一种基于学习的具有扩散行为的人流量预测方法

IF 7.6 1区 工程技术 Q1 TRANSPORTATION SCIENCE & TECHNOLOGY
Weiming Mai, Dorine Duives, Serge Hoogendoorn
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引用次数: 0

摘要

在城市中心、火车站、机场、购物中心和多式联运枢纽等公共场所,准确预测行人流量对于有效的人群管理至关重要,例如预防拥堵和疏散规划。传统的微观模拟模型通过单独模拟每个行人来提供细粒度的见解,但它们的计算量很大,通常用于规划和设计阶段,因此不适合在高需求场景中进行实时干预。另一方面,宏观模型通过汇总行人行为和求解偏微分方程来减少计算成本,但它们通常需要估计交通状态,如密度和速度,这些在实践中难以精确测量的量。此外,随着这些基于物理的模型的复杂性的增加,它们实时使用的计算可行性变得更加有限。数据驱动(机器学习)模型提供了一种计算效率高的替代方案,增强了实时预测能力。然而,它们通常需要大量的历史数据集才能很好地泛化,并且在非分布(OOD)条件下,它们的性能可能会下降。此外,大多数黑盒学习模型缺乏可解释性和特定领域的洞察力,限制了它们的实际采用。本文提出了一种基于人群扩散理论的行人流量预测模型。我们的方法直接从传感器观察到的数据中估计流量,并推断出出发地(OD)需求和路线选择概率,以支持实时操作。为了应对OOD挑战,我们采用了一种在线学习机制,该机制可以根据传入的观测值不断校准模型参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A learning based pedestrian flow prediction approach with diffusion behavior
In public spaces such as city centers, train stations, airports, shopping malls, and multi-modal hubs, accurately predicting pedestrian flow is crucial for effective crowd management e.g. congestion prevention and evacuation planning. Traditional microscopic simulation models offer fine-grained insights by simulating each pedestrian individually, but they are computationally intensive and typically used at the planning and design stage, making them unsuitable for real-time interventions in high-demand scenarios. Macroscopic models, on the other hand, reduce computational cost by aggregating pedestrian behavior and solving partial differential equations, but they typically require estimates of traffic states such as density and speed — quantities that are difficult to measure accurately in practice. Additionally, as the complexity of these physics-based models increases, their computational feasibility for real-time use becomes even more limited. Data-driven (machine learning) models provide a computationally efficient alternative, enhancing real-time prediction capabilities. However, they often require large historical datasets to generalize well, and their performance can degrade under out-of-distribution (OOD) conditions. Moreover, most black-box learning models lack interpretability and domain-specific insights, limiting their practical adoption. In this paper, we propose a novel pedestrian flow prediction model based on the theory of crowd diffusion. Our method estimates flow rates directly from sensor-observed data and infers both Origin–Destination (OD) demand and route choice probabilities to support real-time operations. To address the OOD challenge, we incorporate an online learning mechanism that continuously calibrates model parameters based on incoming observations.
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来源期刊
CiteScore
15.80
自引率
12.00%
发文量
332
审稿时长
64 days
期刊介绍: Transportation Research: Part C (TR_C) is dedicated to showcasing high-quality, scholarly research that delves into the development, applications, and implications of transportation systems and emerging technologies. Our focus lies not solely on individual technologies, but rather on their broader implications for the planning, design, operation, control, maintenance, and rehabilitation of transportation systems, services, and components. In essence, the intellectual core of the journal revolves around the transportation aspect rather than the technology itself. We actively encourage the integration of quantitative methods from diverse fields such as operations research, control systems, complex networks, computer science, and artificial intelligence. Join us in exploring the intersection of transportation systems and emerging technologies to drive innovation and progress in the field.
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