Artificial intelligence

Scientific journal

ISSN 2710-1673

ONLINE: ISSN 2710-1681

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Usage of artificial neural networks in the energy sector

Lazarenko D.1
1 National Technical University “Igor Sikorsky Kyiv Polytechnic Institute”

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UDC: 621:004.8
Publication Language: English
Stuc. intelekt. 2016; 21(4):80-84

Abstract: The work covers non-traditional methods of forecasting, in particular, methods using artificial neural networks. The article considers such vital moments as: neural network configuration, normalization of input data, also random factors which have influence on the accuracy of load forecasts, are taken into account. Comparative characteristics of effectiveness of artificial neural networks and artificial neural networks with fuzzy logic are given.

Keywords: artificial neural networks, energy, fuzzy logic, short-term forecasting

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