJ. A. (Ed.). (2017). Power System Transients: Parameter Determination. CRC Press.Search in Google Scholar

Pershko, E. A., Karnaukhova, P. A., Starunskaya, E. I., & Belyaev, A. N. (2023, November). Improving Survivability of Electric Power Systems by WAMS Data Controlled Energy Storage. In 2023 Seminar on Industrial Electronic Devices and Systems (IEDS) (pp. 218-222). IEEE. PershkoE. A.KarnaukhovaP. A.StarunskayaE. I. & BelyaevA. N. (2023, November). Improving Survivability of Electric Power Systems by WAMS Data Controlled Energy Storage. In 2023 Seminar on Industrial Electronic Devices and Systems (IEDS) (pp. 218-222). IEEE.Search in Google Scholar

Talaei Khoei, T., Ould Slimane, H., & Kaabouch, N. (2023). Deep learning: systematic review, models, challenges, and research directions. Neural Computing and Applications, 35(31). Talaei KhoeiT.Ould SlimaneH. & KaabouchN. (2023). Deep learning: systematic review, models, challenges, and research directions. Neural Computing and Applications, 35(31).Search in Google Scholar

Roberts, D. A., Yaida, S., & Hanin, B. (2022). The Principles of Deep Learning Theory. Cambridge University Press. RobertsD. A.YaidaS. & HaninB. (2022). The Principles of Deep Learning Theory. Cambridge University Press.Search in Google Scholar

Jan Wittig,Georgios Tzortzinis,Niels Modler,Maria Lißner & Angelos Filippatos. (2025). Vibration-based ice monitoring of composite blades using artificial neural networks under different icing conditions. Cold Regions Science and Technology104379-104379. WittigJanTzortzinisGeorgiosModlerNielsLißnerMaria & FilippatosAngelos. (2025). Vibration-based ice monitoring of composite blades using artificial neural networks under different icing conditions. Cold Regions Science and Technology104379-104379.Search in Google Scholar

Qi Jin,Xuemei Chen,Chaolei Yang,Xuanjie Wang & Fang Wang. (2025). Optimization of heat exchanger with biomimetic shark skin riblet structure using artificial neural network. International Journal of Heat and Fluid Flow109720-109720. JinQiChenXuemeiYangChaoleiWangXuanjie & WangFang. (2025). Optimization of heat exchanger with biomimetic shark skin riblet structure using artificial neural network. International Journal of Heat and Fluid Flow109720-109720.Search in Google Scholar

Chenyang Li,Kit Ian Kou,Yanlin Zhang & Yang Liu.(2025). Advancements in exponential synchronization and encryption techniques: Quaternion-Valued Artificial Neural Networks with two-sided coefficients. Neural Networks106982-106982. LiChenyangKouKit IanZhangYanlin & LiuYang.(2025). Advancements in exponential synchronization and encryption techniques: Quaternion-Valued Artificial Neural Networks with two-sided coefficients. Neural Networks106982-106982.Search in Google Scholar

Faezeh Ghorbanizamani. (2025). A combinatorial approach to chicken meat spoilage detection using color-shifting silver nanoparticles, smartphone imaging, and artificial neural network (ANN). Food Chemistry142390-142390. GhorbanizamaniFaezeh. (2025). A combinatorial approach to chicken meat spoilage detection using color-shifting silver nanoparticles, smartphone imaging, and artificial neural network (ANN). Food Chemistry142390-142390.Search in Google Scholar

Language:
English