论文标题

危机期间城市流动性模拟的自适应加强学习模型

Adaptive Reinforcement Learning Model for Simulation of Urban Mobility during Crises

论文作者

Fan, Chao, Jiang, Xiangqi, Mostafavi, Ali

论文摘要

这项研究的目的是提出和测试一种自适应加强学习模型,该模型可以在正常情况下学习人类流动性的模式,并在危机引起的扰动中模拟移动性,例如洪水,野火和飓风。理解和预测人类流动性模式,例如目的地和轨迹选择,可以告知新兴的拥塞和紧急情况中断所造成的封闭道路。与人类运动轨迹相关的数据很少,尤其是在紧急情况下,这对从经验数据中学到的现有城市流动性模型的应用限制。具有从正常情况下产生的数据学习的能力的模型,并且需要适应紧急情况,以告知紧急响应和城市弹性评估。为了解决这一差距,这项研究创建并测试了一种适应性增强学习模型,该模型可以预测运动的目的地,估算每个起源和目的地对的轨迹,并检查扰动对人类与目的地和运动轨迹相关的决策的影响。提议的模型的应用显示在休斯顿的背景下以及2017年8月飓风哈维引起的洪水场景。结果表明,该模型可以达到76 \%的精度和召回率。结果还表明,该模型可以预测因城市洪水而导致的交通模式和拥堵。分析的结果证明了该模型在危机期间分析城市流动性的能力,这可以为公众和决策者提供有关响应策略和弹性计划,以减少危机对城市流动性的影响。

The objective of this study is to propose and test an adaptive reinforcement learning model that can learn the patterns of human mobility in a normal context and simulate the mobility during perturbations caused by crises, such as flooding, wildfire, and hurricanes. Understanding and predicting human mobility patterns, such as destination and trajectory selection, can inform emerging congestion and road closures raised by disruptions in emergencies. Data related to human movement trajectories are scarce, especially in the context of emergencies, which places a limitation on applications of existing urban mobility models learned from empirical data. Models with the capability of learning the mobility patterns from data generated in normal situations and which can adapt to emergency situations are needed to inform emergency response and urban resilience assessments. To address this gap, this study creates and tests an adaptive reinforcement learning model that can predict the destinations of movements, estimate the trajectory for each origin and destination pair, and examine the impact of perturbations on humans' decisions related to destinations and movement trajectories. The application of the proposed model is shown in the context of Houston and the flooding scenario caused by Hurricane Harvey in August 2017. The results show that the model can achieve more than 76\% precision and recall. The results also show that the model could predict traffic patterns and congestion resulting from to urban flooding. The outcomes of the analysis demonstrate the capabilities of the model for analyzing urban mobility during crises, which can inform the public and decision-makers about the response strategies and resilience planning to reduce the impacts of crises on urban mobility.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源