Pattern similarity-based machine learning methods for mid-term load forecasting: A comparative study

被引:33
作者
Dudek, Grzegorz [1 ]
Pelka, Pawel [1 ]
机构
[1] Czestochowa Tech Univ, Fac Elect Engn, 17 Armii Krajowej Ave, PL-42200 Czestochowa, Poland
关键词
Pattern similarity-based forecasting models; Mid-term load forecasting; Time series representation; MEDIUM-TERM; ENERGY DEMAND; NEURAL-NETWORKS; MODELS; CLASSIFICATION; CONSUMPTION;
D O I
10.1016/j.asoc.2021.107223
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Pattern similarity-based frameworks are widely used for classification and regression problems. Repeated, similar-shaped cycles observed in seasonal time series encourage the use of such frameworks for forecasting. In this paper, we use pattern similarity-based models for mid-term load forecasting. An integral part of these models is the use of patterns of time series sequences for time series representation. Pattern representation ensures input and output data unification through trend filtering and variance equalization. This simplifies the forecasting problem and allows us to use models based on pattern similarity. We consider four such models: nearest-neighbor model, fuzzy neighborhood model, kernel regression model, and general regression neural network. Three variants of the approach were proposed. A basic one and two hybrid solutions combining similarity-based and statistical methods (ARIMA and exponential smoothing). In the experimental part of the work, the proposed models were used to forecast the monthly electricity demand in 35 European countries. The results show the high performance of the proposed models, which outperform both the comparative classical statistical models and machine learning models in terms of accuracy, simplicity, and ease of optimization. Among the proposed variants, a hybrid approach combining similarity-based methods with exponential smoothing turned out to be the most accurate. The study highlights the many advantages of the proposed pattern similarity based models such as clear operation principles, a small number of parameters to adjust, no training procedure, fast optimization procedure, good generalization ability, ability to work on the newest data without retraining, and delivery of multi-step forecasts. (c) 2021 Elsevier B.V. All rights reserved.
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页数:14
相关论文
共 41 条
[1]   Potential of three variant machine-learning models for forecasting district level medium-term and long-term energy demand in smart grid environment [J].
Ahmad, Tanveer ;
Chen, Huanxin .
ENERGY, 2018, 160 :1008-1020
[2]  
Al-Hamadi HM, 2005, ELECTR POW SYST RES, V74, P353, DOI 10.1016/j.epsr.2004.10.015
[3]   Relationships between meteorological variables and monthly electricity demand [J].
Apadula, Francesco ;
Bassini, Alessandra ;
Elli, Alberto ;
Scapin, Simone .
APPLIED ENERGY, 2012, 98 :346-356
[4]  
Atkeson CG, 1997, ARTIF INTELL REV, V11, P11, DOI 10.1023/A:1006559212014
[5]   Modeling of nonstationary time-series data. Part II. Dynamic periodic trends [J].
Barakat, EH .
INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2001, 23 (01) :63-68
[6]   Empirical Mode Decomposition Based Deep Learning for Electricity Demand Forecasting [J].
Bedi, Jatin ;
Toshniwal, Durga .
IEEE ACCESS, 2018, 6 :49144-49156
[7]   Wavelet-based nonlinear multiscale decomposition model for electricity load forecasting [J].
Benaouda, D. ;
Murtagh, F. ;
Starck, J. -L. ;
Renaud, O. .
NEUROCOMPUTING, 2006, 70 (1-3) :139-154
[8]   Mid Term Load Forecasting of the Country Using Statistical Methodology: Case study in Thailand [J].
Bunnoon, Pituk ;
Chalermyanont, Kusumal ;
Limsakul, Chusak .
PROCEEDINGS OF THE 2009 INTERNATIONAL CONFERENCE ON SIGNAL PROCESSING SYSTEMS, 2009, :924-928
[9]   Monthly electricity demand forecasting based on a weighted evolving fuzzy neural network approach [J].
Chang, Pei-Chann ;
Fan, Chin-Yuan ;
Lin, Jyun-Jie .
INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2011, 33 (01) :17-27
[10]   Forecasting monthly electricity demands: An application of neural networks trained by heuristic algorithms [J].
Chen, Jeng-Fung ;
Lo, Shih-Kuei ;
Do, Quang Hung .
Information (Switzerland), 2017, 8 (01)