基于数据质量棱镜的OpenStreetMap自行车网络演化分析

Raphaël Bres, Verónika Peralta, Arnaud Le-Guilcher, T. Devogele, Ana-Maria Olteanu Raimond, Cyril de Runz
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引用次数: 0

摘要

摘要几年来,骑自行车的做法不断增加,而新冠肺炎危机只是加速了这一进程。的确,越来越多的城市开发了新的自行车道,以方便骑车。考虑到人们对骑自行车的兴趣日益浓厚,研究这种最近的演变是如何反映在地理数据库中自行车网络的基本表示中是有意义的。分析道路网络演变的主要研究集中在世界主要城市的机动车网络上。这些研究似乎并不适用于自行车网络,特别是在一些人口密度低的地区甚至是较小的城市。本文从数据新鲜度的角度,利用OSM数据分析了循环网络的变化。这些更改可以是来自真实网络更改的更新,也可以是对网络的升级。为此,我们提出了一种使用蒙特卡罗模拟(MCS)的方法来分析几个不同人口密度地区的自行车路线变化频率,这些地区都在法国卢瓦尔河谷地区。我们还定义了循环网络,这是一个非常复杂的概念,我们解释了它是如何在OSM数据中表示的,以及受到不同数据质量问题的影响。结果表明:在人口密度相近的地区,随时间变化的数量相似,而在人口密度较低的地区,变化较少;这些现象在自行车网络中比在其他网络中更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of cycling network evolution in OpenStreetMap through a data quality prism
Abstract. Cycling practice has been constantly increasing for several years and the COVID crisis has just accelerated the process. Indeed, more and more municipalities have developed new cycle paths to facilitate cycling. Considering this increasing interest for cycling, it makes sense to study how this recent evolution is reflected in the underlying representation of the cycling network in the geographic databases. Main studies analysing the evolution of the road network focus on the motor vehicle network in the major cities of the world. These studies do not seem applicable to cycling network specially to some low population density areas or even to smaller cities. This paper analyses the changes in the cycling network through OSM data from a data freshness perspective. These changes can be either updates from changes in the real-world network or upgrades to the network. To these end, we propose a method using a Monte Carlo simulation (MCS) to analyse the frequency of changes in cycling routes in several areas with different population density, all in the Loire Valley region in France. We also define the cycling network, which is a very complex concept and we explain how it is represented in OSM data and suffers from different data quality issues. Results show that the number of changes across time are similar in areas having a similar population density, while being lower in low population density areas. These phenomena is higher in the cycling network compared to other networks.
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