Title: Austin Commuter Survey: Findings and Recommendations
1Austin Commuter Survey Findings and
Recommendations
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- Dr. Chandra Bhat
- The University of Texas at Austin
2THE CONTEXT
- An average Austin area rush hour commuter spends
50 hours annually just sitting in traffic and
takes 30 longer to get from point A to point B. - Traffic delay per rush hour traveler has risen by
250 in the past decade in Austin - Need to design and implement bold, creative,
coordinated and proactive strategies
3- Congestion alleviation strategies may be broadly
grouped into the following categories - Increase supply/vehicular carrying capacity of
roadways - Influence vehicular traffic patterns
- Change commuter travel patterns
- Accurate analysis of the potential effectiveness
of these strategies is critical - This requires examination of commuter travel
behavior commute periods being the most
congested times of the weekday
4REPORT OBJECTIVES
- Examine demographic, employment and overall
travel characteristics of Austin area commuters
and analyze how these characteristics impact
commute travel choices and perceptions
- Develop a framework for evaluating the effect of
alternative strategies on commute mode choice to
enable policy analysis
- Highlight the need to identify and implement a
coordinated, balanced, multi-modal, and
integrated land use-transportation plan to
control traffic
5AUSTIN COMMUTER SURVEY (ACS)
- Endorsed by Clean Air Force (CAF) of Central
Texas and supported by NuStats Inc. - Web-based survey hosted by UT Austin
- Publicity and recruitment
- CAF email messages to Austin area employers
- Radio and TV media
- Austin Chamber of Commerce article in newsletter
- Color posters at strategic public places
- Posters handed out to individuals at public
locations
6SURVEY CONTENT
Screening
Introduction and Travel opinions
Work-related characteristics
Commute travel experience by
Drive
Share-ride
Bus
Walk
Bicycle
Commute and midday stop-making
Stated preference games
Demographic data
7DATA PREPARATION
- Geo-coded home and work locations
- Overlaid geo-coded locations with CAMPOs zonal
configuration to assign appropriate zones - Appended LOS attributes to each individuals
record extracted from CAMPOs network skims - Ensured consistency through several cleaning and
screening steps
- Final sample
- 699 commuters who reside and work within 3-county
area of Hays, Williamson and Travis - Weighted by race, income, gender, household size,
household type and commute travel mode choice
8DEMOGRAPHIC AND SOCIO-ECONOMIC CHARACTERISTICS
- Household characteristics
- Individual characteristics
- Demographic characteristics
- Socio-economic characteristics
- Work characteristics
9COMMUTE TRAVEL CHARACTERISTICS
- Travel Perceptions
- Commute Distance
- Nonwork stops
- Commute Mode
- Commute Duration
- Commute Time-of-Day
10CONCLUSIONS
The Big Picture Findings
- Increasing diversity of household structures
increasing participation in nonwork activities
during commute and midday - It is important to pursue an integrated and
coordinated land-use and transportation plan to
address congestion problems - Addressing traffic congestion problems requires a
balanced and multimodal transportation plan
infeasible to even maintain todays congestion
levels into the future by focusing on only one
strategy
11CONCLUSIONS
- Need to also focus attention on modifying work
arrangements as a means to alleviating congestion
currently only 2.5 of the commuters telework
on any given day - Reliability of travel time plays an important
role in commute mode choice decisions
particularly for commuters with an inflexible
work schedule - Overall, several Austin area employees do enjoy
the routine of traveling to their work place
12CONCLUSIONS
Specific Findings on Commuter Rail and Tolls
- Commuters have a more positive image of a
potential CRT mode than the current bus mode - Percentage of commuters using a potential CRT
system will be dependent upon the service
characteristics under assumptions that are not
unreasonable, a new CRT mode is predicted to
capture 1.5 of overall mode share if 10 of the
commuter population have access to CRT and 4.1
of overall mode share if 25 of the commuter
population have access to CRT - Within the group of individuals for whom CRT is
an available alternative, CRT is predicted to
capture about 15 of the mode share
13CONCLUSIONS
- Tolls on highways can be expected to lead to a
drop of about 2.5 in the DA mode share on
highways for each 1 toll - A 1 toll for the use of all the major highways
in the Austin area would lead to a 1.5 reduction
in DA mode share across the entire Austin
metropolitan area - The average commuter is willing to pay 12 for an
hour of commute time savings
14CONCLUSIONS
Other Findings about Austin Area Commuters
- The household structures of Austin area commuters
are rather diverse - only 13 of commuter
households are traditional family households - The average household income (65,700) is higher
than the national average (58,000) - A large number of commuters have internet access
at home (84) - Average motorized vehicle ownership level of 2
per household
15CONCLUSIONS
- Key facts about Austin area commuters
- 67 white, non-Hispanic 16 Hispanic
- 57 male
- avg. personal income 44,650
- primarily full-time employed
- start work 7-9 AM, end work 4-6 PM
- 10 telework at least occasionally
- 42 have inflexible work schedules in both
arrival departure 30 have a flexible work
schedule in both arrival departure - majority of the commuters (72) live within 15
miles from work - Net result of high incomes and car ownership,
diverse household structures and increased
commute/midday stop-making is high DA mode shares
16THANK YOU!
17Household size and structure
2-person hhs
3 and 4 person hhs
Distribution of household size
Distribution of household types
18Household income
Low income lt 35,000 32 Medium income
35,000-95,000 48 High income gt 95,000 20
19Housing characteristics
Distribution of housing tenure type
Distribution of residence type
20Residential location
21Internet access from residence
22Motorized vehicle ownership
Auto-ownership of commuters
Average vehicle ownership by residence zone
population density
Average vehicle ownership by income level
23Motorized vehicle type and age
Average age of vehicles by vehicle type
Vehicle types used for commute
Vehicle types owned by commuter households
24Demographic characteristics
Racial composition of the commute population
Gender of the commute population
Marital status of commuters
Age distribution of commuters
25Socio-economic characteristics
Distribution of highest level of education
Distribution of personal income
26Work characteristics
Employment status
Length of time working in Austin
Employer type
27Work start time distribution
Work start time distribution
28Work end time distribution
Work end time distribution
29Work schedule flexibility
Work start time flexibility
Work end time flexibility
30Teleworking percentages
Flexible arrival and/or departure times
Educational Instit.
Part-time employed
Inflexible arrival and/or departure times
Non-educational Instit.
Full-time employed
31Travel perceptions
Perception of level of congestion during commute
Characterization of the commute trip
32Perception of level of congestion by commute
distance
Highway not used
Short Commute (7 miles)
Long Commute (gt15 miles)
Medium Commute (7.01 15 miles)
Highway used
Long Commute (gt15 miles)
Medium Commute (7.01 15 miles)
Short Commute (7 miles)
33Characterization of commute trip by commute
duration
Highway not used
Short Commute (7 miles)
Long Commute (gt15 miles)
Medium Commute (7.01 15 miles)
Highway used
Long Commute (gt15 miles)
Medium Commute (7.01 15 miles)
Short Commute (7 miles)
34Travel perceptions
Ease of travel to non-work activities around home
35Commute distance
Distribution of commute distance
36Nonwork stops weekly
Distribution of weekly commute stop-making
Distribution during evening commute
Distribution during morning commute
37Distribution of weekly midday stop-making
Non-home trips
Return home trips
38Degree of stop-making during the week
Commute stop-making
Midday stop-making
39Nonwork stops - daily
Distribution of number of activity stops
40Distribution of stop-making by purpose and time
period
41Commute mode
Distribution of mode use over the week
42Commute mode choice on most recent work day
43Mode split by weekly commute stop-making propensit
y
Mode split by weekly midday stop-making propensity
44- Important results from Bhat and Sardesai (2004)
- The ability of auto-use disincentives and hov
incentives to shift commuters away from driving
to car/van-pooling and transit modes will be
overestimated if the impact of commute and midday
stop-making is ignored - Commuters are not only concerned about average
travel time but also about the reliability of
travel time - The average commuter is willing to pay 12 for an
hour of commute savings - Commuters have a more positive image of a
potential CRT mode than the current bus mode
45- Important results from Bhat and Sardesai (2004)
contd - The presence of a grocery store around potential
CRT stations acts as an impetus for CRT mode use
however, the presence of a child care center does
not provide any stimulation - A new CRT mode is predicted to capture 4.1 of
the overall mode share (2.6 from DA) - Within the group of individuals for whom CRT is
an available alternative, a shift of 15 from
driving to CRT is projected - Tolls on highways can be expected to lead to a
drop of about 2.5 in the DA mode share on the
highways for each 1 toll
46Commute duration
Commute durations by mode
47Commute Time-of-Day
Distribution of the time of the morning commute
Distribution of the time of the evening commute