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Autori principali: Feng, Zixin, Zhao, Qunshan, Heppenstall, Alison
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2507.21341
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author Feng, Zixin
Zhao, Qunshan
Heppenstall, Alison
author_facet Feng, Zixin
Zhao, Qunshan
Heppenstall, Alison
contents Despite the rapid expansion of electric vehicle (EV) charging networks, questions remain about their efficiency in meeting the growing needs of EV drivers. Previous simulation-based approaches, which rely on static behavioural rules, have struggled to capture the adaptive behaviours of human drivers. Although reinforcement learning has been introduced in EV simulation studies, its application has primarily focused on optimising fleet operations rather than modelling private drivers who make independent charging decisions. To address the gap, we propose a multi-stage reinforcement learning framework that simulates charging demand of private EV drivers across a national-scale road network. We validate the model against real-world data and identify the training stage that most closely reflects actual driver behaviour, which captures both the adaptive behaviours and bounded rationality of private drivers. Based on the simulation results, we also identify critical 'charging deserts' where EV drivers consistently have low state of charge. Our findings also highlight recent policy shifts toward expanding rapid charging hubs along motorway corridors and city boundaries to meet the demand from long-distance trips.
format Preprint
id arxiv_https___arxiv_org_abs_2507_21341
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Replicating the behaviour of electric vehicle drivers using an agent-based reinforcement learning model
Feng, Zixin
Zhao, Qunshan
Heppenstall, Alison
Multiagent Systems
Despite the rapid expansion of electric vehicle (EV) charging networks, questions remain about their efficiency in meeting the growing needs of EV drivers. Previous simulation-based approaches, which rely on static behavioural rules, have struggled to capture the adaptive behaviours of human drivers. Although reinforcement learning has been introduced in EV simulation studies, its application has primarily focused on optimising fleet operations rather than modelling private drivers who make independent charging decisions. To address the gap, we propose a multi-stage reinforcement learning framework that simulates charging demand of private EV drivers across a national-scale road network. We validate the model against real-world data and identify the training stage that most closely reflects actual driver behaviour, which captures both the adaptive behaviours and bounded rationality of private drivers. Based on the simulation results, we also identify critical 'charging deserts' where EV drivers consistently have low state of charge. Our findings also highlight recent policy shifts toward expanding rapid charging hubs along motorway corridors and city boundaries to meet the demand from long-distance trips.
title Replicating the behaviour of electric vehicle drivers using an agent-based reinforcement learning model
topic Multiagent Systems
url https://arxiv.org/abs/2507.21341