TY - JOUR
T1 - Network Generation Artificial Intelligence
T2 - Multimodal Road Network Generation Based on Large Language Models
AU - Chen, Jiajing
AU - Xu, Weihang
AU - Cao, Haiming
AU - Xu, Zihuan
AU - Zhang, Yu
AU - Zhang, Siyao
AU - Zhang, Zhao
AU - Yu, Bin
N1 - Publisher Copyright:
© The Author(s) 2025
PY - 2026/1
Y1 - 2026/1
N2 - Traffic simulation is essential for traffic-related research, but its use demands significant time and cognitive effort for road network generation. The burgeoning popularity of large language models (LLMs), which highlight powerful communication and logical reasoning capabilities, provides a promising avenue for the intelligentization of road network generation. Despite this, LLMs need help with domain-specific knowledge, particularly in addressing complex issues within transportation. This paper proposes the network generation artificial intelligence (NGAI) framework that integrates the reasoning capabilities of LLMs with traditional road network generation methods, significantly enhancing the intelligent operability of transportation simulation. Based on multiple inquiry experiments, NGAI has been proven capable of selecting suitable traffic network generation models (TNGMs) and generating content based on specified parameters. In the experimental scenarios of this study, TNGMs demonstrated extremely high selection accuracy and a low probability of repeated invocations under detailed prompts. The effective use of NGAI has significantly reduced the cost of road network generation and optimized the steps for users employing simulation software, making the process of transportation simulation simpler and more intelligent.
AB - Traffic simulation is essential for traffic-related research, but its use demands significant time and cognitive effort for road network generation. The burgeoning popularity of large language models (LLMs), which highlight powerful communication and logical reasoning capabilities, provides a promising avenue for the intelligentization of road network generation. Despite this, LLMs need help with domain-specific knowledge, particularly in addressing complex issues within transportation. This paper proposes the network generation artificial intelligence (NGAI) framework that integrates the reasoning capabilities of LLMs with traditional road network generation methods, significantly enhancing the intelligent operability of transportation simulation. Based on multiple inquiry experiments, NGAI has been proven capable of selecting suitable traffic network generation models (TNGMs) and generating content based on specified parameters. In the experimental scenarios of this study, TNGMs demonstrated extremely high selection accuracy and a low probability of repeated invocations under detailed prompts. The effective use of NGAI has significantly reduced the cost of road network generation and optimized the steps for users employing simulation software, making the process of transportation simulation simpler and more intelligent.
KW - artificial intelligence and advanced computing applications
KW - data and data science
KW - machine vision
KW - planning and analysis
KW - simulation modeling
KW - transportation network modeling
UR - https://www.scopus.com/pages/publications/105018090890
U2 - 10.1177/03611981251357933
DO - 10.1177/03611981251357933
M3 - 文章
AN - SCOPUS:105018090890
SN - 0361-1981
VL - 2680
SP - 432
EP - 451
JO - Transportation Research Record
JF - Transportation Research Record
IS - 1
ER -