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Auteurs principaux: Zhang, Chuanlin, Feng, Junkang, Cui, Chenggang, Lin, Pengfeng, Chen, Hui, Xu, Yan, Ghias, A. M. Y. M., Ma, Qianguang, Zhang, Pei
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2408.05233
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author Zhang, Chuanlin
Feng, Junkang
Cui, Chenggang
Lin, Pengfeng
Chen, Hui
Xu, Yan
Ghias, A. M. Y. M.
Ma, Qianguang
Zhang, Pei
author_facet Zhang, Chuanlin
Feng, Junkang
Cui, Chenggang
Lin, Pengfeng
Chen, Hui
Xu, Yan
Ghias, A. M. Y. M.
Ma, Qianguang
Zhang, Pei
contents With the growing adoption of electric vehicles (EVs), understanding user charging behavior has become critical for grid stability and transportation planning. This study investigates the behavioral heterogeneity of EV taxi drivers by analyzing the interaction between psychological traits and situational triggers within dynamic travel contexts. Leveraging large language models (LLMs) as a core simulation tool, a novel framework with statistical enhancement is developed to replicate and analyze the charging behaviors of taxi drivers. LLMs simulate personalized decision-making processes by leveraging natural language reasoning and role-playing capabilities, accounting for factors such as time sensitivity, price awareness, and range anxiety. Simulation results indicate that the framework reliably reproduces real-world charging behaviors across multiple urban environments. his fidelity arises from integrating statistical priors into the reasoning process, allowing the model to anchor its decisions in empirical behavioral patterns. Further analysis highlights the joint influence of environmental and psychological variables on charging decisions and reveals the heterogeneity of different user groups. The findings provide new insights into EV user behavior, offering a foundation for optimizing charging infrastructure, informing energy policy, and advancing the integration of EV behavioral models into smart transportation and energy management systems.
format Preprint
id arxiv_https___arxiv_org_abs_2408_05233
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Electric Vehicle User Charging Behavior Analysis Integrating Psychological and Environmental Factors: A Statistical-Driven LLM based Agent Approach
Zhang, Chuanlin
Feng, Junkang
Cui, Chenggang
Lin, Pengfeng
Chen, Hui
Xu, Yan
Ghias, A. M. Y. M.
Ma, Qianguang
Zhang, Pei
Artificial Intelligence
With the growing adoption of electric vehicles (EVs), understanding user charging behavior has become critical for grid stability and transportation planning. This study investigates the behavioral heterogeneity of EV taxi drivers by analyzing the interaction between psychological traits and situational triggers within dynamic travel contexts. Leveraging large language models (LLMs) as a core simulation tool, a novel framework with statistical enhancement is developed to replicate and analyze the charging behaviors of taxi drivers. LLMs simulate personalized decision-making processes by leveraging natural language reasoning and role-playing capabilities, accounting for factors such as time sensitivity, price awareness, and range anxiety. Simulation results indicate that the framework reliably reproduces real-world charging behaviors across multiple urban environments. his fidelity arises from integrating statistical priors into the reasoning process, allowing the model to anchor its decisions in empirical behavioral patterns. Further analysis highlights the joint influence of environmental and psychological variables on charging decisions and reveals the heterogeneity of different user groups. The findings provide new insights into EV user behavior, offering a foundation for optimizing charging infrastructure, informing energy policy, and advancing the integration of EV behavioral models into smart transportation and energy management systems.
title Electric Vehicle User Charging Behavior Analysis Integrating Psychological and Environmental Factors: A Statistical-Driven LLM based Agent Approach
topic Artificial Intelligence
url https://arxiv.org/abs/2408.05233