Title: Responses to Gas Prices in Knoxville, TN
1Responses to Gas Prices in Knoxville, TN
- Vince Bernardin, Jr., Ph.D. Bernardin,
Lochmueller Associates - Mike Conger, P.E.Knoxville Regional
Transportation Planning Organization
2Background
- Gas price fluctuations prompt the question
- How are changes in gas prices affecting travel?
3More Less VMT
- Various studies have attempted to estimate the
elasticity of VMT to gas prices - Short term elasticities -0.07 to -0.17
- Long term elasticities -0.22 to 0.33
4Components of Travelers Response
- Travelers can reduce gas consumption in various
ways, some easier than others, - More carpooling
- Destinations closer to each other
- Destinations closer to home
- More transit/walking
- Fewer tours (more stops/tour)
- Lower activity participation (fewer stops)
- Lower vehicle ownership (long term)
5ModelingTravelers Response
- Travelers can reduce gas consumption in various
ways, some easier than others, - More carpooling
- Destinations closer to each other
- Destinations closer to home
- More transit/walking
- Fewer tours (more stops/tour)
- Lower activity participation (fewer stops)
- Lower vehicle ownership (long term)
- Traditional models have represented some of these
responses, but neglected others, - More carpooling
- Destinations closer to each other
- Destinations closer to home
- More transit/walking
- Fewer tours (more stops/tour)
- Lower activity participation (fewer stops)
- Lower vehicle ownership (long term)
6Challenges
- Models have faced two key problems in
incorporating additional sensitivity to fuel
prices - Data limitations
- Structural limitations
7Data Limitations
- Travel models have traditionally been estimated
from cross-sectional household survey data - The resulting lack of variation in fuel prices
with observed travel behavior has generally
precluded the incorporation of fuel prices as a
variable
8Structural Limitations
- The traditional four-step model design does not
allow the incorporation of many effects - Changes in mode and car-pooling can be captured
in mode choice, but - The agglomeration of destinations cannot be
reflected as the gravity model treats all
destination choices as independent - Activity participation and touring rates cannot
respond because cross-classification trip
production models cannot incorporate fuel price
as a variable - Vehicle ownership is generally not modeled at all
9Overcoming the Challenges
- In Knoxville, we are attempting to overcome both
challenges - Travel survey data was collected in both
2000-2001 and again in 2008, yielding data with
significant variation in fuel prices - A new hybrid trip-based/tour-based model design
has been adopted which overcomes the structural
limitations of the four-step model
10ModelingTravelers Response
- Traditional models have represented some of these
responses, but neglected others, - More carpooling
- Destinations closer to each other
- Destinations closer to home
- More transit/walking
- Fewer tours (more stops/tour)
- Lower activity participation (fewer stops)
- Lower vehicle ownership (long term)
- Traditional models have represented some of these
responses, but neglected others, - More carpooling
- Destinations closer to each other ??
- Destinations closer to home ??
- More transit/walking
- Fewer tours (more stops/tour)
- Lower activity participation (fewer stops)
- Lower vehicle ownership (long term)
11ModelingTravelers Response
- Traditional models have represented some of these
responses, but neglected others, - More carpooling
12Carpooling
- In the Knoxville model, as in activity-based
models, vehicle occupancy is determined by trip
mode choice models, distinct from tour mode
choice
13Variables
Models
Population Synthesizer
TAZ
Vehicle Availability Choice
Disaggregate Models
Activity / Tour Generation
Accessibility
Tour Mode Choice
Network
Stop Location Choice
Travel Times
Stop Sequence Choice
Aggregate Models
Trip Mode Choice
Flow Averaging
Departure Time Choice
Link Flows
Traffic Assignment
14Carpooling
- In the Knoxville model, as in activity-based
models, vehicle occupancy is determined by trip
mode choice models, distinct from tour mode
choice - NL and MNL models of trip mode choice were
estimated using the combined 2000-2001 2008
datasets - The models show a combined elasticity of vehicle
occupancy with respect to fuel price of 0.128.
15ModelingTravelers Response
- Traditional models have represented some of these
responses, but neglected others, - More carpooling
- Destinations closer to each other ??
- Destinations closer to home ??
16Destination Choices
- The new Knoxville model does incorporate
trip-chaining effects reflecting the fact that
travelers group their stops into convenient tours - However, we were unable to directly estimate the
effect of fuel prices on trip-chaining or
destination choice due to the limitations of our
estimation technique
17Destination Choice
- Analysis of the data using regression did show
fuel price effects on destination choice - Trip-based perspective
- Home-based trip length elasticity -0.114
- Non-home-based trip length elasticity -0.064
- Tour-based perspective
- Direct travel time from home to stop elasticity
-0.036 - Elasticity of destination accessibility 0.042
18Destination Choice
- Elasticities from regression analysis may be
incorporated in stop location choice models
through a heuristic calibration effort - Time labor intensive process
- Contingent on schedule and budget feasibility
19ModelingTravelers Response
- Traditional models have represented some of these
responses, but neglected others, - More carpooling
- Destinations closer to each other ??
- Destinations closer to home ??
- More transit/walking
20Mode Shifts
- Shifts from driving to bus and walking are
primarily reflected in tour mode choice - Nested logit models of combined tour mode and
stop location choice were estimated sequentially
from household travel on-board survey data - Modeled elasticity of bus ridership 0.853
- Observed elasticity of bus ridership from KATS
weekly counts for 2006 vs. 2008 0.318
21ModelingTravelers Response
- Traditional models have represented some of these
responses, but neglected others, - More carpooling
- Destinations closer to each other ??
- Destinations closer to home ??
- More transit/walking
- Fewer tours (more stops/tour)
22Tour-making
- Conceptually, it seems reasonable that travelers
may respond to increased fuel prices by reducing
travel costs by combining/eliminating tours - However, the Knoxville data showed no evidence of
this sort of behavior
23ModelingTravelers Response
- Traditional models have represented some of these
responses, but neglected others, - More carpooling
- Destinations closer to each other ??
- Destinations closer to home ??
- More transit/walking
- Fewer tours (more stops/tour)
- Lower activity participation (fewer stops)
24Activity Participation
- Travelers can also respond by decreasing their
participation in out-of-home activities - This effect was observed in the Knoxville data
and incorporated in stop generation - Low income travelers (lt 25k/yr) and
discretionary activities were primarily affected - Range of elasticities for various income groups
and stop types -0.155 to -0.233
25ModelingTravelers Response
- Traditional models have represented some of these
responses, but neglected others, - More carpooling
- Destinations closer to each other ??
- Destinations closer to home ??
- More transit/walking
- Fewer tours (more stops/tour)
- Lower activity participation (fewer stops)
- Lower vehicle ownership (long term)
26Vehicle Ownership
- Over the long term, travelers can also respond by
owning fewer (or more efficient) vehicles - An ordered response logit model for vehicle
ownership choice was estimated - Elasticity of household vehicles with respect to
fuel price -0.067
27Ongoing Work
- Currently, estimation is complete for the new
Knoxville model, but work is on-going to
calibrate the component models - Hope to estimate total elasticity of VMT to fuel
price as part of model validation
28Thank You!