NEURAL NETWORK FORECASTING OF ENERGY CONSUMPTION OF A METALLURGICAL ENTERPRISE

Authors

DOI:

https://doi.org/10.30837/ITSSI.2021.15.014

Keywords:

energy consumption, forecasting, ; artificial neural network, time series

Abstract

The subject of the research is the methods of constructing and training neural networks as a nonlinear modeling apparatus for solving the problem of predicting the energy consumption of metallurgical enterprises. The purpose of this work is to develop a model for forecasting the consumption of the power system of a metallurgical enterprise and its experimental testing on the data available for research of PJSC "Dneprospetsstal". The following tasks have been solved: analysis of the time series of power consumption; building a model with the help of which data on electricity consumption for a historical period is processed; building the most accurate forecast of the actual amount of electricity for the day ahead; assessment of the forecast quality. Methods used: time series analysis, neural network modeling, short-term forecasting of energy consumption in the metallurgical industry. The results obtained: to develop a model for predicting the energy consumption of a metallurgical enterprise based on artificial neural networks, the MATLAB complex with the Neural Network Toolbox was chosen. When conducting experiments, based on the available statistical data of a metallurgical enterprise, a selection of architectures and algorithms for learning neural networks was carried out. The best results were shown by the feedforward and backpropagation network, architecture with nonlinear autoregressive and learning algorithms: Levenberg-Marquard nonlinear optimization, Bayesian Regularization method and conjugate gradient method. Another approach, deep learning, is also considered, namely the neural network with long short-term memory LSTM and the adam learning algorithm. Such a deep neural network allows you to process large amounts of input information in a short time and build dependencies with uninformative input information. The LSTM network turned out to be the most effective among the considered neural networks, for which the indicator of the maximum prediction error had the minimum value. Conclusions: analysis of forecasting results using the developed models showed that the chosen approach with experimentally selected architectures and learning algorithms meets the necessary requirements for forecast accuracy when developing a forecasting model based on artificial neural networks. The use of models will allow automating high-precision operational hourly forecasting of energy consumption in market conditions.

Keywords: energy consumption; forecasting; artificial neural network; time series.

Author Biographies

Anna Bakurova, National University "Zaporizhzhia Polytechnic"

Doctor of Sciences (Economics), Professor, Professor of the Department of Systems Analysis and Computational Mathematics

Olesia Yuskiv, National University "Zaporizhzhia Polytechnic"

Postgraduate of the Department of Systems Analysis and Computational Mathematics

Dima Shyrokorad, National University "Zaporizhzhia Polytechnic"

PhD (Physical and Mathematical Sciences), Associate Professor of the Department of Systems Analysis and Computational Mathematics

Anton Riabenko, National University "Zaporizhzhia Polytechnic"

PhD (Physical and Mathematical Sciences), Associate Professor of the Department of Systems Analysis and Computational Mathematics

Elina Tereschenko, National University "Zaporizhzhia Polytechnic"

PhD (Physical and Mathematical Sciences), Associate Professor, Associate Professor of the Department of Systems Analysis and Computational Mathematics

References

Kiyko, S. G. (2020), "Adaptive portfolio management of energy saving projects at a metallurgical enterprise", Innovative Technologies and Scientific Solutions for Industries, No. 4 (14), P. 56–70. DOI: https://doi.org/10.30837/ITSSI.2020.14.056

Hnatiienko, H. M., Snytiuk, V. Ie. (2008), Ekspertni tekhnolohii pryiniattia rishen, TOV "Maklaut", Kyiv.

Molokanova, V. M., Orliuk, O. P., Petrenko, V. O. (2020), "Formation of metallurgical enterprise sustainable development portfolio using the method of analyzing hierarchies", Naukovyi Visnyk Natsionalnoho Hirnychoho Universytetu, No. 2, P. 131–136. DOI: https://doi.org/10.33271/nvngu/2020-2/131

Kiyko, S. G. (2020), "Predictive adaptation in the management of the portfolio of energy saving projects at the metallurgical enterprise", Science and technology of the Air Force of the Armed Forces of Ukraine, No. 4 (41), P. 133–144. DOI: https://doi.org/10.30748/nitps.2020.41.16

Belt, C. K. (2017), Energy Management for the Metals Industry, CRC Press, New York. DOI: https://doi.org/10.1201/9781315156392

Schulze, M., Nehler, H., Ottosson, M. (2016), "Energy management in industry: a systematic review of previous findings and an integrative conceptual framework", Journal of Cleaner Production, No. 112 (5), P. 3692–3708. DOI: https://doi.org/10.1016/j.jclepro.2015.06.060

Hagan, M. T., Demuth, H. B., Beale, M. H. (2014), "Neural Network Design", available at : http://hagan.okstate.edu/NNDesign.pdf

Phyo, P. P., Jeenanunta, C. (2019), "Electricity load forecasting using a deep neural network", Engineering and Applied Science Research, No. 46 (1), P. 10–17, available at : https://ph01.tcithaijo.org/index.php/easr/article/view/116025 (last accessed 13 December 2020).

Goswami, D. Y., Kreith, F. (2015), Energy Efficiency and Renewable Energy Handbook, CRC Press, Boca Raton. DOI: https://doi.org/10.1201/b18947

Kutscher, Ch. F., Milford, J. B., Kreith, F. (2018), Principles of Sustainable Energy Systems, CRC Press, Boca Raton, DOI: https://doi.org/10.1201/b21404

Kirpichnikova, I. M., Saplin, L. A., Solomakho, K. L. (2014), "Prognozirovanie ob`emov potrebleniya elektroenergii", Vestnik YuUrGU. Energetika, No. 14 (2), P. 16–22, available at : https://dspace.susu.ru/xmlui/handle /0001.74/4942 (last accessed 13 December 2020).

Shumilova, G. P., Gotman, N. E., Starczeva, T. B. (2008), Prognozirovanie elektricheskikh nagruzok pri operativnom upravlenii elektroenergeticheskimi sistemami na osnove nejrosetevykh struktur, URO RAN, Ekaterinburg.

Bodyanskij, E. V., Rudenko, O. G. (2004), Iskusstvenny`e nejronny`e seti: arkhitektury, obuchenie, primeneniya, Teletekh, Khar`kov.

"Time Series Forecasting Using Deep Learning" ["Prognozirovaniye vremennykh ryadov Ispol'zuya glubokoye obucheniye "], available at : https://docs.exponenta.ru/deeplearning/ug/time-series-forecasting-using-deep-learning.html (last accessed 13 December 2020).

Brejdo, I. V., Bulatbaeva, Yu. F., Orazgaleeva, G. D. (2020), "Algoritm sozdaniya modeli kratkosrochnogo prognozirovaniya energopotrebleniya na osnove nejronnoj seti v Matlab", VI International Scientific Conference. Actual Problems оf Technical Sciences, Krasnodar, Aprіl 2020, P. 1-6, available at : https://moluch.ru/conf/tech/archive/367/15614/ (last accessed 13 December 2020).

Vichuzhanin. V. V., Rudnichenko. N. D. (2016), "Development of the neural network model for prediction failure risk’s of the complex technical systems components", Informatics and Mathematical Methods in Simulation, Vol. 6/ 4, P. 333–338.

Huang, Z., Yang, C., Zhou, X. et al (2020), "Energy Consumption Forecasting for the Nonferrous Metallurgy Industry Using Hybrid Support Vector Regression with an Adaptive State Transition Algorithm", Cognitive Computation, Vol. 12, P. 357–368. DOI: https://doi.org/10.1007/s12559-019-09644-0

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Published

2021-03-31

How to Cite

Bakurova, A., Yuskiv, O., Shyrokorad, D., Riabenko, A., & Tereschenko, E. (2021). NEURAL NETWORK FORECASTING OF ENERGY CONSUMPTION OF A METALLURGICAL ENTERPRISE. INNOVATIVE TECHNOLOGIES AND SCIENTIFIC SOLUTIONS FOR INDUSTRIES, (1 (15), 14–22. https://doi.org/10.30837/ITSSI.2021.15.014