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2019 | OriginalPaper | Chapter

Load Forecasting in District Heating Networks: Model Comparison on a Real-World Case Study

Authors : Federico Bianchi, Alberto Castellini, Pietro Tarocco, Alessandro Farinelli

Published in: Machine Learning, Optimization, and Data Science

Publisher: Springer International Publishing

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Abstract

District Heating networks (DHNs) are promising technologies for heat distribution in residential and commercial buildings since they enable high efficiency and low emissions. Within the recently proposed paradigm of smart grids, DHNs have acquired intelligent tools able to enhance their efficiency. Among these tools, there are demand forecasting technologies that enable improved planning of heat production and power station maintenance. In this work we propose a comparative study for heat load forecasting methods on a real case study based on a dataset provided by an Italian utility company. We trained and tested three kinds of models, namely non-autoregressive, autoregressive and hybrid models, on the available dataset of heat load and meteorological variables. The optimal model, in terms of root mean squared error of prediction, was selected. It considers the day of the week, the hour of the day, some meteorological variables, past heat loads and social components, such as holidays. Results show that the selected model is able to achieve accurate 48-hours predictions of the heat load in several conditions (e.g., different days of the week, different times, holidays and workdays). Moreover, an analysis of the parameters of the selected models enabled to identify a few informative variables.

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Footnotes
2
In accordance with the company policy, dataset and source code may not be provided at this stage of the work.
 
3
In the present work the models are written using Python in Spyder IDE.
 
Literature
1.
go back to reference Baltputnis, K., Petrichenko, R., Sobolevsky, D.: Heating demand forecasting with multiple regression: model setup and case study. In: 2018 IEEE 6th Workshop on Advances in Information, Electronic Electrical Engineering (AIEEE), pp. 1–5 (2018) Baltputnis, K., Petrichenko, R., Sobolevsky, D.: Heating demand forecasting with multiple regression: model setup and case study. In: 2018 IEEE 6th Workshop on Advances in Information, Electronic Electrical Engineering (AIEEE), pp. 1–5 (2018)
2.
go back to reference Castellini, A., Beltrame, G., Bicego, M., Blum, J., Denitto, M., Farinelli, A.: Unsupervised activity recognition for autonomous water drones. In: Proceedings of the Symposium on Applied Computing, SAC 2018, pp. 840–842. ACM (2018) Castellini, A., Beltrame, G., Bicego, M., Blum, J., Denitto, M., Farinelli, A.: Unsupervised activity recognition for autonomous water drones. In: Proceedings of the Symposium on Applied Computing, SAC 2018, pp. 840–842. ACM (2018)
3.
go back to reference Castellini, A., Chalkiadakis, G., Farinelli, A.: Influence of state-variable constraints on partially observable monte carlo planning. In: Proceedings of 28th International Joint Conference on Artificial Intelligence (IJCAI 2019), pp. 5540–5546 (2019) Castellini, A., Chalkiadakis, G., Farinelli, A.: Influence of state-variable constraints on partially observable monte carlo planning. In: Proceedings of 28th International Joint Conference on Artificial Intelligence (IJCAI 2019), pp. 5540–5546 (2019)
5.
go back to reference Castellini, A., et al.: Subspace clustering for situation assessment in aquatic drones. In: Proceedings of Symposium on Applied Computing, SAC 2019, pp. 930–937. ACM (2019) Castellini, A., et al.: Subspace clustering for situation assessment in aquatic drones. In: Proceedings of Symposium on Applied Computing, SAC 2019, pp. 930–937. ACM (2019)
6.
go back to reference Castellini, A., Masillo, F., Sartea, R., Farinelli, A.: eXplainable modeling (XM): data analysis for intelligent agents. In: Proceedings of the 18th International Conference on Autonomous Agents and Multiagent Systems (AAMAS 2019), pp. 2342–2344. IFAAMAS (2019) Castellini, A., Masillo, F., Sartea, R., Farinelli, A.: eXplainable modeling (XM): data analysis for intelligent agents. In: Proceedings of the 18th International Conference on Autonomous Agents and Multiagent Systems (AAMAS 2019), pp. 2342–2344. IFAAMAS (2019)
7.
go back to reference Castellini, A., Paltrinieri, D., Manca, V.: MP-GeneticSynth: inferring biological network regulations from time series. Bioinformatics 31, 785–87 (2015)CrossRef Castellini, A., Paltrinieri, D., Manca, V.: MP-GeneticSynth: inferring biological network regulations from time series. Bioinformatics 31, 785–87 (2015)CrossRef
8.
go back to reference Castellini, A., Zucchelli, M., Busato, M., Manca, V.: From time series to biological network regulations: an evolutionary approach. Mol. BioSystems 9, 225–233 (2013)CrossRef Castellini, A., Zucchelli, M., Busato, M., Manca, V.: From time series to biological network regulations: an evolutionary approach. Mol. BioSystems 9, 225–233 (2013)CrossRef
9.
go back to reference Dahl, M., Brun, A., Kirsebom, O.S., Andresen, G.B.: Improving short-term heat load forecasts with calendar and holiday data. Energies 11, 1678 (2018)CrossRef Dahl, M., Brun, A., Kirsebom, O.S., Andresen, G.B.: Improving short-term heat load forecasts with calendar and holiday data. Energies 11, 1678 (2018)CrossRef
10.
go back to reference Elamin, N., Fukushige, M.: Modeling and forecasting hourly electricity demand by sarimax with interactions. Discussion Papers in Economics and Business, pp. 17–28, Osaka University (2017) Elamin, N., Fukushige, M.: Modeling and forecasting hourly electricity demand by sarimax with interactions. Discussion Papers in Economics and Business, pp. 17–28, Osaka University (2017)
11.
go back to reference Fang, T.: Modelling district heating and combined heat and power (2016) Fang, T.: Modelling district heating and combined heat and power (2016)
12.
go back to reference Fang, T., Lahdelma, R.: Evaluation of a multiple linear regression model and SARIMA model in forecasting heat demand for district heating system. Appl. Energy 179, 544–552 (2016)CrossRef Fang, T., Lahdelma, R.: Evaluation of a multiple linear regression model and SARIMA model in forecasting heat demand for district heating system. Appl. Energy 179, 544–552 (2016)CrossRef
14.
go back to reference Gong, M., Zhou, H., Wang, Q., Wang, S., Yang, P.: District heating systems load forecasting: a deep neural networks model based on similar day approach. Adv. Build. Energy Res., 1–17 (2019) Gong, M., Zhou, H., Wang, Q., Wang, S., Yang, P.: District heating systems load forecasting: a deep neural networks model based on similar day approach. Adv. Build. Energy Res., 1–17 (2019)
15.
go back to reference Gross, G., Galiana, F.D.: Short-term load forecasting. Proc. IEEE 75(12), 1558–1573 (1987)CrossRef Gross, G., Galiana, F.D.: Short-term load forecasting. Proc. IEEE 75(12), 1558–1573 (1987)CrossRef
16.
go back to reference Hagan, M.T., Behr, S.M.: The time series approach to short term load forecasting. IEEE Trans. Power Syst. 2, 785–791 (1987)CrossRef Hagan, M.T., Behr, S.M.: The time series approach to short term load forecasting. IEEE Trans. Power Syst. 2, 785–791 (1987)CrossRef
17.
go back to reference Hastie, T., Tibshirani, R.: Generalized additive models: some applications. J. Am. Stat. Assoc. 82, 371–386 (1987)CrossRef Hastie, T., Tibshirani, R.: Generalized additive models: some applications. J. Am. Stat. Assoc. 82, 371–386 (1987)CrossRef
18.
go back to reference Hyndman, R.J., Athanasopoulos, G.: Forecasting: Principles and Practice. Text, Melbourne (2014) Hyndman, R.J., Athanasopoulos, G.: Forecasting: Principles and Practice. Text, Melbourne (2014)
19.
go back to reference Kim, M.S.: Modeling special-day effects for forecasting intraday electricity demand. Eur. J. Oper. Res. 230, 170–180 (2013)CrossRef Kim, M.S.: Modeling special-day effects for forecasting intraday electricity demand. Eur. J. Oper. Res. 230, 170–180 (2013)CrossRef
20.
go back to reference Mirowski, P., Chen, S., Ho, T.K., Yu, C.N.: Demand forecasting in smart grids. Bell Labs Tech. J. 18, 135–158 (2014)CrossRef Mirowski, P., Chen, S., Ho, T.K., Yu, C.N.: Demand forecasting in smart grids. Bell Labs Tech. J. 18, 135–158 (2014)CrossRef
21.
go back to reference Mujeeb, S., Javaid, N., Javaid, S., Rafique, A., Manzoor, I.: Big data analytics for load forecasting in smart grids: a survey (2019) Mujeeb, S., Javaid, N., Javaid, S., Rafique, A., Manzoor, I.: Big data analytics for load forecasting in smart grids: a survey (2019)
23.
go back to reference Ramanathan, R., Engle, R., Granger, C.W.J., Vahid-Araghi, F., Brace, C.: Short-run forecast of electricity loads and peaks. Int. J. Forecast. 13, 161–174 (1997)CrossRef Ramanathan, R., Engle, R., Granger, C.W.J., Vahid-Araghi, F., Brace, C.: Short-run forecast of electricity loads and peaks. Int. J. Forecast. 13, 161–174 (1997)CrossRef
24.
go back to reference Buffa, S., Cozzini, M., D’Antoni, M., Baratieri, M., Fedrizzi, R.: 5th generation district heating and cooling systems: a review of existing cases in Europe. Renew. Sustain. Energy Rev. 104, 504–522 (2019)CrossRef Buffa, S., Cozzini, M., D’Antoni, M., Baratieri, M., Fedrizzi, R.: 5th generation district heating and cooling systems: a review of existing cases in Europe. Renew. Sustain. Energy Rev. 104, 504–522 (2019)CrossRef
25.
go back to reference Soares, L.J., Medeiros, M.C.: Modeling and forecasting short-term electricity load: a comparison of methods with an application to Brazilian data. Int. J. Forecast. 24, 630–644 (2008)CrossRef Soares, L.J., Medeiros, M.C.: Modeling and forecasting short-term electricity load: a comparison of methods with an application to Brazilian data. Int. J. Forecast. 24, 630–644 (2008)CrossRef
27.
go back to reference Weron, R.: Modeling and Forecasting Electricity Loads and Prices: A Statistical Approach. Wroclaw University of Technology, Hugo Steinhaus Center (2006)CrossRef Weron, R.: Modeling and Forecasting Electricity Loads and Prices: A Statistical Approach. Wroclaw University of Technology, Hugo Steinhaus Center (2006)CrossRef
Metadata
Title
Load Forecasting in District Heating Networks: Model Comparison on a Real-World Case Study
Authors
Federico Bianchi
Alberto Castellini
Pietro Tarocco
Alessandro Farinelli
Copyright Year
2019
DOI
https://doi.org/10.1007/978-3-030-37599-7_46

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