The goal of reaching the peak of carbon in the construction industry is urgent. However, the research on the feasibility of realizing this goal and the implementation of relevant policies in China is relatively superficial. In view of the historical data of energy consumption and building CO2 emission from 1995 to 2019, this paper establishes a BP neural network model for predicting building CO2 emissions. Moreover, the influencing factors, such as population, GDP, and total construction output, are introduced as the parameters in the model. Through the scenario analysis method explores the practical path to accomplish the peak of building CO2 emissions. When using traditional prediction methods to predict building carbon emissions, the lon...
In this paper, the BP neural network model is established to predict the carbon trading price and ca...
Power generation industry is the key industry of carbon dioxide (CO2) emission in China. Assessing i...
Northern China is vigorously promoting cogeneration and clean heating technologies. The accurate pre...
As a major province of energy consumption and carbon emission, Jiangsu Province is also a major prov...
Closely connected to human carbon emissions, global climate change is affecting regional economic an...
In order to actively respond to the global climate and environmental challenges, and to help achieve...
Global climate change, which mainly effected by human carbon emissions, would affect the regional ec...
In order to actively respond to the global climate and environmental challenges, and to help achieve...
Carbon emissions are the major cause of the global warming; therefore, the exploration of carbon emi...
To assess whether China’s emissions will peak around 2030, we forecast energy consumption and carbon...
This paper utilizes the generalized Fisher index (GFI) to decompose the factors of carbon emission a...
High rise buildings with large volume, high energy consumption, and high carbon emission base have b...
The industrial sector is the key area for China to achieve the carbon peaking goals, as it accounts ...
China has become the world's largest carbon emitter, and its commitment to peak carbon emissions by ...
China declared a long-term commitment at the United Nations General Assembly (UNGA) in 2020 to reduc...
In this paper, the BP neural network model is established to predict the carbon trading price and ca...
Power generation industry is the key industry of carbon dioxide (CO2) emission in China. Assessing i...
Northern China is vigorously promoting cogeneration and clean heating technologies. The accurate pre...
As a major province of energy consumption and carbon emission, Jiangsu Province is also a major prov...
Closely connected to human carbon emissions, global climate change is affecting regional economic an...
In order to actively respond to the global climate and environmental challenges, and to help achieve...
Global climate change, which mainly effected by human carbon emissions, would affect the regional ec...
In order to actively respond to the global climate and environmental challenges, and to help achieve...
Carbon emissions are the major cause of the global warming; therefore, the exploration of carbon emi...
To assess whether China’s emissions will peak around 2030, we forecast energy consumption and carbon...
This paper utilizes the generalized Fisher index (GFI) to decompose the factors of carbon emission a...
High rise buildings with large volume, high energy consumption, and high carbon emission base have b...
The industrial sector is the key area for China to achieve the carbon peaking goals, as it accounts ...
China has become the world's largest carbon emitter, and its commitment to peak carbon emissions by ...
China declared a long-term commitment at the United Nations General Assembly (UNGA) in 2020 to reduc...
In this paper, the BP neural network model is established to predict the carbon trading price and ca...
Power generation industry is the key industry of carbon dioxide (CO2) emission in China. Assessing i...
Northern China is vigorously promoting cogeneration and clean heating technologies. The accurate pre...