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2018 | OriginalPaper | Chapter

Gas Consumption Prediction Based on Artificial Neural Networks for Residential Sectors

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Abstract

The objective of this work is to improve gas supply efficiency in residential districts. To achieve this goal, Artificial Neural Networks (ANNs) have been used. In this work, a hybrid model based on ANN has been proposed that obtains total daily gas consumption (in KWh) in residential districts, with a prediction horizon of 7 days. Previous consumption records and meteorological variables have been considered to improve the prediction of future gas consumption. In order to find the best ANN that models the behavior of this consumption variable, a set of experiments has been designed, where the mean square error of each network is measured to rate their reliability and accuracy. A hybrid neural model has been created to determine a horizon of 7 predictions using a median filter of the 5 best predictors per day.

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Literature
2.
go back to reference Akpinar, M., Adak, M.F., Yumusak, N.: Forecasting natural gas consumption with hybrid neural networks artificial bee colony. In: 2016 2nd International Conference on Intelligent Energy and Power Systems (IEPS), pp. 1–6, June 2016 Akpinar, M., Adak, M.F., Yumusak, N.: Forecasting natural gas consumption with hybrid neural networks artificial bee colony. In: 2016 2nd International Conference on Intelligent Energy and Power Systems (IEPS), pp. 1–6, June 2016
3.
go back to reference Benhamed, C., Mekaoui, S., Ghoumid, K.: A large scale IP network traffic matrix estimation based on ANN: a comparison study on training algorithms. In: 2015 4th International Conference on Electrical Engineering (ICEE), pp. 1–6, December 2015 Benhamed, C., Mekaoui, S., Ghoumid, K.: A large scale IP network traffic matrix estimation based on ANN: a comparison study on training algorithms. In: 2015 4th International Conference on Electrical Engineering (ICEE), pp. 1–6, December 2015
4.
go back to reference Dalvand, M.M., Azami, S.B.Z., Tarimoradi, H.: Long-term load forecasting of iranian power grid using fuzzy, artificial neural networks. In: 43rd International Universities Power Engineering Conference, UPEC 2008, pp. 1–4 (2008). ID: 2 Dalvand, M.M., Azami, S.B.Z., Tarimoradi, H.: Long-term load forecasting of iranian power grid using fuzzy, artificial neural networks. In: 43rd International Universities Power Engineering Conference, UPEC 2008, pp. 1–4 (2008). ID: 2
7.
go back to reference Fagiani, M., Squartini, S., Gabrielli, L., Spinsante, S., Piazza, F.: A review of datasets and load forecasting techniques for smart natural gas and water grids: analysis and experiments. Neurocomputing 170, 448–465 (2015). DEC 25 2015. PT: J; CT: Computational Energy Management in Smart Grids Workshop (CEMiSG); CY: JUL 08–09, 2014; CL: Beijing, PEOPLES R CHINA; TC: 0; UT: WOS:000361256000043CrossRef Fagiani, M., Squartini, S., Gabrielli, L., Spinsante, S., Piazza, F.: A review of datasets and load forecasting techniques for smart natural gas and water grids: analysis and experiments. Neurocomputing 170, 448–465 (2015). DEC 25 2015. PT: J; CT: Computational Energy Management in Smart Grids Workshop (CEMiSG); CY: JUL 08–09, 2014; CL: Beijing, PEOPLES R CHINA; TC: 0; UT: WOS:000361256000043CrossRef
8.
9.
go back to reference Viñuela, P.I.: Redes Neuronales Artificiales (2004) Viñuela, P.I.: Redes Neuronales Artificiales (2004)
10.
go back to reference Izadyar, N., Ong, H.C., Shamshirband, S., Ghadamian, H., Tong, C.W.: Intelligent forecasting of residential heating demand for the district heating system based on the monthly overall natural gas consumption. Energy Build. 104, 208–214 (2015)CrossRef Izadyar, N., Ong, H.C., Shamshirband, S., Ghadamian, H., Tong, C.W.: Intelligent forecasting of residential heating demand for the district heating system based on the monthly overall natural gas consumption. Energy Build. 104, 208–214 (2015)CrossRef
11.
go back to reference Moon, J.W., Kim, K., Min, H.: Ann-based prediction and optimization of cooling system in hotel rooms. Energies 8(10), 10775–10795 (2015). OCT 2015. PT: J; TC: 0; UT: WOS:000364230500009CrossRef Moon, J.W., Kim, K., Min, H.: Ann-based prediction and optimization of cooling system in hotel rooms. Energies 8(10), 10775–10795 (2015). OCT 2015. PT: J; TC: 0; UT: WOS:000364230500009CrossRef
12.
go back to reference Moreno-Chaparro, C., Rivas, E., Salcedo-Lagos, J., Canon, A.O.: State of the art of electricity demand forecasting based on wavelet analisys and a nonlinear autoregressive model NAR. In: 2012 Workshop on Engineering Applications (WEA), pp. 1–6, May 2012 Moreno-Chaparro, C., Rivas, E., Salcedo-Lagos, J., Canon, A.O.: State of the art of electricity demand forecasting based on wavelet analisys and a nonlinear autoregressive model NAR. In: 2012 Workshop on Engineering Applications (WEA), pp. 1–6, May 2012
13.
go back to reference Suykens, J., Lemmerling, P.H., Favoreel, W., de Moor, B., Crepel, M., Briol, P.: Modelling the belgian gas consumption using neural networks. Neural Process. Lett. 4(3), 157–166 (1996)CrossRef Suykens, J., Lemmerling, P.H., Favoreel, W., de Moor, B., Crepel, M., Briol, P.: Modelling the belgian gas consumption using neural networks. Neural Process. Lett. 4(3), 157–166 (1996)CrossRef
14.
go back to reference Szoplik, J.: Forecasting of natural gas consumption with artificial neural networks. Energy 85, 208–220 (2015)CrossRef Szoplik, J.: Forecasting of natural gas consumption with artificial neural networks. Energy 85, 208–220 (2015)CrossRef
15.
go back to reference Yu, F., Xu, X.: A short-term load forecasting model of natural gas based on optimized genetic algorithm and improved BP neural network. Appl. Energy 134, 102–113 (2014)CrossRef Yu, F., Xu, X.: A short-term load forecasting model of natural gas based on optimized genetic algorithm and improved BP neural network. Appl. Energy 134, 102–113 (2014)CrossRef
Metadata
Title
Gas Consumption Prediction Based on Artificial Neural Networks for Residential Sectors
Authors
Alain Porto
Eloy Irigoyen
Copyright Year
2018
DOI
https://doi.org/10.1007/978-3-319-67180-2_10

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