Smart energy technologies for the collective: Time-shifting, demand reduction and household practices in a Positive Energy Neighbourhood in Norway

Fernanda Guasselli,Apostolos Vavouris,Lina Stankovic,Vladimir Stankovic, Sebastien Didierjean, Kirsten Gram-Hanssen

ENERGY RESEARCH & SOCIAL SCIENCE(2024)

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摘要
The climate and energy crises are hastening the implementation of Positive Energy Districts/Neighbourhoods (PEDs/PENs) in European cities in line with the goal of net zero emissions by 2050. Demand-side energy reduction and flexibility are crucial to meeting this target by matching demand with local renewable energy production; however, it has not yet been empirically investigated in PEDs/PENs. Addressing this gap, we aimed to investigate households' energy practices in a Positive Energy Neighbourhood in Norway, focusing on the role of smart technologies for demand-side reduction and flexibility. A mixed methods approach was applied, combining in-depth and semi-structured interviews, house tours, actual energy consumption, and simulated solar energy production presented as narratives. The results indicated the need to rethink smart energy technologies to address the collective nature of PEDs/PENs by showing that (i) different ways of interpreting and domesticating these technologies impact demand reduction and flexibility of households with implications at the neighbourhood level, (ii) the individualistic design approach of smart energy technologies does not afford community interaction in terms of knowledge transfer and collective engagement, and (iii) collective representations of energy affordability and convenience attributed to such technologies may act as barriers to households' engagement with demand-side strategies. These results can be seen as recommendations for PEDs/PENs stakeholders and policies to foster the development of community-based smart energy technologies.
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关键词
Demand-side energy management,Smart home technologies,Renewable energy sources,Prosumers,Electric vehicles,Social Practices
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