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A Hybrid Smart Neural Network Model for Short-Term Prediction of Energy Consumption

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Handbook of Smart Energy Systems

Abstract

Nowadays, energy management is a crucial issue for the governments all over the world. Different scientific tools are implemented by the practitioners to empower managers to make their dynamic decisions. Data analysis and data mining provide smart and practical classes tools for mentioned decision-making process. Meanwhile, a chief obstacle is short-term prediction of various energy resources, just like other short-term prediction areas such as weather or earthquake prediction. In this chapter, the adaptive neural fuzzy inference system (ANFIS) and its combination with genetic algorithm (GA) have been proposed for short-term prediction of energy consumption. In the proposed method, first, a classical ANFIS model is conducted by the back-propagation approach. Then, GA is used for the optimal design of fuzzy systems of Takagi Suguno type. In fact, the weights of the classical model are adjusted in the data-training section by GA. The implementing data set is real data collected from the Office of Energy Efficiency at Natural Resources Canada (NRCan). The data set considers electricity, natural gas, diesel fuel oil, heavy fuel oil, still gas and petroleum coke, and liquefied petroleum gas (LPG) terms of energy. The results of the research prove the efficiency of the developing method as an empowering and practical tool for short-term prediction of energy consumption.

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Correspondence to Seyed Habib A. Rahamti .

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Nokhbeh Dehghan, K., Rahamti, S.H.A., Rahman Mohammadpour, S. (2023). A Hybrid Smart Neural Network Model for Short-Term Prediction of Energy Consumption. In: Fathi, M., Zio, E., Pardalos, P.M. (eds) Handbook of Smart Energy Systems. Springer, Cham. https://doi.org/10.1007/978-3-030-97940-9_123

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