Abstract

The energy demand of the district heating system (DHS) occupies an important part in urban energy consumption, which has a great impact on the energy security and environmental protection of a city. With the gradual improvement of people’s economic conditions, different groups of people now have different demands for thermal energy for their comfort. Hence, heat metering has emerged as an imperative for billing purposes and sustainable management of energy consumption. Therefore, forecasting the heat load of buildings with heat metering on the demand side is an important management strategy for DHSs to meet end-users’ needs and maintain energy-saving regulations and safe operation. However, the non-linear and non-stationary characteristics of buildings’ heat load make it difficult to predict consumption patterns accurately, thereby limiting the capacity of the DHS to deliver on its statutory functions satisfactorily. A novel ensemble prediction model is proposed to resolve this problem, which integrates the advantages of Complete Ensemble Empirical Mode Decomposition with Adaptive Noise (CEEMDAN) and support vector regression (SVR), called CEEMDAN-SVR in this paper. The proposed CEEMDAN-SVR algorithm is designed to automatically decompose the intrinsic mode according to the characteristics of heat load data to ensure an accurate representation of heat load patterns on multiple time scales. It will also be useful for developing an accurate prediction model for the buildings’ heat load. In formulating the CEEMDAN-SVR model, the heat load data of three different buildings in Xingtai City were acquired during the heating season of 2019–2020 and employed to conduct detailed comparative analysis with modern algorithms, such as extreme tree regression (ETR), forest tree regression (FTR), gradient boosting regression (GBR), support vector regression (SVR, with linear, poly, radial basis function (RBF) kernel), multi-layer perception (MLP) and EMD-SVR. Experimental results reveal that the performance of the proposed CEEMDAN-SVR model is better than the existing modern algorithms and it is, therefore, more suitable for modeling heat load forecasting.

Highlights

  • With the improvement of urban infrastructure construction in China in recent years, the heating energy consumption of residential buildings in winter accounts for a significant proportion of urban energy consumption [1]

  • Through the analytical characterization analysis of the heat load data, we found that it could be decomposed into the sum of five intrinsic mode functions (IMFs) and residuals as shown in im f1, im f2, im f3, im f4, im f5, resi = CEEMDAN (Q)

  • The accurate heat load prediction algorithm of buildings on the demand side is essential for the regulation and control of heat source and heat exchange stations on the supply side

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Summary

Introduction

With the improvement of urban infrastructure construction in China in recent years, the heating energy consumption of residential buildings in winter accounts for a significant proportion of urban energy consumption [1]. This is important for achieving sustainable energy supply, control, and development as well as assuring environmental protection of the city. To balance the contradiction between people’s demand for quality heating energy for comfortable living and enforcing energy-saving regulations for sustainable development, the heat metering of residential buildings was carried out to capture energy heating consumption trends using a technology-based forecasting approach. The method relies on economic and technological means to urge people to adopt energy-saving measures as a lifestyle [3,4]

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