计算机科学
人口
基于Agent的模型
旅游行为
过程(计算)
按需
需求预测
合成数据
打开数据
旅行时间
运筹学
数据科学
运输工程
工程类
人工智能
万维网
社会学
人口学
操作系统
多媒体
作者
Sebastian Hörl,Miloš Balać
标识
DOI:10.1016/j.trc.2021.103291
摘要
Synthetic populations of travelers and their detailed mobility behavior are an important basis for agent-based transport simulations, which are increasingly used in transport planning and research today. To date, research based on such simulations is rarely replicable as it is based on proprietary data and tools. To foster the discussion and steer research towards reproducible transport simulations, this paper introduces a process for generating a synthetic travel demand with individual households, persons, and their daily activity chains for Paris and its surrounding region Île-de-France — entirely based on open data and open software and replicable by any researcher. The resulting travel demand is published for others to use as a comprehensive data basis for agent-based transport simulations and as a test bed for population and demand synthesis algorithms. Furthermore, it is discussed how implicit correlation structures impact the potential use cases of the synthetic travel demand for simulation and analysis purposes and how the common practice of using population samples for downstream simulations affects the results.
科研通智能强力驱动
Strongly Powered by AbleSci AI