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Modeling of policies for reduction of GHG emissions in energy sector using ANN: case study—Croatia (EU) (CROSBI ID 239442)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Bolanča, Tomislav ; Strahovnik, Tomislav ; Ukić, Šime ; Novak Stankov, Mirjana ; Rogošić, Marko Modeling of policies for reduction of GHG emissions in energy sector using ANN: case study—Croatia (EU) // Environmental science and pollution research, 24 (2017), 19; 16172-16185. doi: 10.1007/s11356-017-9216-x

Podaci o odgovornosti

Bolanča, Tomislav ; Strahovnik, Tomislav ; Ukić, Šime ; Novak Stankov, Mirjana ; Rogošić, Marko

engleski

Modeling of policies for reduction of GHG emissions in energy sector using ANN: case study—Croatia (EU)

This study describes the development of tool for testing different policies for reduction of greenhouse gas (GHG) emissions in energy sector using artificial neural networks (ANNs). The case study of Croatia was elaborated. Two different energy consumption scenarios were used as a base for calculations and predictions of GHG emissions: the business as usual (BAU) scenario and sustainable scenario. Both of them are based on predicted energy consumption using different growth rates ; the growth rates within the second scenario resulted from the implementation of corresponding energy efficiency measures in final energy consumption and increasing share of renewable energy sources. Both ANN architecture and training methodology were optimized to produce network that was able to successfully describe the existing data and to achieve reliable prediction of emissions in a forward time sense. The BAU scenario was found to produce continuously increasing emissions of all GHGs. The sustainable scenario was found to decrease the GHG emission levels of all gases with respect to BAU. The observed decrease was attributed to the group of measures termed the reduction of final energy consumption through energy efficiency measures.

GHG emissions ; artificial neural network ; energy consumption ; energy sector

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Podaci o izdanju

24 (19)

2017.

16172-16185

objavljeno

0944-1344

1614-7499

10.1007/s11356-017-9216-x

Povezanost rada

Interdisciplinarne tehničke znanosti, Kemija, Temeljne tehničke znanosti

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