Electricity demand forecasting with hybrid classical statistical and machine learning algorithms: Case study of Ukraine

被引:22
作者
Grandon, T. Gonzalez [1 ]
Schwenzer, J. [2 ]
Steens, T. [3 ]
Breuing, J. [4 ]
机构
[1] Norwegian Univ Sci & Technol, Sentralbygg 1, Trondheim, Norway
[2] Europa Univ Viadrina, Grosse Scharrnst 59, Frankfurt, Germany
[3] DLR Inst Networked Energy Syst, Carl von Ossietzky Str 15, Oldenburg, Germany
[4] Humboldt Univ, Spandauerst 1, Berlin, Germany
关键词
National electricity demand; Forecasting; ARIMA; LSTM; ECONOMIC-GROWTH; SHORT-TERM; LOAD; CONSUMPTION; MODEL; ARIMA;
D O I
10.1016/j.apenergy.2023.122249
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 article presents a novel hybrid approach using classic statistics and machine learning to forecast the national demand of electricity. As investment and operation of future energy systems require long-term electricity demand forecasts with hourly resolution, our mathematical model fills a gap in energy forecasting. The proposed methodology was constructed using hourly data from Ukraine's electricity consumption ranging from 2013 to 2020. To this end, we analysed the underlying structure of the hourly, daily and yearly time series of electricity consumption. The long-term yearly trend is evaluated using macroeconomic regression analysis. The mid-term model integrates temperature and calendar regressors to describe the underlying structure, and combines ARIMA and LSTM "black-box"pattern-based approaches to describe the error term. The short-term model captures the hourly seasonality through calendar regressors and multiple ARMA models for the residual. Results show that the best forecasting model is composed by combining multiple regression models and a LSTM hybrid model for residual prediction. Our hybrid model is very effective at forecasting long-term electricity consumption on an hourly resolution. In two years of out-of-sample forecasts with 17520 timesteps, it is shown to be within 96.83% accuracy.
引用
收藏
页数:12
相关论文
共 63 条
[1]  
Abadi M., 2015, TensorFlow: Large-scale machine learning on heterogeneous systems
[2]  
Agrawal RK, 2018, 2018 IEEE TEXAS POWER AND ENERGY CONFERENCE (TPEC)
[3]  
Akaike H., 1998, International Symposium on Information Theory, Budapest, Proceedings, P199, DOI [DOI 10.1007/978-1-4612-1694-0_15, 10.1007/978-1-4612-1694-015, 10.1007/978-1-4612-1694-0_15, DOI 10.1007/978-1-4612-1694-015]
[4]   A Comprehensive Review of the Load Forecasting Techniques Using Single and Hybrid Predictive Models [J].
Al Mamun, Abdullah ;
Sohel, Md ;
Mohammad, Naeem ;
Sunny, Md Samiul Haque ;
Dipta, Debopriya Roy ;
Hossain, Eklas .
IEEE ACCESS, 2020, 8 :134911-134939
[5]   Short-term electricity demand forecasting using machine learning methods enriched with ground-based climate and ECMWF Reanalysis atmospheric predictors in southeast Queensland, Australia [J].
AL-Musaylh, Mohanad S. ;
Deo, Ravinesh C. ;
Adamowski, Jan F. ;
Li, Yan .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2019, 113
[6]   Electricity consumption and economic growth: Evidence from Turkey [J].
Altinay, G ;
Karagol, E .
ENERGY ECONOMICS, 2005, 27 (06) :849-856
[7]   Electricity demand for Sri lanka: A time series analysis [J].
Amarawickrama, Himanshu A. ;
Hunt, Lester C. .
ENERGY, 2008, 33 (05) :724-739
[8]   Long-term forecasting of hourly electricity load: Identification of consumption profiles and segmentation of customers [J].
Andersen, F. M. ;
Larsen, H. V. ;
Boomsma, T. K. .
ENERGY CONVERSION AND MANAGEMENT, 2013, 68 :244-252
[9]  
Angelopoulos D, 2017, 2017 IEEE MANCHESTER POWERTECH
[10]  
[Anonymous], 2022, R: A language and environment for statistical computing