@revista_internacional{854, keywords = {New energy vehicle, Large-scale group decision-making, Hesitant fuzzy linguistic term set, Three-way decision, Consensus reaching process, ELICIT information}, author = {Ying-Ming Wang and Shi-Fan He and Diego García-Zamora and Xiao-Hong Pan and Luis Martínez}, title = {A Large Scale Group Three-Way Decision-based consensus model for site selection of New Energy Vehicle charging stations}, abstract = {The development of New Energy Vehicles (NEVs) has contributed to the alleviation of environmental pollution in the transportation sector. Although NEVs have some advantages, such as energy saving, being environmentally friendly, and low noise, they are restricted by their cruising range or recharging-related problems. To minimize such disadvantages, an optimal plan for the charging station site is necessary. This paper proposes a Large-Scale Group Decision-Making (LSGDM) method to select the best location for such charging stations. This method involves a large group of experts providing their preferences according to their knowledge and background. To facilitate the elicitation, our method uses Hesitant Fuzzy Linguistic Term Sets (HFLTS) and Extended Comparative Linguistic Expressions with Symbolic Translation (ELICIT) model to improve the elicitation process, guarantee precise computing processes and obtain interpretable results. A social network is then constructed based on experts’ preference similarity and trust relationships, which reflects both their relationship and its strength simultaneously. Afterwards, a social analysis-based clustering process groups the experts, and a Three-Way Decision (TWD)-based Consensus Reaching Process (CRP) is introduced to improve the group’s agreement. Finally, a selection of charging station site case studies is conducted, and a comparative analysis is carried out to illustrate the quality of the proposal.}, year = {2023}, journal = {Expert Systems with Applications}, volume = {214}, pages = {119107}, issn = {0957-4174}, url = {https://www.sciencedirect.com/science/article/pii/S095741742202125X}, doi = {https://doi.org/10.1016/j.eswa.2022.119107}, }