Climate Change Impact on Energy Poverty and Energy Efficiency in the Public Housing Building Stock of Bari, Italy
Abstract
:1. Introduction
Energy Poverty in Italy
- Is there a link between sociodemographic indicators and building energy consumptions?
- Is there a link between energy consumption and users’ behavioural patterns, which can denote energy poverty conditions?
- How will climate change affect energy poverty?
2. Case Overview
- Partially enclosed buildings, with two externally exposed facades (north–south or east–west) and two facades adjacent to surrounding buildings.
- Block of stairs and elevators generally positioned in the middle of the building and serving two apartments per floor.
- Internal layout of apartments characterised by a clear separation between living area and sleeping area with a corridor separating the two areas.
- Load-bearing reinforced concrete structures and uninsulated external walls (generally two layers of lightweight tufa stone or of perforated bricks with intermediate air cavity (U = 1.05 W/m2K).
- Uninsulated roof constituted of brick-cement structure with concrete topping and bitumen rainproofing finishing (U = 1.5 W/m2K).
- Windows with single glass and aluminium frame without thermal break, with external roller shutters as blackout closures (U = 5 W/m2K).
3. Materials and Methods
3.1. Measurement of the Energy Poverty
- The spending approach, where an examination of the energy costs incurred, compared to absolute or relative thresholds, provides an indicator to estimate the degree of domestic energy deprivation. The expense taken into consideration can be the real expense or the ideal one necessary to maintain indoor comfort conditions. A disadvantage of this approach is that it limits the causes of energy poverty to low incomes, inadequate quality of buildings and high energy prices, thus not considering the importance of the energy need and sociodemographic circumstances at the level of the tenants.
- The consensual approach, based on surveys with questionnaires proposed to families, by means of questions about the conditions of the house and the ability to reach needs considered basic, relative to the society in which the family lives. The consensual approach requires less complex data to be obtained than that necessary for the previous approach. Finally, a consensual approach has the power to capture the most “hidden” elements of energy poverty, such as social exclusion and material deprivation. The main disadvantage is the subjectivity of the method. Family units, in fact, may not be considered energy-poor despite being characterised as such according to other indicators. Furthermore, the energy-poor could deny the reality of their situation.
- Direct measurements, where the level of energy services (such as heating) is compared to a standard situation. The measurements try to measure whether sufficient levels of energy services are achieved in the home.
3.2. Assessment of Energy Consumption and Calibration of the Energy Model of a Selected Building
- Simulation in a standardised user regime of all apartments, where each apartment was modelled with the same heating setpoint temperature (21 °C) and the same ignition period (9 h).
- Change in the heating setpoint temperature.
- Change in the ignition period.
3.3. Generation of Future Weather Files
4. Results
4.1. Effects of Sociodemographic Indicators on Energy Consumptions
- Correlation between heating energy consumption and age of tenants.
- Correlation between heating energy consumption and number of tenants.
- Behavioural analysis of tenants and prediction of energy poverty conditions.
4.2. Calibration of Building Enery Model and Definition of Users’ Behavioural Patterns
- Apartment 1 is the only one among those analysed which was calibrated using the default settings previously reported.
- Apartments 2, 8, 9 and 10, on the other hand, required a calibration approach that provided for the gradual reduction in both the setpoint temperature and the system start-up period. This aspect is singular because it indicates lower indoor comfort conditions consequent to potential energy poverty.
- Apartments 3, 5 and 6, on the contrary, required a calibration approach that provided for the increase in the setpoint temperature and/or of the star-up period.
- Apartment 4 showed energy consumptions so low as to cover only the production of domestic hot water. Therefore, in the calibrated value, the heating system was switched off at all times. This situation highlights extreme energy poverty issues.
4.3. Climate Change and Future Energy Consumptions
5. Discussion and Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Apt. nr. | Measurement Period | CO [kWh] | CE [kWh] | k [%] | Heating Setpoint T [°C] | System Ignition Time [h] | Nr. of Occupants | Ave Age of Occupants [y] |
---|---|---|---|---|---|---|---|---|
1 | 01 October 2017–30 October 2017 | 4.03 | 4.00 | 0.79 | ||||
31 October 2017–14 February 2018 | 24.29 | 26.61 | −8.72 | |||||
15 February 2018–31 March 2018 | 16.33 | 15.32 | 6.60 | |||||
Average | 18.98 | 20.09 | −5.52 | 20.7 | 9 | 2 | 51.5 | |
2 | 01 October 2017–30 October 2017 | 1.48 | 1.50 | −0.91 | ||||
31 October 2017–14 February 2018 | 9.76 | 8.67 | 12.61 | |||||
15 February 2018–31 March 2018 | 15.30 | 15.18 | 0.74 | |||||
average | 9.77 | 9.10 | 7.35 | 18 | 2 | 2 | 37.0 | |
3 | 01 October 2017–30 October 2017 | 6.50 | 5.93 | 9.76 | ||||
31 October 2017–14 February 2018 | 30.74 | 32.39 | −5.12 | |||||
15 February 2018–31 March 2018 | 20.05 | 19.56 | 2.53 | |||||
average | 24.10 | 24.86 | −3.05 | 25.3 | 9 | 2 | 48.0 | |
4 | 01 October 2017–30 October 2017 | 3.19 | 3.07 | 3.89 | ||||
31 October 2017–14 February 2018 | 3.63 | 3.60 | 0.84 | |||||
15 February 2018–28 February 2018 | 2.76 | 2.70 | 2.27 | |||||
average | 3.34 | 3.29 | 1.60 | - | 0 | 3 | 68.7 | |
5 | 01 October 2017–30 October 2017 | 4.31 | 4.18 | 3.21 | ||||
31 October 2017–14 February 2018 | 47.19 | 50.66 | −6.84 | |||||
15 February 2018–31 March 2018 | 46.95 | 50.73 | −7.44 | |||||
average | 40.07 | 43.02 | −6.86 | 26 | 24 | 1 | 88.0 | |
6 | 01 October 2017–30 October 2017 | 3.07 | 2.90 | 5.75 | ||||
31 October 2017–14 February 2018 | 39.74 | 42.68 | −6.89 | |||||
15 February 2018–31 March 2018 | 32.21 | 30.10 | 7.01 | |||||
average | 31.83 | 33.01 | −3.57 | 26 | 9 | 1 | 93.0 | |
8 | 01 October 2017–30 October 2017 | 3.09 | 3.26 | −5.12 | ||||
31 October 2017–14 February 2018 | 8.80 | 8.67 | 1.56 | |||||
15 February 2018–31 March 2018 | 8.10 | 8.89 | −8.79 | |||||
average | 7.69 | 7.83 | −1.80 | 19 | 9 | 3 | 46.3 | |
9 | 01 October 2017–30 October 2017 | 7.75 | 8.05 | −3.79 | ||||
31 October 2017–14 February 2018 | 15.33 | 14.77 | 3.80 | |||||
15 February 2018–31 March 2018 | 12.39 | 12.89 | −3.87 | |||||
average | 13.35 | 13.19 | 1.18 | 18 | 4 | 4 | 52.5 | |
10 | 01 October 2017–30 October 2017 | 9.40 | 9.52 | −1.19 | ||||
31 October 2017–14 February 2018 | 14.49 | 13.67 | 5.99 | |||||
15 February 2018–31 March 2018 | 13.34 | 14.68 | −9.18 | |||||
average | 13.37 | 13.24 | 0.98 | 18 | 2 | 3 | 52.7 |
Energy Consumption [kWh/m2] | Variation [%] | |||||
---|---|---|---|---|---|---|
2020 | 2050 | 2080 | 2020–2050 | 2050–2080 | 2020–2080 | |
Heating | 34.13 | 26.63 | 19.35 | −22.0 | −27.3 | −43.3 |
Cooling | 37.50 | 51.35 | 70.89 | 37.0 | 38.0 | 89.1 |
Total | 71.63 | 77.99 | 90.24 | 8.9 | 15.7 | 26.0 |
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Vurro, G.; Santamaria, V.; Chiarantoni, C.; Fiorito, F. Climate Change Impact on Energy Poverty and Energy Efficiency in the Public Housing Building Stock of Bari, Italy. Climate 2022, 10, 55. https://doi.org/10.3390/cli10040055
Vurro G, Santamaria V, Chiarantoni C, Fiorito F. Climate Change Impact on Energy Poverty and Energy Efficiency in the Public Housing Building Stock of Bari, Italy. Climate. 2022; 10(4):55. https://doi.org/10.3390/cli10040055
Chicago/Turabian StyleVurro, Giandomenico, Valentina Santamaria, Carla Chiarantoni, and Francesco Fiorito. 2022. "Climate Change Impact on Energy Poverty and Energy Efficiency in the Public Housing Building Stock of Bari, Italy" Climate 10, no. 4: 55. https://doi.org/10.3390/cli10040055
APA StyleVurro, G., Santamaria, V., Chiarantoni, C., & Fiorito, F. (2022). Climate Change Impact on Energy Poverty and Energy Efficiency in the Public Housing Building Stock of Bari, Italy. Climate, 10(4), 55. https://doi.org/10.3390/cli10040055