Sustainability, Vol. 16, Pages 10202: A Machine Learning Approach to Understanding Sociodemographic Factors in Electric Vehicle Ownership in the U.S.

Fecha de publicación: 21/11/2024
Fuente: Sustainability - Revista científica (MDPI)
Sustainability, Vol. 16, Pages 10202: A Machine Learning Approach to Understanding Sociodemographic Factors in Electric Vehicle Ownership in the U.S.
Sustainability doi: 10.3390/su162310202
Authors:
Eazaz Sadeghvaziri
Ramina Javid
Hananeh Omidi
Mahmoud Arafat

Electric vehicles (EVs) are rapidly gaining popularity due to their environmental benefits, such as reducing greenhouse gas emissions. Considering the sociodemographic factors that influence the adoption of EVs is essential when developing equitable and efficient transportation policies. This article leverages the National Household Travel Survey (NHTS) 2022 data to analyze the sociodemographic factors influencing the adoption of EVs in the U.S. A binary logistic regression model and three machine learning models were employed to predict EV ownership in the U.S. The results of the regression model suggested that the Pacific division leads in EV adoption, most likely due to legislation and improved infrastructure, while regions such as East South Central suffer from lower EV adoption. The findings indicate that higher household income and home ownership significantly correlate with increased EV adoption. In contrast, renters and rural households exhibit lower adoption rates suggesting an increase in charging facilities in these regions can promote EV adoption. The Random Forest model outperforms others with an accuracy of 82.72%, suggesting its robustness in handling complex relationships between variables. Policy implications include the need for financial incentives for low-income households and increased charging infrastructure in rural and underserved urban areas to promote equitable EV adoption.