Title: The National Household Travel Survey
1The National Household Travel Survey
Nanda Srinivasan, Cambridge Systematics
Inc. Nancy McGuckin, Travel Behavior Analyst
2About the NPTS
- Target Population
- Residents in households (all ages)
- Group quarters are not included.
- Survey Method
- RDD list-assisted sample
- Pre-contact letter with incentive
- Telephone recruit--travel-diary mail out
- Telephone retrieval using Computer Assisted
Telephone Interviews (CATI) - Information Collected
- All trips, all purposes, all modes on an assigned
day for all people. - Long-distance trips for the previous four weeks.
3What Kinds of Information Does the Survey Obtain?
- Demographic information, worker and immigrant
status, general occupation, web-use, etc. - Vehicle information and fuel cost/efficiency
- Time of day and purpose for work and non-work
travel, mode, occupancy, transit access and
egress - Usual travel to work matching census, with more
detail on work-at-home
4Major Users and Uses
- Federal (DOT)
- Federal (Non-DOT)
- State DOT
- MPOs
- Universities
- Research Entities
- Descriptive Statistics
- Travel Models
- Traffic Safety
- Long Distance Travel
- Land-use Models
- Elderly
- Race and Gender
- Transit Planning
- Mobility/Congestion
- Travel Behavior Trends
5Currently, Local Communities Use the National
Travel Data by
- Benchmarking
- Based on nation-wide estimates
- Households from MSAs of similar size, e.g. 3M,
1-3M, 500K-1M, 250-500K, - Households from the same Census Region (4) or
Census Division (9) - Buying additional samples of the national survey.
- (The Add-on Program)
- Transferring travel data from households in
clusters of Census Tracts like their local area. - (The Transferability Project)
6National Household Person and Vehicle Trip Rates
Benchmarking
7National Household-based Person Trips by Type
Benchmarking
8Four Ways to Get Household Travel Data
- Conduct local household travel surveys
- Purchase Add-On samples to national survey
- Use transferable estimates from census clusters
- Use default values from areas of similar size or
region of country
9Add-on Benefits
- No local staff work to write RFP, review
proposals, manage and administer contract - Final product is quality-tested file that is
weighted, edited, documented and ready-to-run - Local control over sample size and strata
- Trip origins and destinations geocoded with high
accuracy - National sample cases in your area included
without additional cost - Local funding match has been historically waived
10In 2001, 9 areas were add-ons
11Number of Local Samples in 2001
12Some Applications
- Inputs to Travel Demand Forecasting
- Air Quality Analysis
- Trend Analysis
- Trip Chaining
- Comparison with Census
- Special Studies
13National Household Travel Survey Add-On Use at
Wisconsin State DOT
State DOT Example
Courtesy Kimon Proussaloglou, Cambridge
Systematics Inc.
14Project Objectives Statewide Model
- Decision-making support to the Long Range Plan
- Passenger model
- Policy-sensitive multimodal evaluation framework
- Diversion among routes Corridor 2020, Intercity
corridors, Key metropolitan corridors - Diversion to improved intercity modes
- Freight model - intercity commodity flows
- Linkages to WisDOT management systems
- TAFIS
- STN and WISLR
15Wisconsin MPO Models
Wausau
Eau Claire
Stevens Point
W. Rapids
Green Bay
Appleton/Oshkosh
La Crosse
Sheboygan
Fond du Lac
Madison
Janesville/Beloit
16Integration of Statewide and MPO Models
- Consistency in
- Travel data sources NHTS add-on
- Zonal structure and socioeconomic inputs
- Network detail and input assumptions
- Software platform and overall model approach
- MPO model results within the MPO boundaries
- Best practical approach to model integration
- External station trip data from statewide model
17NHTS Add-on as a Key Data Source
- Size and distribution of survey databases
- Household file (N17,600)
- Person (N41,000)
- Vehicle (N38,000)
- Daily Trips (N164,000)
- Long Distance Trips (N44,000)
- Most recent long distance travel
- Stratified sampling plan
- Oversample individual MPOs
- Modeling at state and MPO levels
- NHTS sample-weighting approach
18NHTS Location of Sampled Households
19Model Components
20Household Characteristics
21National Household Travel Survey Add-On Use in
the Des Moines, Iowa, Metropolitan Area
Small/Medium MPO example
Courtesy Adam Noelting, Des Moines Area MPO
22Des Moines Area MPO
- Des Moines Area MPO Population, 2000 U.S. Census
395,072 - Population of Four-County Study Area, 2000 U.S.
Census 470,041 - Des Moines Area MPO Area 500 Square Miles
- Four-County Study Area 2,319 Square Miles
23NHTS Add-On
- Des Moines Area Metropolitan Planning
Organization (MPO), in cooperation with the Iowa
Department of Transportation (DOT), participated
in the 2001 NHTS add-on survey - The last time extensive travel data was collected
for the Des Moines area was the 1960s
24Data Use Travel Demand Modeling
- Necessary for creation of Year 2030 LRTP
- Utilized 7,506 vehicle trips to determine
Non-Home Based (NHB), Home-Based Other (HBO), and
Home-Based Work Trips (HBW) - Expected NHB trips to rise, due to from increased
trip chaining - NHB did not increase significantly, validating
previous model inputs - HBO and HBW trip percentages both increased over
previous inputs - Used household size and vehicles/hhld to update
cross-classification trip rates - Data showed smaller household sizes and more
vehicles /hhld - Cross-classification tables aided the calibration
of the model
25Data Use Mode Choice Modeling and Travel Time
Survey
- Transit usage evaluated
- Transit usage accounted for less than 1 percent
of total trips and approximately 1 percent of
work trips - Mode Choice Modeling not warranted by transit use
percentage - From the 2001 NHTS Add-on data, in terms of
person trips, the afternoon/evening commute is
the most heavily traveled time of day - Lunchtime also is more heavily traveled than the
morning commute hours
26Data Use Travel Time Survey
27National Household Travel Survey Add-On Use in
the Baltimore, MD, Metropolitan Area
Large MPO example
Courtesy Charles Baber Baltimore MPO
28Auto-Ownership
29Vehicle Availability and Licensed
DriversRelationship per Household
Inside Baltimore City
Outside Baltimore City
Drivers Drivers
Drivers Vehicles
Vehicles
Vehicles
18
48
5
Drivers
Drivers
Vehicles
Vehicles
9
10
Drivers
Drivers
Drivers
Vehicles
or
or
66
Vehicles
Vehicles
0
0
38
6
30Motorized Person Trips by Purpose
31Some General Issues
32Work Trips Have Declined as a Proportion of All
Trips
Work Travel as a Proportion of All Travel
Number (in Percent)
40
30
20
10
0
1969
1977
1983
1990
1995
2001
Person Trips
Person Miles of Travel
Vehicle Trips
Vehicles Miles of Travel
33Thats Because Other Types of Trips are
GrowingFaster than Work Trips
34And those Trips have Different Time-of-Day
Profiles
35Traffic can be Worse Midday Saturday than During
Weekday Peak Hours
36More than Half of all Workers Stop During their
Commutes to Work
37We Think We Know whatComplex Work Tours Look Like
Pick
-
up Present for
Boss Birthday
Drop Child At Daycare
Home
Work
Pick Child up at Daycare
Boss Birthday
Lunch
Pick
-
up Groceries for Dinner
38But Real Life is Messy
39Usual Mode to Work
40Accessing NHTS Data
- Web-tool http//nhts.ornl.gov
- SAS Data Set with Documentation Available at
- http//nhts.ornl.gov/2001/html_files/download_dire
ctory.shtml
41(No Transcript)
42http//nhts.ornl.gov
43Contact Susan.Liss_at_fhwa.dot.gov Nanda.Srinivasan_at_f
hwa.dot.gov Nancy.Mcguckin_at_fhwa.dot.gov 202-366-
0160