Modeling and reproducing human daily travel behavior from GPS data: A Markov Decision Process approach

Y. Pang, K. Tsubouchi, T. Yabe, Y. Sekimoto
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引用次数: 1

Abstract

Understanding the daily movement of humans in space and time on different granularity levels is of critical value for urban planning, transport management, health care and commercial services. However, population's daily travel behavior data was collected by travel surveys that are infrequent, expensive, and disable to reflect changes in transportation. The demand for capturing, modeling and reproducing human travel behavior in different scenarios pose a challenge on the significant delays. In this study, we propose an inverse reinforcement learning based formulation for training an agent model that enables modeling complex decision-making with consideration of a dynamic environment on the urban granularity level. The modeling framework is based on the Markov decision process to represent an individual's decision making. To obtain the travel behavior characteristics of real humans, we apply the proposed approach to a real-time GPS dataset collected via a smart phone application with more than 2 million daily users to model the people travel behavior for different daily scenarios (i.e., weekdays, weekends, and national holidays) in the Tokyo metropolitan area. It is found that the developed model can generate individual's daily travel plan. In addition, by aggregating the agent travel behavior on the city-wide scale, the urban daily travel demand can be obtained and used for estimate the hourly population distribution. The result of this work can also be regarded as a synthetic mobility dataset, avoiding many of the privacy concerns surrounding real GPS data.
基于GPS数据的人类日常出行行为建模与再现:一种马尔可夫决策过程方法
在不同粒度级别上了解人类在空间和时间上的日常运动对城市规划、交通管理、医疗保健和商业服务具有关键价值。然而,人口的日常旅行行为数据是通过旅行调查收集的,这些调查不频繁,昂贵,并且无法反映交通的变化。捕获、建模和再现不同场景下人类出行行为的需求对显著延迟提出了挑战。在这项研究中,我们提出了一种基于逆强化学习的方法来训练智能体模型,该模型能够在考虑城市粒度级别的动态环境的情况下对复杂决策建模。建模框架基于马尔可夫决策过程来表示个体的决策。为了获得真实人类的出行行为特征,我们将所提出的方法应用于通过每日用户超过200万的智能手机应用程序收集的实时GPS数据集,对东京大都市地区不同日常场景(即工作日、周末和国家法定假日)的人们出行行为进行建模。结果表明,所建立的模型能够生成个人的日常出行计划。此外,通过对代理人在城市尺度上的出行行为进行汇总,可以得到城市日出行需求,并用于估计小时人口分布。这项工作的结果也可以被视为一个合成的移动数据集,避免了围绕真实GPS数据的许多隐私问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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