4.7 Article

A novel combined model for heat load prediction in district heating systems

Journal

APPLIED THERMAL ENGINEERING
Volume 227, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.applthermaleng.2023.120372

Keywords

District heating; Heat load prediction; Machine learning; Combined models

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This study proposes a combined prediction model that improves the accuracy and stability of heat load prediction in district heating systems by combining the results of multiple single models. Experimental results show that the proposed model outperforms previous models in terms of accuracy and stability, providing a theoretical basis for the precise regulation of district heating systems.
Accurate heat load prediction is essential for improving the operational efficiency of district heating systems (DHSs). Numerous heat load prediction models have been proposed to improve the accuracy and stability. However, previous prediction models are limited by training data and hyperparameters and cannot obtain ac-curate and stable prediction results. This study proposed a combined prediction model to overcome the limi-tations of a single model. In the proposed model, four classical single models were selected as individual models for prediction. Subsequently, the minimum sum of squares of the combined prediction errors algorithm was used to calculate the weighting coefficient of each individual model. The final prediction results were obtained by combining the prediction results of the four models. The 1-h historical operation data from three heat substations in a DHS in northeast China were adopted to evaluate the performance of the proposed model. The multi-step prediction experiment results of the three datasets revealed that the average mean absolute percentage error values of the proposed model for the one-step, two-step, and three-step predictions reached 2.6%, 4.9%, and 7.0%, respectively; these percentages were significantly lower than those of the four individual models and three representative combined models. Therefore, the proposed model has better prediction performance than pre-vious models in terms of accuracy and stability and can provide a theoretical basis for the precise regulation of DHSs.

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