Energy poverty prediction in the United Kingdom: A machine learning approach

被引:23
作者
Al Kez, Dlzar [1 ]
Foley, Aoife [1 ,2 ,3 ]
Abdul, Zrar Khald [4 ]
Rio, Dylan Furszyfer Del [1 ]
机构
[1] Queens Univ Belfast, Sch Mech & Aerosp Engn, Belfast, North Ireland
[2] Univ Manchester, Sch Engn, Manchester, England
[3] Trinity Coll Dublin, Dept Civil Struct & Environm Engn, Dublin, Ireland
[4] Charmo Univ, Dept Appl Comp Sci, Chamchamal, Iraq
关键词
Energy poverty; machine learning; predictive model; random forest; socioeconomic data; remote sensing; FUEL POVERTY; RANDOM FOREST; REGRESSION;
D O I
10.1016/j.enpol.2023.113909
中图分类号
F [经济];
学科分类号
02 ;
摘要
Energy poverty affects billions worldwide, including people in developed and developing countries. Identifying those living in energy poverty and implementing successful solutions require timely and detailed survey data, which can be costly, time-consuming, and difficult to obtain, particularly in rural areas. Through machine learning, this study investigates the possibility of identifying vulnerable households by combining satellite remote sensing with socioeconomic survey data in the UK. In doing so, this research develops a machine learning-based approach to predicting energy poverty in the UK using the low income low energy efficiency (LILEE) indicator derived from a combination of remote sensing and socioeconomic data. Data on energy con-sumption, building characteristics, household income, and other relevant variables at the local authority level are fused with geospatial satellite imagery. The findings indicate that a machine learning algorithm incorporating geographical and environmental information can predict approximately 83% of districts with significant energy poverty. This study contributes to the expanding body of research on energy poverty prediction and can help shape policy and decision-making for energy efficiency and social fairness in the UK and worldwide.
引用
收藏
页数:17
相关论文
共 80 条
[1]  
Ahmad L, 2021, ENVIRON SCI POLLUT R, V28, P68657, DOI 10.1007/s11356-021-15408-x
[2]   Program targeting with machine learning and mobile phone data: Evidence from an anti-poverty intervention in Afghanistan [J].
Aiken, Emily L. ;
Bedoya, Guadalupe ;
Blumenstock, Joshua E. ;
Coville, Aidan .
JOURNAL OF DEVELOPMENT ECONOMICS, 2023, 161
[3]   Exploring the sustainability challenges facing digitalization and internet data centers [J].
Al Kez, Dlzar ;
Foley, Aoife M. ;
Laverty, David ;
Del Rio, Dylan Furszyfer ;
Sovacool, Benjamin .
JOURNAL OF CLEANER PRODUCTION, 2022, 371
[4]   Rethink fuel poverty as a complex problem [J].
Baker, Keith J. ;
Mould, Ronald ;
Restrick, Scott .
NATURE ENERGY, 2018, 3 (08) :610-612
[5]   Energy poverty, health and education outcomes: Evidence from the developing world [J].
Banerjee, Rajabrata ;
Mishra, Vinod ;
Maruta, Admasu Asfaw .
ENERGY ECONOMICS, 2021, 101
[6]   Decarbonization pathways for the residential sector in the United States [J].
Berri, Peter ;
Wilson, Eric J. H. ;
Reyna, Janet L. ;
Fontanini, Anthony D. ;
Hertwich, Edgar G. .
NATURE CLIMATE CHANGE, 2022, 12 (08) :712-+
[7]   Prediction of Fuel Poverty Potential Risk Index Using Six Regression Algorithms: A Case-Study of Chilean Social Dwellings [J].
Bienvenido-Huertas, David ;
Pulido-Arcas, Jesus A. ;
Rubio-Bellido, Carlos ;
Perez-Fargallo, Alexis .
SUSTAINABILITY, 2021, 13 (05) :1-30
[8]   Fighting poverty with data [J].
Blumenstock, Joshua Evan .
SCIENCE, 2016, 353 (6301) :753-754
[9]  
Bouzarovski S, 2018, ROU EXPLOR ENERG ST, P1
[10]   Geographies of injustice: the socio-spatial determinants of energy poverty in Poland, the Czech Republic and Hungary [J].
Bouzarovski, Stefan ;
Herrero, Sergio Tirado .
POST-COMMUNIST ECONOMIES, 2017, 29 (01) :27-50