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System for forecasting energy consumption using the artificial neural network

https://doi.org/10.17073/2500-0632-2016-2-66-77

Abstract

The article considers the possibility of increasing the efficiency of the mining enterprise at the expense of correct choice of price categories and tariff for electricity. The efficiency of forecasting model of energy consumption by the rational choice of price categories is shown, a system for predicting energy consumption using artificial neural network is developed. The forecast error is 0.908 % with the architecture of the 
network type MLP (MLP 24-18-1)

About the Authors

B. N. Abramovich
National Mineral Resources University
Russian Federation

Professor of Department of electric power engineering and electromechanics



I. S. Babanova
National Mineral Resources University
Russian Federation
Department of electric power engineering and electromechanics


References

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Review

For citations:


Abramovich B.N., Babanova I.S. System for forecasting energy consumption using the artificial neural network. Mining Science and Technology (Russia). 2016;(2):66-77. https://doi.org/10.17073/2500-0632-2016-2-66-77

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