1 / 24

GIS Estimation of Transit Access Parameters for Mode Choice Models

GIS Estimation of Transit Access Parameters for Mode Choice Models. Parsons Brinckerhoff Chicago, Illinois. GIS in Transit Conference October 16-17, 2013 Washington, DC . Presentation Outline. Overview of the Chicago Metropolitan Agency for Planning mode choice model

emmly
Download Presentation

GIS Estimation of Transit Access Parameters for Mode Choice Models

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. GIS Estimation of Transit Access Parameters for Mode Choice Models Parsons Brinckerhoff Chicago, Illinois GIS in Transit Conference October 16-17, 2013 Washington, DC

  2. Presentation Outline • Overview of the Chicago Metropolitan Agency for Planning mode choice model • The transit access sub-model • Access modes • Data inputs to estimate access distances • GIS estimation of input parameters in TransCAD/Maptitude • Sample plots • Extensions

  3. CMAP Trip Based Model PRE-DISTRIBUTION Travel Times and Distances by Mode TRIP DISTRIBUTION Person Trip Tables MODE CHOICE Person Trip Tables by Mode NETWORK ASSIGNMENT

  4. Mode Choice Estimation • The CMAP model is a trip based model • Home-work: transit, single occupant, ride share and carpool auto • Home-other: transit and auto • Non-home: transit and auto • Simulates individuals choice of mode per trip • Evaluate logit model for probabilities • Monte Carlo method • Pre-distribution model is the front end of the mode choice model • Simulates 100 trips between zone pairs • Estimates average travel times and distances by mode

  5. Set Program Options Model Logic Flow Zone and Transit/Hwy System Parameters Origin Zone Read Origin Files Repeat for all (Origin to All Destinations) Origin Zones 1. Person Trips 2. Highway Times/Distances 3. Line-Haul Transit Service Attributes First, Priority and Last Mode In-Vehicle and Out-of-Vehicle Time First Headway Fares Destination Zone Select Trip Repeat for all Destination Zones Simulate Transit Repeat for Simulate CBD Compute Non-CBD Access/Egress Attributes Compute Auto all O-D Trips Parking Walk Time Parking Walk Time In-Vehicle Time Access/Egress Operating Costs Out-of-Vehicle Time and Cost and Cost Sub-models Fares Simulate Choice Evaluate Logit Mode Choice Equation Add Trip to Trip Table All Trips to Destination Zone Simulated? No Yes

  6. Sub-Models • Auto operating costs • $=f(speed)*distance • Relationship between $/mile and speed is input • Speed determined from skimming network • CBD parking • Relationship between walk distance and CBD parking cost is input by zone • Proportion of free CBD parking and auto occupancy also input by zone • Free versus pay CBD parking determined by Monte Carlo simulation • Pay CBD parking costs and walking distance determined by: • Value of time based on income • Reduction in parking costs due to parking further away from destination • Auto occupancy also determined by Monte Carlo simulation • Non-CBD parking • Fixed rates depending on location • Average auto occupancy by trip type • Transit access costs and times

  7. Transit Access Sub-Model • Inputs • First, last, and priority (modes ordered in the sequence commuter rail, rail transit, express bus, local bus) mode • Average speeds for transit access modes walk, bus and auto • Fares • Auto operating costs • Drivers value of time • Park and ride rates • Walk times from park and ride • Distance distribution parameters • Costs and times for alternative transit access modes walk, bus, park and ride, kiss and ride, feeder bus (peak only) • Least “costly” transit access mode selected for simulated trip

  8. Model Estimation of Distance to Transit • Many of the transit access mode costs depend on distance to stops and rail stations • Often use zone average distance to nearest stop station • Challenge to estimate accurate access distances • Average zone distances often introduce a bias against transit • Relatively large transportation planning zones • Location of zone centroids often reflect where activities are located not where transit is an alternative Zone Centroid

  9. Access Sub-Model Calculations • Mean distance to stop/station and standard deviation of distance are input for each zone • Normal distribution randomly sampled for each simulated trip • Modes • Commuter rail station • Rail transit station • Bus stop • Feeder bus stop • Park and ride station

  10. Access Distance Approach • Caliper Corporation Maptitude/TransCAD • Methodology • Point layer of stations or stops • Create areas of influence • Overlay areas of influence over sub-zones (quarter-sections) • Assign station/stop to subzone and calculate access distance • Estimate zone mean access distances from subzone distances within zone • Estimate standard deviation of access distance from subzones distances plus intra-subzone variance

  11. Metra Station Point Layer

  12. Metra Station Areas of Influence

  13. Influence Areas • Thiessen or Voronoi polygons • Each point within polygon is closer to station than any other station

  14. Subzones Within CMAP Study Area

  15. Subzone-Metra Station Match

  16. Regional Model Zones

  17. Model Zone Parameters

  18. Rail Transit and Bus Areas of Influence CTA Rail Transit CTA and PACE Bus

  19. Rail Transit Extension Example: Initial Areas of Influence

  20. Rail Transit Extension Example: Added Stations

  21. Rail Transit Extension Example: Revised Areas of Influence

  22. Rail Transit Extension Example: Impact on Adjacent Line

  23. Final Thoughts • Systematic analytic approach that captures the differences between regional transit alternatives • Reproducible • Not dependent on planning judgment • Directly linked to model coded transit networks • General approach could be implemented in a variety of applications • Improve access calculations in conventional models • Component of activity based models – simulation of individual movements • Substitute General Transit Feed Specification (GTFS) data for model networks

  24. Questions? Ron Eash Parsons Brinckerhoff Chicago, IL eashrw@pbworld.com

More Related