Electric Vehicle Sales Forecasting Model Considering Green Premium: A Chinese Market-based Perspective

27 Feb 2023  ·  Zhi Li, Hang Fan, Shuyan Dong ·

"Green Premiums" which means the difference in cost between emissions-emitting technology and zero-emissions or emissions-reducing technology is significant for those renewable energy technology to address the climate change challenge facing the world in this century. China's Electrical Vehicles (EVs) industry is the first to cross the green premium into the commercialization stage, prompting its market size to exceed that of the US and EU combined, making it the most inspiring case in global carbon reduction practices. This study, which is based on first-hand data from industry research and innovatively constructs a multi-factor green premium model for EVs based on Total Cost of Ownership (TCO) analysis, finds that EVs currently have a higher green premium than Internal Combustion Engine Vehicles (ICEVs) and is expected that short-range EVs will be the first to achieve parity in acquisition costs by 2025 and long-range EVs by 2030. Further, this paper constructs a generalized Bass diffusion model considering the green premium, selects the time series data of EVs diffusion in the Chinese market from 2010-2021, and uses a genetic algorithm to fit the parameters to predict the EVs market penetration in the next ten years under different scenarios. The model prediction results show that EVs are successful innovative diffusion products and the market penetration rate depends largely on their green premium. The Chinese EVs market may experience a slowdown or even a decline in growth in the short term, but will maintain high growth in the medium to long term, with annual sales expected to reach 10.77 million units by 2030 and a penetration rate of about 39%.

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