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Sources of Energy Poverty: A Factor Analysis Approach for Spain

[journal article]

Taltavull de La Paz, Paloma
Juárez Tárrega, Francisco
Su, Zhenyu
Monllor, Paloma

Abstract

This study estimates housing quality and features explaining energy poverty in Spain and its regions. By using the EU-SILC dataset for 2008-2019, it calculates the hidden links between energy poverty indicators and housing features, controlled by other variables such as type of household, poverty, a... view more

This study estimates housing quality and features explaining energy poverty in Spain and its regions. By using the EU-SILC dataset for 2008-2019, it calculates the hidden links between energy poverty indicators and housing features, controlled by other variables such as type of household, poverty, and housing tenancy. Confirmatory factor analysis is used to identify the role of different dimensions in explaining energy poverty at the household level. The empirical evidence finds three hidden factors associating energy poverty with poverty, poor housing quality, and housing size and outskirts location. These three factors enable classifying households accordingly, revealing their distribution across Spain and three of its 17 Spanish regions: Madrid, Cataluña, and Valencian Community. Findings indicate how the impact of energy poverty differs by region, rejecting the general hypothesis that all households in poverty live in poor housing because they cannot afford the maintenance costs, thus causing energy poverty. Results suggest that energy poverty due to poor housing quality and location affects many households that are not necessarily poor, with different impacts depending on location. The association between energy poverty and larger houses located on the outskirts represents new evidence in the literature and is one of the contributions of this study, together with the methodology for classification. Results suggest that retrofitting investment would be crucial in reducing energy poverty problems in Spain.... view less

Keywords
Spain; private household; life situation; survey; rent; energy; efficiency; panel; housing conditions

Classification
Ecology, Environment
Sociology of Settlements and Housing, Urban Sociology

Free Keywords
energy efficiency; energy poverty; panel and factor analysis; EU-SILC 2008-2019

Document language
English

Publication Year
2022

Page/Pages
p. 1-18

Journal
Frontiers in Energy Research, 10 (2022)

DOI
https://doi.org/10.3389/fenrg.2022.847845

ISSN
2296-598X

Status
Published Version; peer reviewed

Licence
Creative Commons - Attribution 4.0


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© 2007 - 2025 Social Science Open Access Repository (SSOAR).
Based on DSpace, Copyright (c) 2002-2022, DuraSpace. All rights reserved.