Predicting determinants of consumers' purchase motivation for electric vehicles: An application of Maslow's hierarchy of needs model

Lixin Cui, Yonggui Wang, Weiming Chen, Wen Wen, Myat Su Han*

*Corresponding author for this work

    Research output: Contribution to journalArticlepeer-review

    78 Citations (Scopus)

    Abstract

    Adopting electric vehicles (EVs) is regarded as one of the leading solutions to environmental issues. However, recent research on the promotion of EVs adoption focuses on perceptions and attitudes towards EVs and neglects the importance of different human needs in consumers' purchase decision-making processes. Maslow's Hierarchy of Needs model provides a basic concept stating different human needs which play essential roles in shaping consumers purchase behaviors towards a particular product or service. Based on Maslow's Hierarchy of Needs model, this study predicts the determinants of consumers' purchase motivation for EVs. Data were collected from 550 Chinese residents and analyzed using multiple regression analysis. Result shows that environmental concern is the most significant predictor of EVs purchase motivation, followed by price consciousness, openness to experience, social influence, and self-esteem. From a practical point of view, we make useful recommendations for local policymakers to formulate and implement policies regarding promoting EVs adoption among society. We also provide global EVs marketers and manufacturers with a deeper understanding of Chinese consumers' motivation to purchase EVs.

    Original languageEnglish
    Article number112167
    JournalEnergy Policy
    Volume151
    DOIs
    Publication statusPublished - Apr 2021

    Keywords

    • China
    • Electric vehicles
    • Maslow's hierarchy of needs model
    • Multiple regression analysis
    • Purchase motivation

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