从黎明到黄昏:市中心行人流量的日常波动

Marcin Wozniak
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摘要

由于各种因素,城市的行人交通全天都会波动。对这些变化的理解可以使用适当校准的基于agent的仿真模型来实现,该模型可以捕获行人运动的动态。然而,尽管这些模型意义重大,但目前在科学讨论中代表性不足。此外,获取真实世界的行人定位数据用于模型校准也带来了挑战。为了解决这些问题,本文提出了一个基于智能体的模型,专门用于在中尺度水平上检查行人交通波动。该模型使用来自Google Places服务的流行时间数据和地理信息系统(GIS)的人口数据进行精确校准。因此,它有效地捕捉了城市中心行人运动的真实动态。通过利用基于智能体的建模(ABM)的优势,该模型产生了对日常行人交通的一些有价值的见解。它估计行人流量的容量和速度,并确定模拟区域内的日负荷。此外,它还可以识别行人密度不同的瓶颈和区域。该模型的验证过程包括将其输出与经验研究和选定兴趣点(POIs)的行人交通数据进行比较。该模型成功地捕获了与行人流基本图相关的关键方面。此外,行人的动态与选定poi的Google Places流行时间数据密切相关。总体而言,本研究通过实证校准的基于agent的仿真模型,有助于推进行人交通管理和优化公共交通组织。
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From dawn to dusk: daily fluctuations in pedestrian traffic in the city center
Pedestrian traffic in a city is subject to fluctuations throughout the day due to a variety of factors. The understanding of these variations can be achieved using properly calibrated agent-based simulation models that capture the dynamics of pedestrian movement. However, despite their significance, such models are currently underrepresented in scientific discussions. In addition, acquiring real-world pedestrian localization data for model calibration poses challenges. To address these issues, this paper presents an agent-based model specifically designed to examine pedestrian traffic fluctuations at a mesoscale level. The model uses popular times data from the Google Places service and population data from the Geographic Information System (GIS) for accurate calibration. As a result, it effectively captures the real-world dynamics of pedestrian movement in the city center. By harnessing the advantages of agent-based modeling (ABM), the model generates several valuable insights into daily pedestrian traffic. It estimates the capacity and speed of pedestrian flows and determines the daily load within the simulated area. Moreover, it enables the identification of bottlenecks and areas characterized by varying levels of pedestrian density. The model’s validation process involves comparing its output with empirical studies and pedestrian traffic data from selected points of interest (POIs). The model successfully captures key aspects associated with fundamental diagrams of pedestrian flow. Furthermore, the dynamics of pedestrians closely align with Google Places popular times data for the chosen POIs. Overall, this research contributes to advancing pedestrian traffic management and optimizing public transport organization by employing empirically calibrated agent-based simulation models.
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