UniLF: A novel short-term load forecasting model uniformly considering various features from multivariate load data

被引:0
作者
Zhou, Shiyang [1 ]
Zhang, Qingyong [1 ]
Xiao, Peng [1 ]
Xu, Bingrong [1 ]
Luo, Geshuai [1 ]
机构
[1] Wuhan Univ Technol, Sch Automat, Wuhan, Peoples R China
来源
SCIENTIFIC REPORTS | 2025年 / 15卷 / 01期
关键词
Short-term load forecasting; Smart grid; Deep learning; Mask-guided multiscale interactive self-attention mechanism; Convolutional enhancement-fusion embedding;
D O I
10.1038/s41598-025-88566-4
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Accurate short-term load forecasting (STLF) provides important support for the economic and stable operation of the power system. Although various deep learning methods have achieved good results in STLF, they usually model load features only from a limited perspective, i.e., they do not uniformly utilize the three features of multivariate load data: the influence of covariates, multiscale features and local-global variations. The insufficient mining of these three features limits the improvement of prediction accuracy. To address the above problems, we design a novel STLF model called UniLF based on Transformer framework, which contains the proposed convolutional enhancement-fusion embedding method to capture the correlations between load and covariates for embedding, the proposed feature reconstruction-decomposition block to distill multiscale features as well as more detailed local-global variations from 2D space and the core mask-guided multiscale interactive self-attention mechanism to further realize the enhanced interactions of scale features and temporal features. Experiments conducted on three load datasets from Australia, Panama and Austria show that UniLF achieves superior forecasting accuracy with competitive practical efficiency under different prediction lengths, providing a new solution for STLF.
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收藏
页数:15
相关论文
共 38 条
[1]  
Bai SJ, 2018, Arxiv, DOI [arXiv:1803.01271, 10.48550/arXiv.1803.01271]
[2]   A gradient boosting approach to the Kaggle load forecasting competition [J].
Ben Taieb, Souhaib ;
Hyndman, Rob J. .
INTERNATIONAL JOURNAL OF FORECASTING, 2014, 30 (02) :382-394
[3]   PSO-Stacking improved ensemble model for campus building energy consumption forecasting based on priority feature selection [J].
Cao, Yisheng ;
Liu, Gang ;
Sun, Jian ;
Bavirisetti, Durga Prasad ;
Xiao, Gang .
JOURNAL OF BUILDING ENGINEERING, 2023, 72
[4]   SHORT-TERM LOAD FORECASTING USING GENERAL EXPONENTIAL SMOOTHING [J].
CHRISTIAANSE, WR .
IEEE TRANSACTIONS ON POWER APPARATUS AND SYSTEMS, 1971, PA90 (02) :900-+
[5]  
Chung JY, 2014, Arxiv, DOI arXiv:1412.3555
[6]   Forecasting methods in energy planning models [J].
Debnath, Kumar Biswajit ;
Mourshed, Monjur .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2018, 88 :297-325
[7]   Multi-Scale Convolutional Neural Network With Time-Cognition for Multi-Step Short-Term Load Forecasting [J].
Deng, Zhuofu ;
Wang, Binbin ;
Xu, Yanlu ;
Xu, Tengteng ;
Liu, Chenxu ;
Zhu, Zhiliang .
IEEE ACCESS, 2019, 7 :88058-88071
[8]   Study and analysis of SARIMA and LSTM in forecasting time series data [J].
Dubey, Ashutosh Kumar ;
Kumar, Abhishek ;
Garcia-Diaz, Vicente ;
Sharma, Arpit Kumar ;
Kanhaiya, Kishan .
SUSTAINABLE ENERGY TECHNOLOGIES AND ASSESSMENTS, 2021, 47
[9]   Support Vector Regression Model Based on Empirical Mode Decomposition and Auto Regression for Electric Load Forecasting [J].
Fan, Guo-Feng ;
Qing, Shan ;
Wang, Hua ;
Hong, Wei-Chiang ;
Li, Hong-Juan .
ENERGIES, 2013, 6 (04) :1887-1901
[10]   On Short-Term Load Forecasting Using Machine Learning Techniques and a Novel Parallel Deep LSTM-CNN Approach [J].
Farsi, Behnam ;
Amayri, Manar ;
Bouguila, Nizar ;
Eicker, Ursula .
IEEE ACCESS, 2021, 9 :31191-31212