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Forecasting GHG emissions using an optimized artificial neural network model based on correlation and principal component analysis

Authorized Users Only
2014
Authors
Antanasijević, Davor
Ristić, Mirjana
Perić-Grujić, Aleksandra
Pocajt, Viktor
Article (Published version)
Metadata
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Abstract
The prediction of GHG emissions is very important due to their negative impacts on climate and global warming. The aim of this study was to develop a model for GHG forecasting emissions at the national level using a new approach based on artificial neural networks (ANN) and broadly available sustainability, economical and industrial indicators acting as inputs. The ANN model architecture and training parameters were optimized, with inputs being selected using correlation analysis and principal component analysis. The developed ANN models were compared with the corresponding multiple linear regression (MLR) model, while an ANN model created using transformed inputs (principal components) was compared with a principal component regression (PCR) model. Since the best results were obtained with the ANN model based on correlation analysis, that particular model was selected for the actual 2011 GHG emissions forecasting. The relative errors of the 2010 GHG emissions predictions were used to ...adjust the ANN model predictions for 2011, which subsequently resulted in the adjusted 2011 predictions having a MAPE value of only 3.60%. Sensitivity analysis showed that gross inland energy consumption had the highest sensitivity to GHG emissions.

Keywords:
General Regression Neural Network / GHG emission forecasting / Principal component analysis / Principal component regression
Source:
International Journal of Greenhouse Gas Control, 2014, 20, 244-253
Publisher:
  • Elsevier Sci Ltd, Oxford
Funding / projects:
  • Development and Application of Methods and Materials for Monitoring New Organic Contaminants, Toxic Compounds and Heavy Metals (RS-172007)

DOI: 10.1016/j.ijggc.2013.11.011

ISSN: 1750-5836

WoS: 000332264400020

Scopus: 2-s2.0-84889639492
[ Google Scholar ]
48
39
URI
http://TechnoRep.tmf.bg.ac.rs/handle/123456789/2772
Collections
  • Radovi istraživača / Researchers’ publications (TMF)
Institution/Community
Tehnološko-metalurški fakultet
TY  - JOUR
AU  - Antanasijević, Davor
AU  - Ristić, Mirjana
AU  - Perić-Grujić, Aleksandra
AU  - Pocajt, Viktor
PY  - 2014
UR  - http://TechnoRep.tmf.bg.ac.rs/handle/123456789/2772
AB  - The prediction of GHG emissions is very important due to their negative impacts on climate and global warming. The aim of this study was to develop a model for GHG forecasting emissions at the national level using a new approach based on artificial neural networks (ANN) and broadly available sustainability, economical and industrial indicators acting as inputs. The ANN model architecture and training parameters were optimized, with inputs being selected using correlation analysis and principal component analysis. The developed ANN models were compared with the corresponding multiple linear regression (MLR) model, while an ANN model created using transformed inputs (principal components) was compared with a principal component regression (PCR) model. Since the best results were obtained with the ANN model based on correlation analysis, that particular model was selected for the actual 2011 GHG emissions forecasting. The relative errors of the 2010 GHG emissions predictions were used to adjust the ANN model predictions for 2011, which subsequently resulted in the adjusted 2011 predictions having a MAPE value of only 3.60%. Sensitivity analysis showed that gross inland energy consumption had the highest sensitivity to GHG emissions.
PB  - Elsevier Sci Ltd, Oxford
T2  - International Journal of Greenhouse Gas Control
T1  - Forecasting GHG emissions using an optimized artificial neural network model based on correlation and principal component analysis
EP  - 253
SP  - 244
VL  - 20
DO  - 10.1016/j.ijggc.2013.11.011
ER  - 
@article{
author = "Antanasijević, Davor and Ristić, Mirjana and Perić-Grujić, Aleksandra and Pocajt, Viktor",
year = "2014",
abstract = "The prediction of GHG emissions is very important due to their negative impacts on climate and global warming. The aim of this study was to develop a model for GHG forecasting emissions at the national level using a new approach based on artificial neural networks (ANN) and broadly available sustainability, economical and industrial indicators acting as inputs. The ANN model architecture and training parameters were optimized, with inputs being selected using correlation analysis and principal component analysis. The developed ANN models were compared with the corresponding multiple linear regression (MLR) model, while an ANN model created using transformed inputs (principal components) was compared with a principal component regression (PCR) model. Since the best results were obtained with the ANN model based on correlation analysis, that particular model was selected for the actual 2011 GHG emissions forecasting. The relative errors of the 2010 GHG emissions predictions were used to adjust the ANN model predictions for 2011, which subsequently resulted in the adjusted 2011 predictions having a MAPE value of only 3.60%. Sensitivity analysis showed that gross inland energy consumption had the highest sensitivity to GHG emissions.",
publisher = "Elsevier Sci Ltd, Oxford",
journal = "International Journal of Greenhouse Gas Control",
title = "Forecasting GHG emissions using an optimized artificial neural network model based on correlation and principal component analysis",
pages = "253-244",
volume = "20",
doi = "10.1016/j.ijggc.2013.11.011"
}
Antanasijević, D., Ristić, M., Perić-Grujić, A.,& Pocajt, V.. (2014). Forecasting GHG emissions using an optimized artificial neural network model based on correlation and principal component analysis. in International Journal of Greenhouse Gas Control
Elsevier Sci Ltd, Oxford., 20, 244-253.
https://doi.org/10.1016/j.ijggc.2013.11.011
Antanasijević D, Ristić M, Perić-Grujić A, Pocajt V. Forecasting GHG emissions using an optimized artificial neural network model based on correlation and principal component analysis. in International Journal of Greenhouse Gas Control. 2014;20:244-253.
doi:10.1016/j.ijggc.2013.11.011 .
Antanasijević, Davor, Ristić, Mirjana, Perić-Grujić, Aleksandra, Pocajt, Viktor, "Forecasting GHG emissions using an optimized artificial neural network model based on correlation and principal component analysis" in International Journal of Greenhouse Gas Control, 20 (2014):244-253,
https://doi.org/10.1016/j.ijggc.2013.11.011 . .

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