Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Correlation Analysis and Monitoring Method of Carbon Emissions in the Steel Industry Based on Big Data

View through CrossRef
Excessive carbon emissions will lead to catastrophic consequences such as global warming and rising oceans and will also have a serious negative impact on the human food supply and living environment. The steel industry is characterized by high pollution, and about 18% of China’s carbon emissions come from the steel industry. The ‘double carbon’ strategy has brought important tasks and severe challenges to China’s steel industry. With a view to evaluating the achievements of carbon emission control, carbon emission monitoring systems at home and abroad have been continuously established and improved. For the steel industry, accurate and efficient carbon monitoring technology has a guiding role in guiding energy conservation and carbon reduction. Traditional carbon emission accounting methods have some problems, such as long cycles and poor data quality, which restrict the improvement of the lean level of carbon emission monitoring management. Firstly, this paper investigates and analyzes the productive process and carbon emission process of the steel industry and constructs an entropy weight-grey correlation -TOPSIS analysis method for the correlation between carbon emissions and influencing factors. Based on the above content, a carbon emission monitoring method based on multiple influencing factors is put forward, and the high monitoring accuracy of the model is proved by taking the Tianjin steel industry as an example. The results show that information mining of relevant data can strikingly increase the accuracy of carbon emission monitoring in the steel industry.
Title: Correlation Analysis and Monitoring Method of Carbon Emissions in the Steel Industry Based on Big Data
Description:
Excessive carbon emissions will lead to catastrophic consequences such as global warming and rising oceans and will also have a serious negative impact on the human food supply and living environment.
The steel industry is characterized by high pollution, and about 18% of China’s carbon emissions come from the steel industry.
The ‘double carbon’ strategy has brought important tasks and severe challenges to China’s steel industry.
With a view to evaluating the achievements of carbon emission control, carbon emission monitoring systems at home and abroad have been continuously established and improved.
For the steel industry, accurate and efficient carbon monitoring technology has a guiding role in guiding energy conservation and carbon reduction.
Traditional carbon emission accounting methods have some problems, such as long cycles and poor data quality, which restrict the improvement of the lean level of carbon emission monitoring management.
Firstly, this paper investigates and analyzes the productive process and carbon emission process of the steel industry and constructs an entropy weight-grey correlation -TOPSIS analysis method for the correlation between carbon emissions and influencing factors.
Based on the above content, a carbon emission monitoring method based on multiple influencing factors is put forward, and the high monitoring accuracy of the model is proved by taking the Tianjin steel industry as an example.
The results show that information mining of relevant data can strikingly increase the accuracy of carbon emission monitoring in the steel industry.

Related Results

“Lavender Haze” in the Airways
“Lavender Haze” in the Airways
Introduction Taylor Swift has dominated global press in recent years through the success of her Eras Tour, her use of authenticity in branding (Khanal 234), and her choreographed e...
Prediction of Carbon Emissions in Guizhou Province-Based on Different Neural Network Models
Prediction of Carbon Emissions in Guizhou Province-Based on Different Neural Network Models
Abstract Global warming caused by greenhouse gas emissions has become a major challenge facing people all over the world. The study of regional human activities and...
Modeling Climate Impacts of Hydrogen Transition Pathways
Modeling Climate Impacts of Hydrogen Transition Pathways
Hydrogen has emerged as a key contender for decarbonizing hard-to-abate sectors, as it has the advantage of emitting no direct carbon dioxide emissions during combustion. However, ...
Peat forest disturbances in tropical regions: direct drivers and GHG emissions
Peat forest disturbances in tropical regions: direct drivers and GHG emissions
We estimated and compared driver-specific GHG (CO₂, CH₄, and N₂O) emissions from biomass and peat soil carbon loss caused by peat forest disturbances ...
Research on Spatiotemporal Changes in Carbon Footprint and Vegetation Carbon Carrying Capacity in Shanxi Province
Research on Spatiotemporal Changes in Carbon Footprint and Vegetation Carbon Carrying Capacity in Shanxi Province
The climate and ecological problems caused by excessive carbon dioxide emissions are attracting more and more attention, and the need for carbon reduction has reached a consensus. ...
Carbon Emissions Peak Prediction and the Reduction Pathway in Buildings during Operation in Jilin Province Based on LEAP
Carbon Emissions Peak Prediction and the Reduction Pathway in Buildings during Operation in Jilin Province Based on LEAP
The building sector has gradually become a major contributor of carbon emissions in recent years. Its carbon emissions, which result from the long heating period and considerable c...
Carbon emission reduction in arable farming: Farmer crop portfolio responses to varying carbon credit pricing scenarios
Carbon emission reduction in arable farming: Farmer crop portfolio responses to varying carbon credit pricing scenarios
The agricultural sector contributes by approximately 22% of the global greenhouse gas emissions. Private carbon certification and emerging carbon markets offer farms a remuneration...

Back to Top