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Performance Indicators of Electricity Generation at Country Level—The Case of Italy

doi: 10.3390/en11030650
handle: 11583/2703582 , 2108/356298 , 11573/1087515
Power Grids face significant variability in their operation, especially where there are high proportions of non-programmable renewable energy sources constituting the electricity mix. An accurate and up-to-date knowledge of operational data is essential to guaranteeing the optimal management of the network, and this aspect will be even more crucial for the full deployment of Smart Grids. This work presents a data analysis of the electricity production at the country level, by considering some performance indicators based on primary energy consumption, the share of renewable energy sources, and CO2 emissions. The results show a significant variability of the indicators, highlighting the need of an accurate knowledge of operational parameters as a support for future Smart Grid management algorithms based on multi-objective optimization of power generation. The renewable share of electricity production has a positive impact, both on the primary energy factor and on the CO2 emission factor. However, a strong increase of the renewable share requires that the supply/demand mismatching issues be dealt with through appropriate measures.
- University of Rome Tor Vergata Italy
- Sapienza University of Rome Italy
- Polytechnic University of Turin Italy
- Delft University of Technology Netherlands
- University of Rome Tor Vergata Italy
690, Electricity generation, Data Analysis, Technology, T, primary energy, data analysis, Settore ING-IND/11, CO2 emissions, Renewable energy sources, co2 emissions, electricity generation; primary energy; renewable energy sources; data analysis; CO<sub>2</sub> emissions, electricity generation, electricity generation; primary energy; renewable energy sources; data analysis; CO2 emissions, renewable energy sources
690, Electricity generation, Data Analysis, Technology, T, primary energy, data analysis, Settore ING-IND/11, CO2 emissions, Renewable energy sources, co2 emissions, electricity generation; primary energy; renewable energy sources; data analysis; CO<sub>2</sub> emissions, electricity generation, electricity generation; primary energy; renewable energy sources; data analysis; CO2 emissions, renewable energy sources
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