Abstract
When designing bicycle count programs, it can be difficult to know where to locate counters to generate a representative sample of bicycling ridership. Crowdsourced data on ridership has been shown to represent patterns of temporal ridership in dense urban areas. Here we use crowdsourced data and machine learning to categorize street segments into classes of temporal patterns of ridership. We used continuous signal processing to group 3,880 street segments in Ottawa, Ontario into six classes of temporal ridership that varied based on overall volume and daily patterns (commute vs non-commute). Transportation practitioners can use this data to strategically place counters across these strata to efficiently capture bicycling ridership counts that better represent the entire city.
Original language | English |
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Number of pages | 8 |
Journal | Transport Findings |
Volume | 2019 |
DOIs | |
Publication status | Published - 26 Nov 2019 |
Keywords
- Machine learning
- Smart cities
- Urban planning
- Transportation
- Mobility
- Strava
- Bicycling