Cyclists as Intelligent Carriers of Space-Time Environmental Information: Crowd-Sourced Sensor Data for Local Air Quality Measurement and Mobility Analysis in the Netherlands
Özet
In recent years, slow travel modes (walking, cycling) have gained
much interest in the context of urban air quality management.
This article presents the findings from a novel air quality
measurement experiment in the Netherlands, by regarding
cyclists as carriers and transmitters of real-world information on
fine-grained air quality conditions. Using individual sensors on
bicycles—connected to a GPS positioning system—online local
pollution information originating from cyclists’ detailed spatial
mobility patterns is obtained. Such air quality surface maps and
cyclists’ mobility maps are then used to identify whether there
are significant differences between the actual route choice and
the cyclists’ shortest route choice, so as to identify the
implications of poor air quality conditions for their mobility
choices. Thus, the article seeks to present both a detailed
pollution surface map and the complex space-time mobility
patterns of cyclists in a region, on the basis of online quantitative
data—at any point in time and space—from bicycle users in a
given locality. In addition, the article estimates their response—in
terms of route choice—to detailed air-quality information
through the use of a novel geoscience-inspired analysis of spacetime “big data.” The empirical test of our quantitative modeling
approach was carried out for the Greater Utrecht area in the
Netherlands. Our findings confirm that spatial concentration of air
pollutants have great consequences for bike users’ route choice
patterns, especially in the case of non-commuting trips. We also
find that cyclists make longer trips on weekends and in the
evenings, especially towards parks and natural amenities.