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Industrial Facility Electricity Consumption Forecast Using Artificial Neural Networks and Incremental Learning
Society’s concerns with electricity consumption have motivated researchers to improve on the way that energy consumption management is done. The reduction of energy consumption and the optimization of energy management are, therefore, two major aspects to be considered. Additionally, load forecast provides relevant information with the support of historical data allowing an enhanced energy management, allowing energy costs reduction. In this paper, the proposed consumption forecast methodology uses an Artificial Neural Network (ANN) and incremental learning to increase the forecast accuracy. The ANN is retrained daily, providing an updated forecasting model. The case study uses 16 months of data, split in 5-min periods, from a real industrial facility. The advantages of using the proposed method are illustrated with the numerical results. ; This work has received funding from Portugal 2020 under the SPEAR project (NORTE-01-0247-FEDER-040224), in the scope of the ITEA 3 SPEAR Project 16001, from FEDER Funds through the COMPETE program and from National Funds through FCT under the project UIDB/00760/2020 and CEECIND/02887/2017.
Industrial Facility Electricity Consumption Forecast Using Artificial Neural Networks and Incremental Learning
Society’s concerns with electricity consumption have motivated researchers to improve on the way that energy consumption management is done. The reduction of energy consumption and the optimization of energy management are, therefore, two major aspects to be considered. Additionally, load forecast provides relevant information with the support of historical data allowing an enhanced energy management, allowing energy costs reduction. In this paper, the proposed consumption forecast methodology uses an Artificial Neural Network (ANN) and incremental learning to increase the forecast accuracy. The ANN is retrained daily, providing an updated forecasting model. The case study uses 16 months of data, split in 5-min periods, from a real industrial facility. The advantages of using the proposed method are illustrated with the numerical results. ; This work has received funding from Portugal 2020 under the SPEAR project (NORTE-01-0247-FEDER-040224), in the scope of the ITEA 3 SPEAR Project 16001, from FEDER Funds through the COMPETE program and from National Funds through FCT under the project UIDB/00760/2020 and CEECIND/02887/2017.
Industrial Facility Electricity Consumption Forecast Using Artificial Neural Networks and Incremental Learning
Daniel Ramos (Autor:in) / Pedro Faria (Autor:in) / Zita Vale (Autor:in) / João Mourinho (Autor:in) / Regina Correia (Autor:in)
12.09.2020
oai:zenodo.org:4068410
Energies 13(18)
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
DDC:
690
BASE | 2020
|BASE | 2020
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