How are we moving around our cities while facing a global pandemic? How have lockdowns affected movement? How do we accommodate urban travel that requires social distancing? Using sensors from open data sources, we visualize movement of people. Visualization reveals the role of weather, day of week, leisure, exercise and utility travel needs and compliance in lockdown measures. It helps to anticipate transport planning needs for a safe, sustainable urban travel future.
- Bicycle traffic in New York City
- Public bicycle hire use across London
- Pedestrian traffic in city centres across Germany (and in English)
- Pedestrian and bicycle travel in Zurich (and in English)
- Pedestrian and bicycle travel in Basel
The visualizations encompass dynamic heatmaps displaying traffic counts for an individual day. The heatmap is linked to a geographic map displaying the counter locations as well as to a line graph showing anomalies (the so-called Chi values) in traffic volume over time. We wouldn't have been able to implement our visualisations without the Open Data. Many thanks to administrative bodies for providing data and documentation and to OpenStreetMap contributors for mapping data.
This repository contains:
- data specifications
- data analysis code
- data as well as
- visualization and front-end code ... necessary for you to build your own Urban Mobility Viewer. All code is open under the GNU General Public License v3.0. Data sources are listed in each directory. Zurich, Basel, New York and London data are all available as Open Data. German data are available from hyStreet using their API.
Conceived and implemented by