Paper
13 May 2024 Short term heat load forecasting method based on deep belief network
Zhaoxia Wang, Jian Zhao, Feng Ding
Author Affiliations +
Proceedings Volume 13159, Eighth International Conference on Energy System, Electricity, and Power (ESEP 2023); 131594C (2024) https://doi.org/10.1117/12.3024377
Event: Eighth International Conference on Energy System, Electricity and Power (ESEP 2023), 2023, Wuhan, China
Abstract
In order to avoid waste of heat energy, improve energy efficiency and reduce heating costs, this paper proposes a short-term heat load forecasting method based on a Deep Belief Network (DBN). It utilizes the historical heat supply heat data, historical meteorological data, and weather forecast data to predict the user-side heating load in the next 24 hours. First, the correlation coefficient method is used to determine the meteorological data which has a greater impact on the short-term heat load forecast. Second, the 3σ method is used to find and replace the outliers data, and the standardization is processed to form the experimental dataset. Then, using the divided data set, the heat load forecasting model is trained offline and verified, and the parameters are optimized. Finally, the historical heat load data and meteorological data within 72 hours and the weather forecast data within the next 24 hours are used as input to predict the heating load within the next 24 hours online. The experimental results show that the forecasting accuracy of the proposed method is better than the method based on support vector machine and the method based on long and short-term memory network.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Zhaoxia Wang, Jian Zhao, and Feng Ding "Short term heat load forecasting method based on deep belief network", Proc. SPIE 13159, Eighth International Conference on Energy System, Electricity, and Power (ESEP 2023), 131594C (13 May 2024); https://doi.org/10.1117/12.3024377
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KEYWORDS
Data modeling

Atmospheric modeling

Education and training

Meteorology

Neurons

Statistical modeling

Error analysis

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