4.7 Article

Comparative assessment and selection of electric vehicle diffusion models: A global outlook

期刊

ENERGY
卷 238, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.energy.2021.121932

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Diffusion models; Forecasting; Infrastructure planning; Policies; COVID-19

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Simulating future EV demand through various diffusion models provides multiple insights and new directions for policymakers; Identifying the best-fit model cluster for each country based on accuracy metrics is crucial; External variable modeling improves the utility of the study, while sensitivity analysis reveals different diffusion scenarios.
A significant increase in carbon footprint and energy requirements over the decades raised concerns among governments and policymakers. One of the primary contributors to this menace is the automotive sector, which heavily relied on gasoline vehicles. Electric vehicles (EVs) seem to be one of the promising steps towards reducing the carbon footprint and make the transportation sector energy efficient. However, a good forecast of EV demand and the development of related resources are significant chal-lenges for policymakers worldwide. We use various diffusion models, specifically Gompertz, Logistic, Bass, and Generalized Bass, to simulate future EV demand, and in the process, discover multiple insights. We predicted the EV sales of 20 major countries and identified the clusters with the best -fit model for each country based on the accuracy metrics, namely, mean absolute percentage error and mean absolute deviation. A comparative analysis across four different forecasting models provides a new direction to envisage energy requirements. The modelling of external variables like charging infrastructure with the Generalized Bass diffusion model further improves the utility of this study. Sensitivity analysis of the models further reveals different diffusion scenarios and possible policy measures to improve EV ac-ceptances, especially in the presence of an uncertain environment like COVID-19. (c) 2021 Elsevier Ltd. All rights reserved.

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