Measurements and determinants of extreme multidimensional energy poverty using machine learning

被引:30
作者
Abbas, Khizar [1 ]
Butt, Khalid Manzoor [2 ]
Xu, Deyi [1 ]
Ali, Muhammad [3 ]
Baz, Khan [1 ]
Kharl, Sanwal Hussain [2 ]
Ahmed, Mansoor [1 ]
机构
[1] China Univ Geosci, Sch Econ & Management, Lumo Rd 388, Wuhan 430074, Peoples R China
[2] Govt Coll Univ, Dept Polit Sci, Lahore, Pakistan
[3] China Univ Geosci, Inst Geophys & Geomatics, Wuhan, Peoples R China
关键词
Severe energy poverty; Multidimensional approach; Socioeconomic determinants; Machine learning; Developing world; FEATURE-SELECTION; CLASSIFICATION; NORMALIZATION; IMPACTS; POLICY;
D O I
10.1016/j.energy.2022.123977
中图分类号
O414.1 [热力学];
学科分类号
摘要
The contribution of this study is twofold. First, it calculates the depth, intensity, and degrees of energy poverty in developing countries using a multidimensional approach. The data analysis of 59 developing countries of Asia and Africa confirmed a widespread 'severe' energy poverty across multiple dimensions. The results revealed that Afghanistan, Yemen, Nepal, India, Bangladesh, and the Philippines in Asia and DR Congo, Chad, Madagascar, Niger, Sierre Leone, Tanzania, and Burundi in Africa were the most susceptible countries to extreme multidimensional energy poverty. Second, the study employed supervised machine learning algorithms to identify the most pertinent socioeconomic determinants of extreme multidimensional energy poverty in the developing world. The results of machine learning identified the accumulated wealth of a household, size and ownership status of a house, marital status of the main breadwinner, and place of residence of the main breadwinner to be the five most influential socioeconomic determinants of extreme multidimensional energy poverty. Therefore, the robust findings of an accurate assessment of extreme energy poverty and its socioeconomic determinants have policy significance to eradicate severe energy poverty by announcing additional incentives, allocating resources, and providing special assistance to those who are at the bottom. (c) 2022 Elsevier Ltd. All rights reserved.
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页数:15
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