An Empirical Study of How Household Energy Consumption Is Affected by Co-Owning Different Technological Means to Produce Renewable Energy and the Production Purpose
Abstract
:1. Introduction
2. Literature Review
• Non-owners | People who are not involved with RE; |
• Solar-owners | People who (co-)own a solar energy power plant; |
• Wind-owners | People who (co-)own a wind turbine; |
• Biogas-owners | People who (co-)own a biogas power plant. |
3. Methodology
3.1. Deliberations on Data Collection
3.2. Deliberations on Measurement
I am willing to…
… use household appliances (e.g., washing machine, dishwasher, etc.) mainly when the share of electricity from renewable sources in the grid is very high.
… recharge electrical devices (e.g., laptop) mainly when the share of electricity from renewable sources in the grid is very high.
… recharge electrical means of transportation (e.g., electric car/scooter/bike) mainly when the share of electricity from renewable sources in the grid is very high.
3.3. Deliberations on the Sample
3.4. Deliberations on the Model Specification
4. Results and Hypothesis Testing
4.1. Comparison According to Type of Renewable Energy Source
Summary H1–H6
4.2. Comparison According to the Usage Possibilities within (Co-)Owners of Solar Power Plants
• Non-owners | People who are not involved with RE; |
• Solar-consumers | People who (co-)own solar installations and solely |
consume produced RE; | |
• Solar-consellers | People who (co-)own solar installations and consume |
as well as sell RE at the same time; | |
• Solar-sellers | People who (co-)own solar installations and solely sell |
produced RE. |
Summary H7–H12
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
Abbreviations
ATT | Average Treatment Effect on the Treated |
chi2 | Chi square |
Coef. | Coefficients |
Conf. | Confidence |
Cons | Constant |
DSM | demand side management |
EE | energy efficiency |
H | Hypothesis |
Max | Maximum value |
Min | Minimum value |
NGO | non-governmental organization |
OBS | observations |
Prob | probability |
PSM | propensity score matching |
PV | photovoltaic |
R2 | R square |
RE | renewable energy |
REC | Renewable Energy Communities |
RED II | Renewable Energy Directive II |
RES | renewable energy source |
SCORE | Supporting Consumer Ownership in Renewable Energies |
Std.Dev. | Standard Deviation |
vRES | volatile renewable energy sources |
Appendix A. Questionnaire Flow
Appendix B. Questionnaire Screenshots and Translation
- Rental.
- In your own property.
- Other:
- In a House.
- In a flat.
- Other:
- Yes.
- No.
- I am (co-)owner of a solar power plant.
- I am (co-)owner of a wind turbine.
- I am (co-)owner of a biogas power plant
- I am (co-)owner of a: [user input]
- Solely for own consumption
- Own consumption and sale of the generated energy
- Solely sale of the generated energy (e.g., through a third party)
- Attractive alternative to classic investment opportunities
- Low entry barriers (e.g., participation with small amounts of money possible or low formal effort)
- Reduction of energy costs
- (Partial) independence from electricity price developments
- Contribution to regional value creation/strengthening of regional economy
- Contribution to environmental protection
- Limitation of the market power of large energy suppliers
- Spatial proximity to a project in connection with renewable energies
- Desire to participate in shaping (local) energy policy
- Positive experiences of relatives/acquaintances with projects of this kind
- Other:
- … use household appliances (e.g., washing machine, dishwasher, etc.) mainly when the share of electricity from renewable sources in the grid is very high.
- … recharge electrical devices (e.g., laptop) mainly when the share of electricity from renewable sources in the grid is very high.
- … recharge electrical means of transportation (e.g., electric car/scooter/bike) mainly when the share of electricity from renewable sources in the grid is very high.
- … use household appliances (e.g., washing machine, dishwasher, etc.) mainly when the share of electricity from renewable sources in the grid is very high.
- … recharge electrical devices (e.g., laptop) mainly when the share of electricity from renewable sources in the grid is very high.
- … recharge electrical means of transportation (e.g., electric car/scooter/bike) mainly when the share of electricity from renewable sources in the grid is very high.
- … use household appliances (e.g., washing machine, dishwasher, etc.) mainly when the share of electricity from renewable sources in the grid is very high.
- … recharge electrical devices (e.g., laptop) mainly when the share of electricity from renewable sources in the grid is very high.
- … recharge electrical means of transportation (e.g., electric car/scooter/bike) mainly when the share of electricity from renewable sources in the grid is very high.
- …to use my household electrical appliances (washing machine, dishwasher, etc.) mainly during production peaks.
- …to charge my electrical devices (e.g., laptop) mainly during production peaks.
- …to charge my electronic means of transportation (electric car, e-bike, e-scooter etc.) mainly during production peaks.
- …use my household electrical appliances (washing machine, dishwasher, etc.) mainly during production peaks.
- …charge my electrical devices (e.g., laptop) mainly during production peaks
- …charge my electronic means of transportation (electric car, e-bike, e-scooter etc.) mainly during production peaks.
- High (installation) costs
- Data protection concerns
- Insufficient coordination with other consumers/insufficient network infrastructure
- Insufficient information about the added value of smart meter deployment (e.g., cost savings, energy efficiency potential)
- I do not know
- Other:
- Detailed display of consumption, amount of electricity produced and electricity costs
- Facilitation of billing processes (e.g., remote reading by suppliers)
- Flexibilization of billing schemes (e.g., monthly billing)
- Analysis of own consumption data/creation of a consumption profile
- (Anonymized comparisons with other users as benchmarking
- Possibility of automatic/remote controlled switching on of household appliances depending on production fluctuations (or in absence, e.g., during vacation time)
- I do not know
- Other:
- Male
- Female
- Yes under 500 euro/month
- Yes between 500 and 1000 euro net/month
- Yes between 1001 and 2000 euro net/month
- Yes between 2001 and 3000 euro net/month
- Yes between 3001 and 4000 euro net/month
- Yes between 4001 and 5000 euro net/month
- Yes over 5000 euro net/month
- No
- Prefer not to say
Appendix C
Variable | Obs | Mean | Std.Dev. | Min | Max |
---|---|---|---|---|---|
participation | 2074 | 1.873 | 0.333 | 1 | 2 |
usage | 264 | 1.693 | 0.823 | 1 | 3 |
group | 2074 | 0.143 | 0.4 | 0 | 3 |
age | 1978 | 4.616 | 1.416 | 1 | 7 |
income | 1855 | 4.698 | 1.61 | 1 | 8 |
education | 1934 | 3.56 | 1.472 | 1 | 6 |
population | 1913 | 3.832 | 1.626 | 1 | 6 |
gender | 1954 | 0.403 | 0.491 | 0 | 1 |
df_household | 1994 | 3.483 | 1.391 | 1 | 5 |
df_electrical | 2006 | 3.061 | 1.481 | 1 | 5 |
df_transport | 1700 | 3.439 | 1.482 | 1 | 5 |
participation | 2074 | 1.873 | 0.333 | 1 | 2 |
Appendix D
Generated Sample | 2143 |
Participants with else option | −50 |
Cases with contradictory answers | −7 |
(co-)owners of more than one installation | −12 |
Remaining sample | 2074 |
Participation | Coef. | Std. Err | z-Value | p-Value | [95% Conf. Interval] |
---|---|---|---|---|---|
gender | −0.3719166 | 0.1514672 | −2.46 | 0.014 | −0.6687869 −0.0750463 |
age | 0.1806668 | 0.0652584 | 2.77 | 0.006 | 0.0527627 0.3085708 |
income | 0.1312171 | 0.0581692 | 2.26 | 0.024 | 0.0172075 0.2452267 |
education | 0.1018039 | 0.0646431 | 1.57 | 0.115 | −0.0248943 0.2285022 |
population | −0.2589355 | 0.0633851 | −4.09 | 0.000 | −0.383168 −0.1347029 |
_cons | −1.851322 | 0.0873159 | −21.20 | 0.000 | −2.022459 −1.680186 |
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Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 218 | 3.612 1 | 0.231 ** | 1.722 | 0.043 |
Controls | 670 | 3.382 | ||||
Charging electrical appliances | Treated | 218 | 3.114 | 0.060 | 0.402 | 0.344 |
Controls | 671 | 3.054 | ||||
Charging electrical means of transportation | Treated | 218 | 3.489 | 0.084 | 0.548 | 0.292 |
Controls | 572 | 3.405 |
Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 20 | 3.850 | 0.210 | 0.511 | 0.305 |
Controls | 92 | 3.640 | ||||
Charging electrical appliances | Treated | 20 | 3.350 | 0.362 | 0.781 | 0.218 |
Controls | 92 | 2.988 | ||||
Charging electrical means of transportation | Treated | 20 | 3.400 | 0.140 | 0.335 | 0.369 |
Controls | 82 | 3.260 |
Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 5 | 3.400 | −0.408 | −0.379 | 0.354 |
Controls | 17 | 3.808 | ||||
Charging electrical appliances | Treated | 5 | 3.000 | −0.092 | −0.084 | 0.467 |
Controls | 17 | 3.092 | ||||
Charging electrical means of transportation | Treated | 5 | 3.200 | −0.667 | −0.641 | 0.265 |
Controls | 15 | 3.867 |
Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 218 | 3.077 | −0.864 | −1.129 | 0.130 |
Controls | 18 | 3.941 | ||||
Charging electrical appliances | Treated | 218 | 3.096 | −0.600 | −0.765 | 0.223 |
Controls | 18 | 3.696 | ||||
Charging electrical means of transportation | Treated | 218 | 3.149 | −0.266 | −0.351 | 0.363 |
Controls | 14 | 3.415 |
Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 218 | 3.000 | −2.000 *** | −5.806 | <0.001 1 |
Controls | 1 | 5.000 | ||||
Charging electrical appliances | Treated | 218 | 4.000 | −1.000 ** | 2.201 | 0.014 |
Controls | 1 | 3.000 | ||||
Charging electrical means of transportation 2 | Treated | 218 | - | - | - | - |
Controls | 1 | 3.000 |
Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 20 | - | - | - | - |
Controls | - | - | ||||
Charging electrical appliances | Treated | 20 | - | - | - | - |
Controls | - | - | ||||
Charging electrical means of transportation | Treated | 20 | - | - | - | - |
Controls | - | - |
Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 128 | 3.347 | −0.034 | −0.191 | 0.424 |
Controls | 509 | 3.381 | ||||
Charging electrical appliances | Treated | 128 | 2.976 | −0.120 | −0.674 | 0.250 |
Controls | 510 | 3.096 | ||||
Charging electrical means of transportation | Treated | 128 | 3.386 | −0.011 | −0.057 | 0.477 |
Controls | 442 | 3.397 |
Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 47 | 4.130 | 0.909 *** | 3.545 | <0.001 |
Controls | 191 | 3.222 | ||||
Charging electrical appliances | Treated | 47 | 3.356 | 0.442 | 1.459 | 0.073 |
Controls | 194 | 2.914 | ||||
Charging electrical means of transportation | Treated | 47 | 3.538 | 0.370 | 1.085 | 0.140 |
Controls | 162 | 3.169 |
Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 43 | 3.810 | 0.193 | 0.671 | 0.251 |
Controls | 188 | 3.616 | ||||
Charging electrical appliances | Treated | 43 | 3.262 | 0.136 | 0.382 | 0.351 |
Controls | 187 | 3.126 | ||||
Charging electrical means of transportation | Treated | 43 | 3.722 | 0.244 | 0.784 | 0.217 |
Controls | 165 | 3.478 |
Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 47 | 4.100 | 1.242 *** | 2.786 | 0.003 |
Controls | 39 | 2.858 | ||||
Charging electrical appliances | Treated | 47 | 3.410 | 0.685 | 1.461 | 0.074 |
Controls | 40 | 2.725 | ||||
Charging electrical means of transportation | Treated | 47 | 3.412 | 0.584 | 1.051 | 0.148 |
Controls | 32 | 2.828 |
Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 47 | 4.118 | 0.479 | 0.604 | 0.274 |
Controls | 16 | 3.639 | ||||
Charging electrical appliances | Treated | 47 | 3.125 | −0.153 | −0.218 | 0.414 |
Controls | 16 | 3.278 | ||||
Charging electrical means of transportation | Treated | 47 | 3.714 | 0.214 | 0.297 | 0.384 |
Controls | 13 | 3.500 |
Dimension | Group | OBS | Mean | ATT | t-Value | p-Value |
---|---|---|---|---|---|---|
Usage of household appliances | Treated | 43 | 3.800 | 0.028 | 0.057 | 0.477 |
Controls | 23 | 3.772 | ||||
Charging electrical appliances | Treated | 43 | 3.300 | −0.267 | −0.461 | 0.323 |
Controls | 24 | 3.567 | ||||
Charging electrical means of transportation | Treated | 43 | 3.706 | −0.161 | −0.249 | 0.402 |
Controls | 16 | 3.867 |
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Roth, L.; Lowitzsch, J.; Yildiz, Ö. An Empirical Study of How Household Energy Consumption Is Affected by Co-Owning Different Technological Means to Produce Renewable Energy and the Production Purpose. Energies 2021, 14, 3996. https://doi.org/10.3390/en14133996
Roth L, Lowitzsch J, Yildiz Ö. An Empirical Study of How Household Energy Consumption Is Affected by Co-Owning Different Technological Means to Produce Renewable Energy and the Production Purpose. Energies. 2021; 14(13):3996. https://doi.org/10.3390/en14133996
Chicago/Turabian StyleRoth, Lucas, Jens Lowitzsch, and Özgür Yildiz. 2021. "An Empirical Study of How Household Energy Consumption Is Affected by Co-Owning Different Technological Means to Produce Renewable Energy and the Production Purpose" Energies 14, no. 13: 3996. https://doi.org/10.3390/en14133996
APA StyleRoth, L., Lowitzsch, J., & Yildiz, Ö. (2021). An Empirical Study of How Household Energy Consumption Is Affected by Co-Owning Different Technological Means to Produce Renewable Energy and the Production Purpose. Energies, 14(13), 3996. https://doi.org/10.3390/en14133996