Abstract

As a pillar industry of national economy, China’s construction industry is still facing the status of substantial energy consumption and high CO2 emissions, which is a key field of energy conservation and emission reduction. In CO2 emissions research, it is essential to focus on analyzing the present and future trends of CO2 emissions in China’s construction industry. This article introduces a novel prediction model, in which the weighted algorithm is combined with Elman neural network (ENN) optimized by Adaptive Boosting algorithm (Adaboost) for evaluating future CO2 emissions in China’s construction industry. Firstly, logarithmic mean Divisia index (LMDI) is used to decompose CO2 emissions into economy, structural, intensity, and population indicators, posing as inputs to the weighted Adaboost-ENN model. Then, through comparison with other three models based on the data of total CO2 emissions in China’s construction industry during 2004-2016, there is evidence that the proposed model makes a favorable prediction performance. On this basis, we employ scenario analysis to predict future trend of CO2 emissions in China’s construction industry. It can be found that the peak of CO2 emissions in China’s construction industry will be achieved before 2030 in high carbon scenario (HS) and baseline carbon scenario (BS), whereas it will not be realized in low carbon scenario (LS). Finally, the specific policy recommendations related to energy conservation and emission reduction in China’s construction industry are proposed.

Highlights

  • The integral procedure of weighted Adaboost-Elman neural network (ENN) is executed by MATLAB2014a

  • To further demonstrate the validity of the splitting of feature sets, the proposed model is compared with the direct prediction model that puts fourteen influencing factors together as input to the Adaboost-ENN model

  • This study only focuses on the node in 2030, so the peak value of low carbon scenario (LS) is uncertain from a long-term perspective

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Summary

Introduction

The choice of construction industry as the research topic can be attributed to the following three reasons It is one of the most carbon-intensive and resourceintensive industries in China. With the increasing demand for construction facilities, the huge consumption of resource and substantial CO2 emissions highlight its importance in research field Both the consumption of resource and related CO2 emissions in China’s construction industry have shown an Journal of Energy upward trend over the years. It is important to predict future CO2 emissions of the construction industry to answer whether China can achieve the goal reaching the peak of carbon emissions. On the other hand, when some researches come to study the construction industry, most of them only focus on energy consumption, scarcely involving scenario analysis of carbon emissions.

Literature Review
Methodology
The Weighted Adaboost-ENN Prediction Model
Application of the Weighted Adaboost-ENN Model
Simulation
Future Estimation of CO2 Emissions in the Construction Industry
Conclusion
Full Text
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