A meta-learning based distribution system load forecasting model selection framework

被引:23
作者
Li, Yiyan [1 ]
Zhang, Si [1 ]
Hu, Rongxing [1 ]
Lu, Ning [1 ]
机构
[1] North Carolina State Univ, Future Renewable Elect Energy Delivery & Manageme, Elect & Comp Engn Dept, Raleigh, NC 27606 USA
关键词
Distribution system; Load forecasting; Machine learning; Meta-learning; Model selection; Ensemble learning; EXPERT-SYSTEM; DEMAND;
D O I
10.1016/j.apenergy.2021.116991
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
This paper presents a meta-learning based, automatic distribution system load forecasting model selection framework. The framework includes the following processes: feature extraction, candidate model preparation and labeling, offline training, and online model recommendation. Using load forecasting needs and data characteristics as input features, multiple metalearners are used to rank the candidate load forecast models based on their forecasting accuracy. Then, a scoring-voting mechanism is proposed to weights recommendations from each meta-leaner and make the final recommendations. Heterogeneous load forecasting tasks with different temporal and technical requirements at different load aggregation levels are set up to train, validate, and test the performance of the proposed framework. Simulation results demonstrate that the performance of the metalearning based approach is satisfactory in both seen and unseen forecasting tasks.
引用
收藏
页数:13
相关论文
共 44 条
[1]   A meta-learning approach to automatic kernel selection for support vector machines [J].
Ali, Shawkat ;
Smith-Miles, Kate A. .
NEUROCOMPUTING, 2006, 70 (1-3) :173-186
[2]  
[Anonymous], 2020, Pecan Street Dataport
[3]   Meta-learning in multivariate load demand forecasting with exogenous meta-features [J].
Arjmand, Azadeh ;
Samizadeh, Reza ;
Saryazdi, Mohammad Dehghani .
ENERGY EFFICIENCY, 2020, 13 (05) :871-887
[4]  
Benesty J, 2009, SPRINGER TOP SIGN PR, V2, P37, DOI 10.1007/978-3-642-00296-0_5
[5]   Day-ahead building-level load forecasts using deep learning vs. traditional time-series techniques [J].
Cai, Mengmeng ;
Pipattanasomporn, Manisa ;
Rahman, Saifur .
APPLIED ENERGY, 2019, 236 :1078-1088
[6]   Short-Term Load Forecasting: Similar Day-Based Wavelet Neural Networks [J].
Chen, Ying ;
Luh, Peter B. ;
Guan, Che ;
Zhao, Yige ;
Michel, Laurent D. ;
Coolbeth, Matthew A. ;
Friedland, Peter B. ;
Rourke, Stephen J. .
IEEE TRANSACTIONS ON POWER SYSTEMS, 2010, 25 (01) :322-330
[7]   Short-term electrical load forecasting using the Support Vector Regression (SVR) model to calculate the demand response baseline for office buildings [J].
Chen, Yongbao ;
Xu, Peng ;
Chu, Yiyi ;
Li, Weilin ;
Wu, Yuntao ;
Ni, Lizhou ;
Bao, Yi ;
Wang, Kun .
APPLIED ENERGY, 2017, 195 :659-670
[8]   Short-term building energy model recommendation system: A meta-learning approach [J].
Cui, Can ;
Wu, Teresa ;
Hu, Mengqi ;
Weir, Jeffery D. ;
Li, Xiwang .
APPLIED ENERGY, 2016, 172 :251-263
[9]   Evaluation of a multiple linear regression model and SARIMA model in forecasting heat demand for district heating system [J].
Fang, Tingting ;
Lahdelma, Risto .
APPLIED ENERGY, 2016, 179 :544-552
[10]  
Feurer M, 2015, 20 9 AAAI C ART INT