Resumen:
Recent data from the US Energy Information Administration reveals that nearly one in three households in theUnited States report experiencing energy poverty, and this number is only expected to rise. Federal assistanceprograms exist, but allocations across states have been nearly static since 1984, while the distribution of energypoverty is dynamic in location and time. We implement a LASSO-based machine learning approach using sociode-mographic and geographical information to estimate energy burden in each US census tract for 2015 and 2020.We then compare the allocation to states from the Low Income Home Energy Assistance Program to an optimizedallocation. We allocate funds to the most burdened households, providing them with enough assistance to reducetheir energy expenditures so that their household energy burden is equal to a new maximum allowable energyburden. This markedly shifts funds from the northern cold-weather states to the southern warm-weather states.
Índice de impacto JCR y cuartil WoS: 11,700 - Q1 (2023)
Referencia DOI: https://www.science.org/doi/10.1126/sciadv.adp8183
Publicado en papel: Octubre 2024.
Publicado on-line: Octubre 2024.
Cita:
C. Batlle, P. Heller, C. Knittel, T. Schittekatte, US federal resource allocations are inconsistent with concentrations of energy poverty. Science Advances. Vol. 10, nº. 41, pp. eadp8183-1 - eadp8183-10, Octubre 2024. [Online: Octubre 2024]