World Electric Vehicle Journal (May 2024)

Medium- and Long-Term Electric Vehicle Ownership Forecasting for Urban Residents

  • Zhao-Xia Xiao,
  • Jiang-Wei Jia,
  • Xiang-Yu Liu,
  • Hong-Kun Bai,
  • Qiu-Yan Li,
  • Yuan-Peng Hua

DOI
https://doi.org/10.3390/wevj15050212
Journal volume & issue
Vol. 15, no. 5
p. 212

Abstract

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With the rapid development of electric vehicles (EVs) in Chinese cities, accurately forecasting the number of EVs used by urban residents in the next five years and more long term is beneficial for the government to adjust industrial policies of EVs, guide the rational planning of urban charging facilities and supporting distribution network, and achieve the rational and orderly development of the EV industry. The paper considers the advantages of using the grey GM(1,1) prediction model to predict the short-term ownership of EVs by urban residents. Then, by forecasting the number of EV users in a certain city in the future and predicting the number of private vehicles in the future, the boundary conditions for long-term year ownership of EVs by residents are determined. Combined with historical data and short-term forecast data generated by the grey prediction model, the model parameters that include the innovation coefficient and imitation coefficient of the Bass model are trained using a genetic algorithm. Finally, the Bass model is used for medium- to long-term ownership forecasting from 2023 to 2040. The prediction error for the target year is provided. The simulation results indicate that the ownership of resident EVs in this city will experience rapid growth in the next five years.

Keywords