2024
DOI: 10.1021/acs.est.4c06093
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Mapping Spatiotemporal Disparities in Residential Electricity Inequality Using Machine Learning

Ying Yu,
Xijing Li,
Angel Hsu
et al.

Abstract: The move toward electrification is critical for decarbonizing the energy sector but may exacerbate energy unaffordability without proper safeguards. Addressing this challenge requires capturing neighborhood-scale dynamics to uncover the blind spots in residential electricity inequality. Based on publicly available, multisourced remote sensing and census data, we develop a high-resolution, spatiotemporally explicit machine learning (ML) framework to predict tract-level monthly electricity consumption across the… Show more

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