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Forecasting daily electric load by applying artificial neural network with Fourier transformation and principal component analysis technique. (English) Zbl 1474.62427

Summary: In this paper, we propose a hybrid forecasting model (HFM) for the short-term electric load forecasting using artificial neural network (ANN), discrete Fourier transformation (DFT) and principal component analysis (PCA) techniques in order to attain higher prediction accuracy. Firstly, we estimate Fourier coefficients by the DFT for predicting the next-day load curve with an ANN and obtain approximate load curves by applying the inverse discrete Fourier transformation. Approximate curves, together with other input variables, are given to the ANN to predict the next-day hourly load curves. Furthermore, we predict PCA scores to obtain approximate load curves in the first step, which are then given to the ANN again in the second step. Both DFT and PCA models use input variables such as calendrical and meteorological data as well as past electric loads. Applying those models for forecasting hourly electric load in the metropolitan area of Japan for January and May in 2018, we train our models using historical data since January 2008. The forecast results show that the HFM consisting of “ANN with DFT” and “ANN with PCA” predicts next-day hourly loads more accurately than the conventional three-layered ANN approach. Their corresponding mean average absolute errors show 2.7% for ANN with DFT, 2.6% for ANN with PCA and 3.0% for the conventional ANN approach. We also find that in May, when electric demand is smaller with smaller fluctuations, forecasting errors are much smaller than January for all the models. Thus, we can conclude that the HFM would contribute to attaining significantly higher forecasting accuracy.

MSC:

62P20 Applications of statistics to economics
62H25 Factor analysis and principal components; correspondence analysis
62M45 Neural nets and related approaches to inference from stochastic processes
68T05 Learning and adaptive systems in artificial intelligence

Software:

Adam
Full Text: DOI

References:

[1] Kuster, C.; Rezgui, Y.; Mourshed, M., Electrical load forecasting models: a critical systematic review, Sustain. Cities Soc., 35, 257-270 (2017) · doi:10.1016/j.scs.2017.08.009
[2] Tucci, M.; Crisostomi, F.; Giunta, G.; Raugi, M., A multi-objective method for short-term load forecasting in European countries, IEEE Trans. Power Syst., 31, 5, 3537-3547 (2016) · doi:10.1109/TPWRS.2015.2509478
[3] Hippert, HS; Pedreira, CE; Souza, RC, Neural networks for short-term load forecasting: a review and evaluation, IEEE Trans. Power Syst., 16, 44-55 (2001) · doi:10.1109/59.910780
[4] Ceperic, E.; Ceperic, V.; Baric, B., A strategy for short-term load forecasting by support vector regression machines, IEEE Trans. Power Syst., 28, 4, 4356-4364 (2013) · doi:10.1109/TPWRS.2013.2269803
[5] Metaxiotis, K.; Kagiannas, A.; Askounis, D.; Psarras, J., Artificial intelligence in short term electric load forecasting: a state-of-the-art survey for the researcher, Energy Convers. Manag., 44, 9, 1525-1534 (2003) · doi:10.1016/S0196-8904(02)00148-6
[6] Huang, N.; Lu, G.; Xu, D., A permutation importance-based feature selection method for short-term electricity load forecasting using random forest, Energies, 9, 10, 767-790 (2016) · doi:10.3390/en9100767
[7] Lusis, P.; Khalilpour, KR; Andrew, L.; Liebman, A., Short-term residential load forecasting: impact of calendar effects and forecast granularity, Appl. Energy, 205, 654-669 (2017) · doi:10.1016/j.apenergy.2017.07.114
[8] Dudek, G., Pattern-based local linear regression models for short-term load forecasting, Electr. Power Syst. Res., 130, 139-147 (2016) · doi:10.1016/j.epsr.2015.09.001
[9] Kan, G.; Li, J.; Zhang, X.; Ding, L.; He, X.; Liang, K.; Jiang, X.; Ren, M.; Li, H.; Wang, F.; Zhang, Z.; Hu, Y., A new hybrid data-driven model for event-based rainfall-runoff simulation, Neural Comput. Appl., 29, 7, 577-593 (2016) · doi:10.1007/s00521-016-2534-y
[10] Rafiei, M.; Niknam, T.; Aghaei, J.; Shafie-khah, M.; Catalao, JPS, Probabilistic load forecasting using an improved wavelet neural network trained by generalized extreme learning machine, IEEE Trans. Smart Grid (2018) · doi:10.1109/TSG.2018.2807845
[11] Chen, J-F; Do, QH; Nguyen, TVA; Doan, TTH, Forecasting monthly electricity demands by wavelet neuro-fuzzy system optimized by heuristic algorithms, Information, 9, 3, 51 (2018) · doi:10.3390/info9030051
[12] Li, W.; Yang, X.; Li, H.; Su, L., Hybrid forecasting approach based on GRNN neural network and SVR machine for electricity demand forecasting, Energies, 10, 1, 44 (2017) · doi:10.3390/en10010044
[13] Rahman, A.; Srikumar, V.; Smith, AD, Predicting electricity consumption for commercial and residential buildings using deep recurrent neural networks, Appl. Energy, 212, 372-385 (2018) · doi:10.1016/j.apenergy.2017.12.051
[14] Zhang, B.; Wu, JL; Chang, PC, A multiple time series-based recurrent neural network for short-term load forecasting, Soft. Comput., 22, 12, 4099-4112 (2017) · doi:10.1007/s00500-017-2624-5
[15] Salkuti, SR, Short-term electrical load forecasting using radial basis function neural networks considering weather factors, Electr. Eng., 1, 1 (2018) · doi:10.1007/s00202-018-0678-8
[16] Yang, Y.; Chen, Y.; Wang, Y.; Li, C.; Li, L., Modelling a combined method based on ANFIS and neural network improved by DE algorithm: a case study for short-term electricity demand forecasting, Appl. Soft Comput., 49, 663-675 (2016) · doi:10.1016/j.asoc.2016.07.053
[17] Ryu, S.; Noh, J.; Kim, H., Deep neural network based demand side short term load forecasting, Energies, 10, 3 (2017) · doi:10.3390/en10010003
[18] Guo, G.; Zhou, K.; Zhang, X.; Yang, S., A deep learning model for short-term power load and probability density forecasting, Energy, 160, 1186-1200 (2018) · doi:10.1016/j.energy.2018.07.090
[19] Wen, L.; Zhou, K.; Yang, S.; Lu, X., Optimal load dispatch of community microgrid with deep learning based solar power and load forecasting, Energy, 171, 1053-1065 (2019) · doi:10.1016/j.energy.2019.01.075
[20] Manera, M.; Marzullo, A., Modelling the load curve of aggregate electricity consumption using principal components, Environ. Model Softw., 20, 11, 1389-1400 (2005) · doi:10.1016/j.envsoft.2004.09.019
[21] Ismail, N.; Abdullah, S., Principal component regression with artificial neural network to improve prediction of electricity demand, Int. Arab J. Inf. Technol., 13, 1, 196-202 (2016)
[22] Sun, L.; Zhou, K.; Yang, S., Regional difference of household electricity consumption: an empirical study of Jiangsu, China, J. Clean. Prod., 171, 1415-1428 (2018) · doi:10.1016/j.jclepro.2017.10.123
[23] Kingma, D., Ba, J.: Adam: a method for stochastic optimization. In: International Conference for Learning Representations, arXiv:1412.6980v9 (2017)
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