Mapping the Urban Mobility Intelligence Frontier: A Scientometric Analysis of Data-Driven Pedestrian Trajectory Prediction and Simulation
- URL: http://arxiv.org/abs/2510.10327v1
- Date: Sat, 11 Oct 2025 19:58:40 GMT
- Title: Mapping the Urban Mobility Intelligence Frontier: A Scientometric Analysis of Data-Driven Pedestrian Trajectory Prediction and Simulation
- Authors: Junhao Xu, Hui Zeng,
- Abstract summary: This study conducts a comprehensive scientometric analysis of research on data-driven pedestrian trajectory prediction and crowd simulation.<n>Results reveal a strong convergence between artificial intelligence, urban informatics, and crowd behavior modeling.
- Score: 9.952614688579738
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Understanding and predicting pedestrian dynamics has become essential for shaping safer, more responsive, and human-centered urban environments. This study conducts a comprehensive scientometric analysis of research on data-driven pedestrian trajectory prediction and crowd simulation, mapping its intellectual evolution and interdisciplinary structure. Using bibliometric data from the Web of Science Core Collection, we employ SciExplorer and Bibliometrix to identify major trends, influential contributors, and emerging frontiers. Results reveal a strong convergence between artificial intelligence, urban informatics, and crowd behavior modeling--driven by graph neural networks, transformers, and generative models. Beyond technical advances, the field increasingly informs urban mobility design, public safety planning, and digital twin development for smart cities. However, challenges remain in ensuring interpretability, inclusivity, and cross-domain transferability. By connecting methodological trajectories with urban applications, this work highlights how data-driven approaches can enrich urban governance and pave the way for adaptive, socially responsible mobility intelligence in future cities.
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