Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

This paper addresses the critical issue of monitoring high-density crowds in public spaces like transportation hubs to prevent accidents from overcrowding. It highlights the limitations of prevailing simulation tools in dealing with real-world challenges such as diverse pedestrian destinations, multi-directional flows, and the medley space designs in communal areas. The paper aims to introduce a data-driven, multi-agent framework that assesses crowd dynamics and early warning conditions in different spatial layouts. The model utilizes real-time visual information and reinforcement learning for decision-making, employing a self-iterative algorithm for trajectory planning that aligns with real-world movement characteristics. It enhances model compatibility across various scenarios without the need for parameter fine-tuning. The analysis shows the model's ability to accurately reproduce pedestrian flow motion in diverse scenarios and indicates a discontinuous state transition in pedestrian flow as density increases. A method for detecting building traffic capacity is proposed, which can identify the threshold of stable pedestrian flow that various spatial arrangements can accommodate, thereby allowing for the advance setting of crowding warning levels. The study suggests that rational spatial layout and information guidance can significantly improve spatial mobility and reduce the risk of crowd stampedes, without expanding the area of architectural spaces.

Download full-text PDF

Source
http://dx.doi.org/10.1016/j.aap.2025.108207DOI Listing

Publication Analysis

Top Keywords

pedestrian flow
16
data-driven multi-agent
8
pedestrian
5
novel data-driven
4
multi-agent pedestrian
4
flow
4
flow risk
4
risk assessment
4
assessment framework
4
framework avoiding
4

Similar Publications

This paper addresses the critical issue of monitoring high-density crowds in public spaces like transportation hubs to prevent accidents from overcrowding. It highlights the limitations of prevailing simulation tools in dealing with real-world challenges such as diverse pedestrian destinations, multi-directional flows, and the medley space designs in communal areas. The paper aims to introduce a data-driven, multi-agent framework that assesses crowd dynamics and early warning conditions in different spatial layouts.

View Article and Find Full Text PDF

This paper presents a series of controlled experiments involving a heterogeneous disabled group composed of individuals with various types of disabilities and normal pedestrians passing through a bottleneck. A hybrid qualitative-quantitative analysis was applied to examine the movement characteristics. The disabilities include physical impairment, lower limb impairment, visual impairment, hearing impairment, mental impairment and intellectual impairments.

View Article and Find Full Text PDF

Frequent escalator-related incidents in subway stations have prompted the authorities to promote the use of public stairs. In daily life, however, pedestrians instinctively prefer to take escalators rather than use stairs. How to better induce pedestrians to choose stairs? It is necessary to reveal the internal mechanism of pedestrian choice.

View Article and Find Full Text PDF

This study proposes a novel framework integrating Building Information Modeling (BIM) and Geographic Information Systems (GIS) with real-time crowd analytics from Closed-Circuit Television (CCTV) for quantitative walkability assessment. The framework extends open data standards (IFC and CityGML) to model infrastructural and pedestrian flow attributes comprehensively. A walkability scoring mechanism quantifies route quality based on accessibility, efficiency, and physical comfort, differentiating among pedestrian groups, such as individuals sensitive to weather conditions or carrying belongings.

View Article and Find Full Text PDF

With the increasing integration of Connected and Automated Vehicles (CAVs) and Human-Driven Vehicles (HDVs) in urban traffic systems, along with highly variable pedestrian crossing demands, traffic management faces unprecedented challenges. This study introduces an improved adaptive signal control approach using an enhanced dual-layer deep Q-network (EXP-DDQN), specifically tailored for intelligent connected environments. The proposed model incorporates a comprehensive state representation that integrates CAV-HDV car-following dynamics and pedestrian flow variability.

View Article and Find Full Text PDF