4.5 Article

Energy Use Forecasting with the Use of a Nested Structure Based on Fuzzy Cognitive Maps and Artificial Neural Networks

期刊

ENERGIES
卷 15, 期 20, 页码 -

出版社

MDPI
DOI: 10.3390/en15207542

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nested structure; energy use forecasting; fuzzy cognitive maps; artificial neural networks; long short-term memory networks

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This paper presents a novel approach to energy use forecasting, utilizing a nested fuzzy cognitive map. The experiments demonstrate the effectiveness of this approach in predicting energy demand, outperforming classic methods in terms of accuracy. The advantage of the proposed approach lies in its ability to present complex time series in a clear nested structure.
The aim of this paper is to present a novel approach to energy use forecasting. We propose a nested fuzzy cognitive map in which each concept at a higher level can be decomposed into another fuzzy cognitive map, multilayer perceptron artificial neural network or long short-term memory network. Historical data related to energy consumption are used to construct a nested fuzzy cognitive map in order to better understand energy use behavior. Through the experiments, the usefulness of the nested structure in energy demand prediction is demonstrated, by calculating three popular metrics: Mean Square Error, Mean Absolute Error and the correlation coefficient. A comparative analysis is performed, applying classic multilayer perceptron artificial neural networks, long short-term memory networks and fuzzy cognitive maps. The results confirmed that the proposed approach outperforms the classic methods in terms of prediction accuracy. Moreover, the advantage of the proposed approach is the ability to present complex time series in the form of a clear nested structure presenting the main concepts influencing energy consumption on the first level. The second level allows for more detailed problem analysis and lower forecast errors.

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