Understanding the Concept of Latent Demand in Traffic - PowerPoint PPT Presentation

1 / 22
About This Presentation
Title:

Understanding the Concept of Latent Demand in Traffic

Description:

Changes in route or destination (no for vehicle trips but maybe for VMT) ... Also found both directions of causality significant, lane-miles VMT the stronger direction ... – PowerPoint PPT presentation

Number of Views:24
Avg rating:3.0/5.0
Slides: 23
Provided by: patm79
Learn more at: https://dot.ca.gov
Category:

less

Transcript and Presenter's Notes

Title: Understanding the Concept of Latent Demand in Traffic


1
Understanding the Concept of Latent Demand in
Traffic
  • Prof. Patricia L. Mokhtarian
  • Civil Environmental Engineering, UC Davis
  • plmokhtarian_at_ucdavis.edu
  • www.its.ucdavis.edu/telecom/
  • (530) 752-7062

2
Outline of this Talk
  • What are latent and induced demand, and their
    implications?
  • Empirical approaches to assessing induced demand
  • Typical results
  • Limitations
  • UC Davis study using matched pairs
  • More recent work Cervero/Hansen Choo/Mokh.
  • Summary
  • Concluding thoughts

3
What is Latent Demand?
  • Often used interchangeably with induced demand,
    but the two concepts can be technically
    distinguished as follows
  • Latent demand Pent-up (dormant) demand for
    travel, travel that is desired but unrealized
    because of constraints
  • Induced demand Realized demand that is
    generated (induced, drawn out) because of
    improvements to the transportation system

4
Induced Demand
  • The increment of new vehicle traffic that would
    not have occurred at all without the capacity
    improvement.
  • Clear in theory, but difficult in practice!
  • Observed increases in traffic on a
    capacity-enhanced network link can arise from a
    variety of sources

5
When is Traffic Growth Induced Demand?
  • Shifts in departure time
  • Changes in route or destination (no for vehicle
    trips but maybe for VMT)
  • Shifts from shared modes to drive alone
  • New or longer trips to existing locations
  • Background demographic growth (WHOA)
  • Trips generated by new development attracted to
    the improved corridor

6
Why do we Care about Induced Demand?
  • Need to be able to forecast newly-created travel
    (that WNHOA)
  • Affects the cost-benefit calculation for the
    improvement
  • Affects the assessment of environmental impacts
  • Legal/political ramifications
  • Sierra Club v. MTC, 1989
  • UK abandoned predict and provide policy in mid
    90s

7
Empirical Approaches
  • Case studies
  • Cross-sectional disaggregate modeling
  • Cross-sectional aggregate modeling
  • Time series aggregate modeling
  • Cross-sectional/time series aggregate modeling
  • Time series link/facility level analysis with
    controls

8
Case Studies
  • Change in traffic on single facility measured
  • Results mixed, but have generally found observed
    volumes higher than forecasts
  • May highlight idiosyncratic circumstances
  • Often short-term difficult to distinguish
    induced demand from shifted demand or background
    growth

9
Cross-sectional Disaggregate Modeling
  • Using 1995 NPTS (travel diary data), analyze
    association of VMT with speed
  • Higher speeds associated with greater VMT
  • Speed is a more behaviorally-sound influence on
    VMT than capacity
  • Association doesnt guarantee causality cant
    identify long-term impacts

10
Cross-sectional Aggregate Modeling
  • Models impact of lane-miles on VMT for metro
    areas in US
  • Increase of 1 in lane-mi leads to 0.8 increase
    in VMT
  • Potentially represents long-term equilibrium
  • Bi-directional causality impossible to untangle
    with single equation, no dynamic element

11
Time Series Aggregate Modeling
  • Decomposed VMT growth (Milwaukee, 1963-1991) into
    sources based on assumed relationships
  • 6-22 of total VMT growth attributable to new
    capacity
  • Regional focus decomposition approach useful
  • Still only one direction of causality permitted

12
Cross-sectional/Time Series Aggregate Modeling
  • Models VMT as function of lane-mi among other
    variables, for multiple areas over time
  • 1 increase in ln-mi ? 0.2 0.9 increase in VMT
    (long-run gt short-run)
  • Advantages
  • Covariates help capture background influences
  • If area large enough, demand shifts accounted for
  • Temporal precedence can be established

13
Cross-sectional/Time Series Aggregate Modeling
(contd)
  • Disadvantages
  • Not all background influences captured
  • Facility/metro-level analyses subject to
    confounding with changes in classification and
    urban boundary over time
  • Even temporal precedence doesnt guarantee
    causality
  • Effectiveness of lagged variables depends on
    whether planning horizon is longer than the lag

14
Time Series Link/Facility Level Analysis with
Controls
  • Compares growth in ADT on improved links, to that
    on matched set of unimproved links
  • Study of 18 matched prs in CA (UCD faculty) found
    no difference in growth rates
  • Controls for causes of growth common to improved
    and comparison segments
  • Several disadvantages

15
Time Series Link/Facility Level Analysis (contd)
  • Disadvantages
  • Difficult to find suitable controls
  • Doesnt control for spatial shifts from nearby
  • Cannot establish a control for an entirely new
    link
  • Another possible reason for difference ADT
    v. VMT new capacity may affect trip length more
    than frequency

16
Recent Work Cervero/Hansen
  • Cross-sectional/time series aggregate
  • state hwys, 34 CA counties, 1976-97
  • Simultaneous equations
  • Lane-miles ? VMT
  • VMT ? lane-miles
  • Both directions of causality significant,
    lane-miles ? VMT the stronger direction

17
Cervero/Hansen (contd)
  • Probably the most rigorous published study to
    date
  • Issues
  • Did facility reclassification, metro area effects
    confound relationships?
  • What happened to traffic on lower-classification
    facilities?
  • Are the instrumental variables appropriate?
  • Is the high goodness-of-fit spurious?
  • Were the lags long enough?

18
Recent Work Choo/Mokhtarian
  • Time series aggregate (USwide, 1951-2000)
  • Comprehensive structural model

19
Sociodemo-graphics
Economic Activity
Travel Demand (VMT)
Telecom Demand
Transport.Sys. Infrastructure (lane-mi)
Telecom System Infrastructure
Telecom Costs
Travel Costs
Land Use
20
Choo/Mokhtarian (contd)
  • Time series aggregate (USwide, 1951-2000)
  • Comprehensive structural model
  • Corrected for high correlations due to similar
    temporal trends
  • Also found both directions of causality
    significant, lane-miles ? VMT the stronger
    direction

21
Summary
  • Its a complex issue!
  • Each approach has advantages and disadvantages,
    something to offer but not definitive answers
  • To better understand extent to which answer
    depends on method, apply multiple methods to same
    region
  • Nevertheless, the most sophisticated analyses
    find evidence for induced demand

22
Concluding Thoughts
  • Transportation demand will continue to grow
  • Thus, cant eliminate all system improvements
    just because demand will increase
  • Should rather weigh the costs (increased fuel
    consumption, emissions) against the benefits
    (increased mobility, economic gain)
  • Need to continue to improve our measurement and
    modeling of both costs and benefits
  • And continue efforts to more appropriately price
    the provision of service
Write a Comment
User Comments (0)
About PowerShow.com