This project investigates how the distribution of urban functions — such as points of interest (POIs) and workplace locations — influences human mobility within two major U.S. cities: New York and Los Angeles. By comparing these cities’ structural and transportation differences, we aim to uncover how urban form affects commute distances, accessibility, and transportation reliance.
- Compare urban spatial structures and mobility patterns in NY and LA.
- Analyze the spatial distribution of POIs and workplaces using geospatial methods.
- Understand how urban design and transit availability affect commute behavior.
- Generate insights for urban planning and transportation policy.
- Python
GeoPandas,Shapely— for geospatial analysisMatplotlib— for data visualization
- ArcGIS — for multivariate spatial clustering
- Moran’s I — index for spatial autocorrelation and clustering
- OpenStreetMap POI Data — spatial layout of urban functions
- COVID19USFlows (June 2019) — human mobility patterns
- TIGER/Line Shapefiles — geographic reference for census mapping
- LEHD Origin-Destination Employment Statistics (LODES) — home-workplace mapping
- NYC MTA Turnstile Data — subway usage (New York only)
| City | Moran’s I | P-Value |
|---|---|---|
| New York | 0.469 | 0.001 |
| Los Angeles | 0.296 | 0.001 |
- New York: Dense POI clusters near downtown — transit-oriented and economically compact
- Los Angeles: More evenly distributed POIs — car-centric development and broader spatial reach
- New York: Centralized, promoting shorter commutes (1–2 miles)
- Los Angeles: Decentralized, longer commute distances (20+ miles)
- NY: Commute peaks around 1–2 miles
- LA: Commute peaks beyond 20 miles
- New York exhibits compact urban form and transit-based mobility.
- Los Angeles shows urban sprawl with car-reliant travel.
- Both cities display a shared short-commute trend influenced by workplace proximity.
- Urban planning should focus on:
- Developing local hubs
- Enhancing public transit
- Minimizing long-distance travel needs
- Incorporate network-based analysis of transportation infrastructure.
- Integrate machine learning models for predictive urban flow analysis.
- Expand to include more cities and longitudinal data to track changes over time.