ScooterLab - Griffin.pptx

ScooterLab: Let’s think about our future
Dr. Greg Griffin, AICP
https://scooterlab.utsa.edu/
Think Science, 12Sept2023
Murtuza Jadliwala
(overall lead)
Sushil Prasad
Raveen Wijewickrama
Buddhi Ashan Mallika
Kankanamalage
Greg Griffin
Nico Molina
Anindya Maiti
Khoi Trinh
Acknowledgements
Investigators & Students
Research Collaborators
Origin—Street Noise & Bicycling Safety Correlated in
Washington, D.C., but not in Austin
Griffin, G. P., Hankey, S., Buehler, R., Dai, B., Le, H. T., & Simek, C.
(2019). Exploring Street Noise and Bicycle Safety: Initial Evidence from
Austin, TX and the Washington, DC Capital Area (No. 19-03944).
Origin—Crowdsensing Pedestrian Safety and E-scooters
Maiti, A., Vinayaga-Sureshkanth, N., Jadliwala, M.,
Wijewickrama, R., & Griffin, G. (2022, March). Impact of
e-scooters on pedestrian safety: A field study using
pedestrian crowd-sensing. In PerCom Workshops (pp.
799-805). IEEE.
Origin—Shared Micromobility Can Reduce Vehicle Traffic,
but not only e-scooters
Choi, K., Park, H. J., & Griffin, G. P. (2023).
Can shared micromobility replace auto travel?
Evidence from the US urbanized areas
between 2012 and 2019. International Journal
of Sustainable Transportation, 1-9.
What Now?
Do e-scooter rental term
lengths change travel
patterns?
Can machine
learning support
urban policy making?
What type of street-level features
may increase e-scooter crash risks?
How is ScooterLab different?
The ScooterLab testbed is envisioned as an instrument for the entire research
community—not just local teams.
Downtown + suburban contexts
No private company data agreements
Community data privacy and sharing platform
ScooterLab Operation
8
The ScooterLab Architecture
The ScooterLab testbed will
comprise of:
• Vehicles
• Fleet Controller
• Research Activities Management
Portal (RAMP)
Demo
10
Raw Data
• Accelerometer
11
Raw Data
• Gyroscope
12
Raw Data
• Orientation (via Accelerometer)
13
*No scooters or riders wereharmed in obtaining this data.
Raw Data
• Temperature
14
Raw Data
• GPS – Speed
15
Raw Data
• GPS – Route
16
Raw Data
• Camera
17
ScooterLab - Griffin.pptx
ScooterLab - Griffin.pptx
ScooterLab is building a new urban sensing
platform for improving cities.
Multi-disciplinary challenges require collaboration and sharing.
C O N T R I B U T I O N
Data science cannot solve all urban challenges
Urban planning addresses wicked problems with inclusiveness,
policy, design, and financing.
H O W E V E R
ScooterLab: Let’s think about our future
Dr. Greg Griffin, AICP
https://scooterlab.utsa.edu/
Think Science, 12Sept2023
1 de 22

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ScooterLab - Griffin.pptx

  • 1. ScooterLab: Let’s think about our future Dr. Greg Griffin, AICP https://scooterlab.utsa.edu/ Think Science, 12Sept2023
  • 2. Murtuza Jadliwala (overall lead) Sushil Prasad Raveen Wijewickrama Buddhi Ashan Mallika Kankanamalage Greg Griffin Nico Molina Anindya Maiti Khoi Trinh Acknowledgements Investigators & Students Research Collaborators
  • 3. Origin—Street Noise & Bicycling Safety Correlated in Washington, D.C., but not in Austin Griffin, G. P., Hankey, S., Buehler, R., Dai, B., Le, H. T., & Simek, C. (2019). Exploring Street Noise and Bicycle Safety: Initial Evidence from Austin, TX and the Washington, DC Capital Area (No. 19-03944).
  • 4. Origin—Crowdsensing Pedestrian Safety and E-scooters Maiti, A., Vinayaga-Sureshkanth, N., Jadliwala, M., Wijewickrama, R., & Griffin, G. (2022, March). Impact of e-scooters on pedestrian safety: A field study using pedestrian crowd-sensing. In PerCom Workshops (pp. 799-805). IEEE.
  • 5. Origin—Shared Micromobility Can Reduce Vehicle Traffic, but not only e-scooters Choi, K., Park, H. J., & Griffin, G. P. (2023). Can shared micromobility replace auto travel? Evidence from the US urbanized areas between 2012 and 2019. International Journal of Sustainable Transportation, 1-9.
  • 6. What Now? Do e-scooter rental term lengths change travel patterns? Can machine learning support urban policy making? What type of street-level features may increase e-scooter crash risks?
  • 7. How is ScooterLab different? The ScooterLab testbed is envisioned as an instrument for the entire research community—not just local teams. Downtown + suburban contexts No private company data agreements Community data privacy and sharing platform
  • 9. The ScooterLab Architecture The ScooterLab testbed will comprise of: • Vehicles • Fleet Controller • Research Activities Management Portal (RAMP)
  • 13. Raw Data • Orientation (via Accelerometer) 13 *No scooters or riders wereharmed in obtaining this data.
  • 15. Raw Data • GPS – Speed 15
  • 16. Raw Data • GPS – Route 16
  • 20. ScooterLab is building a new urban sensing platform for improving cities. Multi-disciplinary challenges require collaboration and sharing. C O N T R I B U T I O N
  • 21. Data science cannot solve all urban challenges Urban planning addresses wicked problems with inclusiveness, policy, design, and financing. H O W E V E R
  • 22. ScooterLab: Let’s think about our future Dr. Greg Griffin, AICP https://scooterlab.utsa.edu/ Think Science, 12Sept2023

Notas do Editor

  1. What type of data e.g.: time series. Don’t go too much in to details of examples
  2. Angular Velocity