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Modeling of energy consumption and related GHG (greenhouse gas) intensity and emissions in Europe using general regression neural networks

Authorized Users Only
2015
Authors
Antanasijević, Davor
Pocajt, Viktor
Ristić, Mirjana
Perić-Grujić, Aleksandra
Article (Published version)
Metadata
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Abstract
This paper presents a new approach for the estimation of energy-related GHG (greenhouse gas) emissions at the national level that combines the simplicity of the concept of GHG intensity and the generalization capabilities of ANNs (artificial neural networks). The main objectives of this work includes the determination of the accuracy of a GRNN (general regression neural network) model applied for the prediction of EC (energy consumption) and GHG intensity of energy consumption, utilizing general country statistics as inputs, as well as analysis of the accuracy of energy-related GHG emissions obtained by multiplying the two aforementioned outputs. The models were developed using historical data from the period 2004-2012, for a set of 26 European countries (EU Members). The obtained results demonstrate that the GRNN GHG intensity model provides a more accurate prediction, with the MAPE (mean absolute percentage error) of 4.5%, than tested MLR (multiple linear regression) and second-order... and third-order non-linear MPR (multiple polynomial regression) models. Also, the GRNN EC model has high accuracy (MAPE = 3.6%), and therefore both GRNN models and the proposed approach can be considered as suitable for the calculation of GHG emissions. The energy-related predicted GHG emissions were very similar to the actual GHG emissions of EU Members (MAPE = 6.4%).

Keywords:
Artificial neural networks / GRNN (general regression neural network) / Multiple linear regression / Multiple polynomial regression
Source:
Energy, 2015, 84, 816-824
Publisher:
  • Pergamon-Elsevier Science 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.energy.2015.03.060

ISSN: 0360-5442

WoS: 000355035900077

Scopus: 2-s2.0-84928437188
[ Google Scholar ]
49
37
URI
http://TechnoRep.tmf.bg.ac.rs/handle/123456789/2987
Collections
  • Radovi istraživača / Researchers’ publications (TMF)
Institution/Community
Tehnološko-metalurški fakultet
TY  - JOUR
AU  - Antanasijević, Davor
AU  - Pocajt, Viktor
AU  - Ristić, Mirjana
AU  - Perić-Grujić, Aleksandra
PY  - 2015
UR  - http://TechnoRep.tmf.bg.ac.rs/handle/123456789/2987
AB  - This paper presents a new approach for the estimation of energy-related GHG (greenhouse gas) emissions at the national level that combines the simplicity of the concept of GHG intensity and the generalization capabilities of ANNs (artificial neural networks). The main objectives of this work includes the determination of the accuracy of a GRNN (general regression neural network) model applied for the prediction of EC (energy consumption) and GHG intensity of energy consumption, utilizing general country statistics as inputs, as well as analysis of the accuracy of energy-related GHG emissions obtained by multiplying the two aforementioned outputs. The models were developed using historical data from the period 2004-2012, for a set of 26 European countries (EU Members). The obtained results demonstrate that the GRNN GHG intensity model provides a more accurate prediction, with the MAPE (mean absolute percentage error) of 4.5%, than tested MLR (multiple linear regression) and second-order and third-order non-linear MPR (multiple polynomial regression) models. Also, the GRNN EC model has high accuracy (MAPE = 3.6%), and therefore both GRNN models and the proposed approach can be considered as suitable for the calculation of GHG emissions. The energy-related predicted GHG emissions were very similar to the actual GHG emissions of EU Members (MAPE = 6.4%).
PB  - Pergamon-Elsevier Science Ltd, Oxford
T2  - Energy
T1  - Modeling of energy consumption and related GHG (greenhouse gas) intensity and emissions in Europe using general regression neural networks
EP  - 824
SP  - 816
VL  - 84
DO  - 10.1016/j.energy.2015.03.060
ER  - 
@article{
author = "Antanasijević, Davor and Pocajt, Viktor and Ristić, Mirjana and Perić-Grujić, Aleksandra",
year = "2015",
abstract = "This paper presents a new approach for the estimation of energy-related GHG (greenhouse gas) emissions at the national level that combines the simplicity of the concept of GHG intensity and the generalization capabilities of ANNs (artificial neural networks). The main objectives of this work includes the determination of the accuracy of a GRNN (general regression neural network) model applied for the prediction of EC (energy consumption) and GHG intensity of energy consumption, utilizing general country statistics as inputs, as well as analysis of the accuracy of energy-related GHG emissions obtained by multiplying the two aforementioned outputs. The models were developed using historical data from the period 2004-2012, for a set of 26 European countries (EU Members). The obtained results demonstrate that the GRNN GHG intensity model provides a more accurate prediction, with the MAPE (mean absolute percentage error) of 4.5%, than tested MLR (multiple linear regression) and second-order and third-order non-linear MPR (multiple polynomial regression) models. Also, the GRNN EC model has high accuracy (MAPE = 3.6%), and therefore both GRNN models and the proposed approach can be considered as suitable for the calculation of GHG emissions. The energy-related predicted GHG emissions were very similar to the actual GHG emissions of EU Members (MAPE = 6.4%).",
publisher = "Pergamon-Elsevier Science Ltd, Oxford",
journal = "Energy",
title = "Modeling of energy consumption and related GHG (greenhouse gas) intensity and emissions in Europe using general regression neural networks",
pages = "824-816",
volume = "84",
doi = "10.1016/j.energy.2015.03.060"
}
Antanasijević, D., Pocajt, V., Ristić, M.,& Perić-Grujić, A.. (2015). Modeling of energy consumption and related GHG (greenhouse gas) intensity and emissions in Europe using general regression neural networks. in Energy
Pergamon-Elsevier Science Ltd, Oxford., 84, 816-824.
https://doi.org/10.1016/j.energy.2015.03.060
Antanasijević D, Pocajt V, Ristić M, Perić-Grujić A. Modeling of energy consumption and related GHG (greenhouse gas) intensity and emissions in Europe using general regression neural networks. in Energy. 2015;84:816-824.
doi:10.1016/j.energy.2015.03.060 .
Antanasijević, Davor, Pocajt, Viktor, Ristić, Mirjana, Perić-Grujić, Aleksandra, "Modeling of energy consumption and related GHG (greenhouse gas) intensity and emissions in Europe using general regression neural networks" in Energy, 84 (2015):816-824,
https://doi.org/10.1016/j.energy.2015.03.060 . .

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