Abstract

The smart district heating system (SDHS) is an important element of the construction of smart cities in Northern China; it plays a significant role in meeting heating requirements and green energy saving in winter. Various Internet of Things (IoT) sensors and wireless transmission technologies are applied to monitor data in real-time and to form a historical database. The accurate prediction of heating loads based on massive historical datasets is the necessary condition and key basis for formulating an optimal heating control strategy in the SDHS, which contributes to the reduction in the consumption of energy and the improvement in the energy dispatching efficiency and accuracy. In order to achieve the high prediction accuracy of SDHS and to improve the representation ability of multi-time-scale features, a novel short-term heating load prediction algorithm based on a feature fusion long short-term memory (LSTM) model (FFLSTM) is proposed. Three characteristics, namely proximity, periodicity, and trend, are found after analyzing the heating load data from the aspect of the hourly time dimension. In order to comprehensively utilize the data’s intrinsic characteristics, three LSTM models are employed to make separate predictions, and, then, the prediction results based on internal features and other external features at the corresponding moments are imported into the high-level LSTM model for fusion processing, which brings a more accurate prediction result of the heating load. Detailed comparisons between the proposed FFLSTM algorithm and the-state-of-art algorithms are conducted in this paper. The experimental results show that the proposed FFLSTM algorithm outperforms others and can obtain a higher prediction accuracy. Furthermore, the impact of selecting different parameters of the FFLSTM model is also studied thoroughly.

Highlights

  • The world’s largest district heating system (DHS) is located in China

  • This paper proposes a feature fusion learning algorithm basedand, on the characteristics of proximity, periodicity, and the trend of theintegrated heat exchange station load dataset which can extract and process the characteristics of proximity, periodicity, and the trend of obtain more accurate heating load prediction results after fusion processing so as to improve the the heat of exchange station load dataset of and, The obtain more accurate of heating load prediction accuracy the energy saving regulation heating

  • Accurate forecasting of the heating load based on artificial intelligence technology is the basis and guarantee of energy-saving control strategies

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Summary

Introduction

The world’s largest district heating system (DHS) is located in China This system needs to consume a large quantity of fossil energy, such as coal and natural gas, during winter. This leads to a serious air pollution problem and extremely harmful effects on human health and has, attracted the widespread attention of the whole society. River Policy, which had the laudable goal of providing indoor heat, had disastrous consequences for human health. It led to an increase in inhalable particles (particulate matter 10, PM10), with concentrations of 46%, and reductions in life expectancies of 3.1 years, caused by elevated rates of cardiorespiratory mortality, in the north.

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