Energy Forecasting Using Intelligent Models
- Arnay, Rafael 1
- Hernández-Aceituno, Javier 1
- Gómez-González, José-Francisco 1
- Méndez-Pérez, Juan A. 1
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1
Universidad de La Laguna
info
ISSN: 2367-3370, 2367-3389
ISBN: 9783031739095, 9783031739101
Year of publication: 2024
Pages: 11-21
Type: Conference paper
Abstract
This paper deals with the problem of intelligent energy forecasting in hotels. The aim is to provide reliable predictions of hotel energy demand to increase the efficiency of the management systems responsible for the energy resources planning. The immediate benefits will be related to reduction of energy consumption, decrease in associated greenhouse gases emissions and improvement of the sustainability indexes of hotel activities. The prediction algorithm is based on the use of intelligent methods. The objective is to provide a 24 h-prediction of consumed energy with a look ahead of 24 h. LSTM and GRU networks were used in the algorithm for this task. The algorithm, that includes the main specific variables affecting the consumption, is endowed with some important capabilities that improve the existing methods. In particular, the proposed model is able to adapt online to changes while maintaining a balanced trade-off between accuracy and simplicity. The evaluation of the proposal was done in a luxury hotel in Canary Islands. The results obtained show promising results for a real-time implementation of the method in an energy management system.
Bibliographic References
- Abu-Salih, B., Wongthongtham, P., Morrison, G., Coutinho, K., Al-Okaily, M., Huneiti, A.: Short-term renewable energy consumption and generation forecasting: a case study of western Australia. Heliyon 8(3), e09152 (2022)
- Aman, S., Simmhan, Y., Prasanna, V.K.: Energy management systems: state of the art and emerging trends. IEEE Commun. Mag. 51(1), 114–119 (2013)
- Bickel, P.J., Doksum, K.A.: Mathematical Statistics: Basic Ideas and Selected Topics. Volumes I-II Package. Chapman and Hall/CRC, Boca Raton (2015)
- Chung, J., Gulcehre, C., Cho, K., Bengio, Y.: Empirical evaluation of gated recurrent neural networks on sequence modeling. arXiv preprint arXiv:1412.3555 (2014)
- World Travel & Tourism Council: World travel & tourism council - economic impact research (2024). https://wttc.org/research/economic-impact
- De Myttenaere, A., Golden, B., Le Grand, B., Rossi, F.: Mean absolute percentage error for regression models. Neurocomputing 192, 38–48 (2016)
- Debnath, K.B., Mourshed, M.: Forecasting methods in energy planning models. Renew. Sustain. Energy Rev. 88, 297–325 (2018). https://doi.org/10.1016/j.rser.2018.02.002
- Dogan, E., Aslan, A.: Exploring the relationship among CO2 emissions, real GDP, energy consumption and tourism in the EU and candidate countries: evidence from panel models robust to heterogeneity and cross-sectional dependence. Renew. Sustain. Energy Rev. 77, 239–245 (2017)
- Filipiak, B.Z., Dylewski, M., Kalinowski, M.: Economic development trends in the EU tourism industry. Towards the digitalization process and sustainability. Qual. Quant. 57 (2023). https://doi.org/10.1007/s11135-020-01056-9
- Gao, L., Liu, T., Cao, T., Hwang, Y., Radermacher, R.: Comparing deep learning models for multi energy vectors prediction on multiple types of building. Appl. Energy 301, 117486 (2021)
- Gössling, S.: Global environmental consequences of tourism. Glob. Environ. Chang. 12(4), 283–302 (2002)
- Hyndman, R.J., Athanasopoulos, G.: Forecasting: Principles and Practice. OTexts, Melbourne (2018)
- Katircioglu, S.T.: International tourism, energy consumption, and environmental pollution: the case of turkey. Renew. Sustain. Energy Rev. 36, 180–187 (2014)
- Katircioglu, S.T., Feridun, M., Kilinc, C.: Estimating tourism-induced energy consumption and CO2 emissions: the case of Cyprus. Renew. Sustain. Energy Rev. 29, 634–640 (2014)
- Khalil, M., McGough, A.S., Pourmirza, Z., Pazhoohesh, M., Walker, S.: Machine learning, deep learning and statistical analysis for forecasting building energy consumption’a systematic review. Eng. Appl. Artif. Intell. 115, 105287 (2022)
- Kumar Tyagi, A., Abraham, A.: Recurrent Neural Networks. Concepts and Applications. CRC Press, Boca Raton (2022)
- Li, J., Zhang, C., Sun, B.: Two-stage hybrid deep learning with strong adaptability for detailed day-ahead photovoltaic power forecasting. IEEE Trans. Sustain. Energy 14(1), 193–205 (2022)
- Li, Y., Tong, Z., Tong, S., Westerdahl, D.: A data-driven interval forecasting model for building energy prediction using attention-based LSTM and fuzzy information granulation. Sustain. Urban Areas 76, 103481 (2022)
- López, V.C., Casteleiro-Roca, J.L., Gato, F.Z., Mendez-Perez, J.A., Calvo-Rolle, J.L.: Intelligent model hotel energy demand forecasting by means of LSTM and GRU neural networks. In: Machado, J.M., et al. (eds.) DCAI 2022. LNCS, pp. 79–88, vol. 585. Springer, Cham (2023). https://doi.org/10.1007/978-3-031-23210-7_8
- Lu, H., et al.: A multi-source transfer learning model based on LSTM and domain adaptation for building energy prediction. Int. J. Electr. Power Energy Syst. 149, 109024 (2023)
- Paramati, S.R., Shahbaz, M., Alam, M.S.: Does tourism degrade environmental quality? A comparative study of eastern and western European union. Transp. Res. Part D Transp. Environ. 50, 1–13 (2017)
- Pratt, L., Rivera, L., Bien, A.R.: Tourism in the Green Economy: Background Report. World Tourism Organization (UNWTO) and the United Nations Environment (2012)
- Pratt, S.: The economic impact of tourism in SIDS. Ann. Tour. Res. 52 (2015). https://doi.org/10.1016/j.annals.2015.03.005
- UN Environment Programme: Tourism. Investing in energy and resource efficiency (2011)
- Rajić, M.N., Maksimović, R.M., Milosavljević, P.: Energy management model for sustainable development in hotels within WB6. Sustainability 14(24), 16787 (2022)
- Shan, S., Cao, B., Wu, Z.: Forecasting the short-term electricity consumption of building using a novel ensemble model. IEEE Access 7, 88093–88106 (2019)
- Smith, T.G., et al.: pmdarima: ARIMA estimators for Python (2017). http://www.alkaline-ml.com/pmdarima. Accessed 18 May 20230
- Willmott, C.J., Matsuura, K.: Advantages of the mean absolute error (MAE) over the root mean square error (RMSE) in assessing average model performance. Climate Res. 30(1), 79–82 (2005)