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An Empirical Study of How Household Energy Consumption Is Affected by Co-Owning Different Technological Means to Produce Renewable Energy and the Production Purpose

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  • Lucas Roth

    (Kelso-Professorship for Comparative Law, East European Economic Law and European Legal Policy, Faculty of Business Administration and Economics, European University Viadrina, Grosse Scharrnstr. 59, 15230 Frankfurt (Oder), Germany)

  • Jens Lowitzsch

    (Kelso-Professorship for Comparative Law, East European Economic Law and European Legal Policy, Faculty of Business Administration and Economics, European University Viadrina, Grosse Scharrnstr. 59, 15230 Frankfurt (Oder), Germany)

  • Özgür Yildiz

    (Department of Environmental Economics and Economic Policy, Technische Universität Berlin, Str. des 17. Juni 135, 10623 Berlin, Germany
    Advyce GmbH, Brunnstraße 7, 80331 München, Germany)

Abstract

The transition from fossil fuel-based to renewable energy sources is one of the main economic and social challenges of the early 21st century. Due to the volatile character of wind and solar power production, matching supply and demand is essential for this transition to be successful. In this context, the willingness of private consumers to use energy flexibly has gained growing attention. Research indicates that a viable driver to motivate consumers to be demand flexible is to make them (co-)owners of renewable energy production facilities. However, existing research has only analyzed this question from an aggregated perspective. This article analyses whether behavioral changes triggered by (co-)ownership in renewables differ according to the type of installation; be it solar, wind, or bioenergy. In addition, the prosumption options self-consumption/self-consumption and sale/sale are considered. To do so, we collected 2074 completed questionnaires on energy consumption that entered an econometric model using propensity score matching to control for estimation biases. We find significant differences in the willingness to consume electricity in a flexible manner for (co-)owners of solar installations. However, only the usage of household appliances proves to be statistically significant ( p -value = 0.04). Furthermore, the results show that within the group of (co-)owners of solar installation, the choice between self-consumption and sale of the produced energy has a significant effect on the inclination to become demand flexible ( p -value ≤ 0.001; p -value = 0.003).

Suggested Citation

  • Lucas Roth & Jens Lowitzsch & 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, MDPI, vol. 14(13), pages 1-38, July.
  • Handle: RePEc:gam:jeners:v:14:y:2021:i:13:p:3996-:d:587793
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    References listed on IDEAS

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    Cited by:

    1. Roth, Lucas & Lowitzsch, Jens & Yildiz, Özgür, 2023. "Which (co-)ownership types in renewables are associated with the willingness to adopt energy-efficient technologies and energy-conscious behaviour? Data from German households," Energy Policy, Elsevier, vol. 180(C).
    2. Agnieszka Izabela Baruk & Mateusz Grzesiak, 2022. "Benefits Achieved by Energy Suppliers through Cooperation with Individual Recipients and Their Readiness for This Cooperation," Energies, MDPI, vol. 15(10), pages 1-16, May.
    3. Lucas Roth & Özgür Yildiz & Jens Lowitzsch, 2021. "An Empirical Approach to Differences in Flexible Electricity Consumption Behaviour of Urban and Rural Populations—Lessons Learned in Germany," Sustainability, MDPI, vol. 13(16), pages 1-31, August.

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