A Regression Model to Assess the Social Acceptance of Demand Response Programs

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Abstract

Residential demand response has been playing an important role in the low carbon energy system transition. Although this is not a new concept, the popularity of Demand Response (DR) programs is growing, driven by the increasing opportunities that emerged with smart grid appliances as well as by their potential to support the integration of variable renewables generation. The end-user plays a key role in the successful deployment and dissemination of these DR programs. This study aims to assess social awareness and acceptance of DR programs, based on a survey for data collection and complemented with the regression models. The results suggest that the economic determinants, contribution to environmental protection as well as the extent of urbanization are important motivating drivers, to be explored in the future to encourage the residential consumers’ participation in DR programs.

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APA

Ferreira, P., Rocha, A., & Araújo, M. (2021). A Regression Model to Assess the Social Acceptance of Demand Response Programs. In Lecture Notes of the Institute for Computer Sciences, Social-Informatics and Telecommunications Engineering, LNICST (Vol. 375, pp. 84–93). Springer Science and Business Media Deutschland GmbH. https://doi.org/10.1007/978-3-030-73585-2_6

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