Digital Geography Lab, Department of Geosciences and Geography, University of Helsinki, Helsinki, Finland.
Helsinki Institute of Sustainability Science, Institute of Urban and Regional Studies, University of Helsinki, Helsinki, Finland.
Sci Data. 2024 Aug 9;11(1):858. doi: 10.1038/s41597-024-03689-z.
Travel times between different locations form the basis for most contemporary measures of spatial accessibility. Travel times allow to estimate the potential for interaction between people and places, and is therefore a vital measure for understanding the functioning, sustainability, and equity of cities. Here, we provide an open travel time matrix dataset that describes travel times between the centroids of all cells in a grid (N = 13,132) covering the metropolitan area of Helsinki, Finland. The travel times recorded in the dataset follow a door-to-door approach that provides comparable travel times for walking, cycling, public transport and car journeys, including all legs of each trip by each mode, such as the walk to a bus stop, or the search for a parking spot. We used the r5py Python package, that we developed specifically for this computation. The data are sensitive to diurnal variations and to variations between people (e.g. slow and fast walking speed). We validated the data against the Google Directions API and present use cases from a planning practice. The five key principles that guided the data set design and production - comparability, simplicity, reproducibility, transferability, and sensitivity to temporal and interpersonal variations - ensure that urban and transport planners, business and researchers alike can use the data in a wide range of applications.
不同地点之间的出行时间是大多数现代空间可达性衡量指标的基础。出行时间可以用来估计人与人之间以及人与地点之间互动的潜力,因此是理解城市功能、可持续性和公平性的重要衡量指标。在这里,我们提供了一个开放的出行时间矩阵数据集,描述了芬兰赫尔辛基大都市区网格中所有单元格质心之间的出行时间(N=13132)。该数据集中记录的出行时间采用门到门的方法,为步行、骑自行车、公共交通和汽车出行提供可比的出行时间,包括每种出行方式的所有行程段,例如步行到公共汽车站或寻找停车位。我们使用了专门为此计算开发的 r5py Python 包。数据对昼夜变化和人与人之间的变化(例如步行速度慢和快)很敏感。我们使用谷歌方向 API 对数据进行了验证,并展示了来自规划实践的用例。数据集设计和制作的五个关键原则——可比性、简单性、可重复性、可转移性以及对时间和人际变化的敏感性——确保城市和交通规划者、企业和研究人员都可以在广泛的应用中使用这些数据。