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Autori principali: Wang, Xiao, Yu, Junru, Huang, Jun, Wu, Qiong, Vacic, Ljubo, Sun, Changyin
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2506.14502
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author Wang, Xiao
Yu, Junru
Huang, Jun
Wu, Qiong
Vacic, Ljubo
Sun, Changyin
author_facet Wang, Xiao
Yu, Junru
Huang, Jun
Wu, Qiong
Vacic, Ljubo
Sun, Changyin
contents Despite the recent advancements in artificial intelligence technologies have shown great potential in improving transport efficiency and safety, autonomous vehicles(AVs) still face great challenge of driving in time-varying traffic flow, especially in dense and interactive situations. Meanwhile, human have free wills and usually do not make the same decisions even situate in the exactly same scenarios, leading to the data-driven methods suffer from poor migratability and high search cost problems, decreasing the efficiency and effectiveness of the behavior policy. In this research, we propose a safety-first human-like decision-making framework(SF-HLDM) for AVs to drive safely, comfortably, and social compatiblely in effiency. The framework integrates a hierarchical progressive framework, which combines a spatial-temporal attention (S-TA) mechanism for other road users' intention inference, a social compliance estimation module for behavior regulation, and a Deep Evolutionary Reinforcement Learning(DERL) model for expanding the search space efficiently and effectively to make avoidance of falling into the local optimal trap and reduce the risk of overfitting, thus make human-like decisions with interpretability and flexibility. The SF-HLDM framework enables autonomous driving AI agents dynamically adjusts decision parameters to maintain safety margins and adhering to contextually appropriate driving behaviors at the same time.
format Preprint
id arxiv_https___arxiv_org_abs_2506_14502
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Toward Safety-First Human-Like Decision Making for Autonomous Vehicles in Time-Varying Traffic Flow
Wang, Xiao
Yu, Junru
Huang, Jun
Wu, Qiong
Vacic, Ljubo
Sun, Changyin
Artificial Intelligence
Despite the recent advancements in artificial intelligence technologies have shown great potential in improving transport efficiency and safety, autonomous vehicles(AVs) still face great challenge of driving in time-varying traffic flow, especially in dense and interactive situations. Meanwhile, human have free wills and usually do not make the same decisions even situate in the exactly same scenarios, leading to the data-driven methods suffer from poor migratability and high search cost problems, decreasing the efficiency and effectiveness of the behavior policy. In this research, we propose a safety-first human-like decision-making framework(SF-HLDM) for AVs to drive safely, comfortably, and social compatiblely in effiency. The framework integrates a hierarchical progressive framework, which combines a spatial-temporal attention (S-TA) mechanism for other road users' intention inference, a social compliance estimation module for behavior regulation, and a Deep Evolutionary Reinforcement Learning(DERL) model for expanding the search space efficiently and effectively to make avoidance of falling into the local optimal trap and reduce the risk of overfitting, thus make human-like decisions with interpretability and flexibility. The SF-HLDM framework enables autonomous driving AI agents dynamically adjusts decision parameters to maintain safety margins and adhering to contextually appropriate driving behaviors at the same time.
title Toward Safety-First Human-Like Decision Making for Autonomous Vehicles in Time-Varying Traffic Flow
topic Artificial Intelligence
url https://arxiv.org/abs/2506.14502