Abstract

Central air conditioning is the main energy-consuming equipment in modern large-scale commercial buildings. Its energy consumption generally accounts for more than 60% of the electricity load of an entire building, and there is a rising trend. Focusing on reducing central air conditioning energy consumption is a first priority to achieve energy savings in modern large-scale commercial buildings. To study the main influencing factors of central air conditioning energy consumption in large shopping malls, in-depth collection and analysis of energy consumption data of Shenzhen Tian-hong shopping mall were considered, and the impact of factors such as the basic composition of central air conditioning, time, and Shenzhen weather on the energy consumption of shopping malls was considered. The most representative Buji Rainbow store of the Rainbow Group is used as the research object. The influencing factors of central air conditioning on its energy consumption are divided into air conditioning pumps, host 1–1, host 1–2, host 2–1, and host 2–2. The power consumption of the freezer and the eight impact indicators of time and weather in Shenzhen were constructed using Pearson correlation coefficients and a long short-term memory neural network method to construct a regression model of the energy consumption prediction of the mall building. The average relative deviation between the predicted energy consumption values and the measured energy consumption values is less than 10%, which indicates that the main influencing factors selected in this paper can better explain the energy consumption of the mall, and the obtained energy consumption prediction model has high accuracy.

Highlights

  • With the increasing speed of urbanization in China, the urban construction industry is booming

  • As of 2018, the area of public buildings accounted for approximately 40% of the total building area, and public buildings with central air conditioning systems accounted for approximately 80% of this total

  • Reducing the energy consumption of central air conditioning is the primary task for achieving energy efficiency in modern public buildings (Dong et al, 2018; Jarzabska and Krzaczek, 2016; Lambert, 2009)

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Summary

Introduction

With the increasing speed of urbanization in China, the urban construction industry is booming. RNNs are frequently used to analyze and predict sequence data, research has shown that RNNs will forget previous state information over time, so long shortterm memory (LSTM) neural networks have been introduced (Friess and Rakhshan, 2017; Kim and Srebric, 2016). In addition to the applications of LSTM networks in the fields of image analysis, document summary, speech recognition, handwriting recognition, etc., these networks exhibit good performance in the prediction of time series data They are mainly used to describe the relationship between the current data and the previous input data, use their memory capabilities, save the state information of the input network, and use the previous state information to affect the exact value and development trend of subsequent data.

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