[ 1 ] 陈珩 . 电力系统稳态分析(第 4 版)[ M ] . 北京:中国电力出版社,2015.[ 2 ] JIANG Z , SHI D , GUO X B , et al.Robust smart meter data analytics using smoothed ALS and dynamic time warping [ J ] .Energies , 2018 , 11 ( 6 ): 1401-1413.
[ 3 ] KUPPANNAGARI S R , FU Y , CHUENG C M , et al. Spatio-temporal missing data imputation for smart power grids [ C ] ∥Proceedings of the Twelfth ACM International Conference on Future Energy Systems. New York : ACM , 2021 : 458-465.
[ 4 ] PEPPANEN J , ZHANG X , GRIJALVA S , et al.Handling bad or missing smart meter data through advanced data imputation [ C ] ∥2016 IEEE Power and Energy Society Innovative Smart Grid Technologies Conference ( ISGT ) .New York : IEEE , 2016 : 1-5.
[ 5 ] FUNG D S.Methods for the estimation of missing values in time series [ D ] .Perth : Edith Cowan University , 2006.
[ 6 ] BORGES C E , KAMARA-ESTEBAN O , CASTILLO CALZADILLA T , et al.Enhancing the missing data imputation of primary substation load demand records [ J ] .Sustainable energy , grids and networks , 2020 , 23 : 100369.
[ 7 ] WU J J , KOIRALA A , VAN HERTEM D.Review of statistics based coping mechanisms for Smart Meter Missing Data in Distribution Systems [ C ] ∥2022 IEEE PES Innovative Smart Grid Technologies Conference Europe ( ISGT-Europe ) .New York : IEEE , 2022 : 1-6.
[ 8 ] PARK K , JEONG J , KIM D , et al.Missing-insensitive short-term load forecasting leveraging autoencoder and LSTM [ J ] .IEEE Access , 2020 , 8 : 206039-206048.
[ 9 ] RAGHUVAMSI Y , TEEPARTHI K.Distribution system state estimation with Transformer-Bi-LSTM based imputation model for missing measurements [ J ] . Neural computing and applications , 2024 , 36 ( 3 ):1295-1312.
[ 10 ] CAO W , WANG D , LI J , et al.Brits : bidirectional recurrent imputation for time series [ J ] .Advances in neural information processing systems , 2018 , 31 ( 1 ): 5159-5169.
[ 11 ] WU Z H , PAN S R , CHEN F W , et al.A comprehensive survey on graph neural networks [ J ] .IEEE Transactions on neural networks and learning systems , 2020 , 32 ( 1 ): 4-24.
[ 12 ] LIU Y X , JIN M , PAN S R , et al.Graph self-supervised learning : A survey [ J ] .IEEE Transactions on knowledge and data engineering , 2022 , 35 ( 6 ): 5879-5900.
[ 13 ] ANDREA C , IVAN M , ALIPPI C.Filling the G _ap_s : multivariate time series imputation by graph neural networks [ C ] ∥The Tenth International Conference on Learning Representations ( ICLR 2022 Poster ), 2022.
[ 14 ] KUMAR V , AYDAV P S S , MINZ S.Multi-view ensemble learning using multi-objective particle swarm optimization for high dimensional data classification [ J ] .Journal of King Saud University-computer and information sciences , 2022 , 34 ( 10 ): 8523-8537.
[ 15 ] MOHAMMED A , KORA R.A comprehensive review on ensemble deep learning : opportunities and challenges [ J ] .Journal of King Saud University-computer and information sciences , 2023 , 35 ( 2 ): 757-774.
[ 16 ] WOLPERT D H.Stacked generalization [ J ] .Neural networks , 1992 , 5 ( 2 ): 241-259.
[ 17 ] LIU W F , POKHAREL P P , PRINCIPE J C.Correntropy : properties and applications in non-Gaussian signal processing [ J ] .IEEE Transactions on signal processing , 2007 , 55 ( 11 ): 5286-5298.