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Published byMaximillian Hector Howard Modified over 9 years ago
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Analysis of Time of Day Models from Various Urban Areas William G. Allen, Jr. Transportation Planning Consultant Windsor, SC TRB Transportation Planning Applications Conference Daytona Beach, FL 9 May 2007
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Overview Comparisons among cities: can you borrow your neighbor’s TOD model? Peak spreading: a myth? NHB sub-purposes: worthwhile? Validation: it’s a good thing
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Comparison Among Cities and Years Atlanta - 1995 & 2002 Baltimore - 2001 Charlotte - 2000 New Orleans - 2000 Reading, PA - 1994 Washington, DC - 1989 & 1994
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TOD Analysis Data from home interview surveys, processed the same for each city 30 minute increments Separate by trip purpose and directionality Home to non-home and non-home to home Vehicle trips only Simple process for aggregate 4-step models
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Survey Processing Summary of trips by “time in motion” Compute reported vehicle-minutes by trip Tabulate veh-minutes by 30 min. period Get fraction of VHT by period Group 30 min. periods as desired for assignment Apply fractions to daily vehicle trip table
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Assignment Periods AMMDPMNTOP Atlanta45411 Baltimore36312 Charlotte36312 New Orleans37311 Reading37311 Washington3318
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Atlanta – 1995 – Work
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Atlanta – 2002 – Work
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Baltimore – Work
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Charlotte – Work
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New Orleans – Work
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Reading – Work
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Washington – 1989 – Work
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Washington – 1994 – Work
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Observations on Work Trips Work trips are pretty regular AM peak usually higher than PM peak 7:30 – 8:00 AM is the highest half- hour everywhere Some pattern differences are logical: New Orleans: tourist-based economy Reading: shift workers Washington: regular pattern of government workers
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Atlanta – 1995 – All Trips
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Atlanta – 2002 – All Trips
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Baltimore – All Trips
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Charlotte – All Trips
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New Orleans – All Trips
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Reading – All Trips
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Washington – 1989 – All Trips
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Washington – 1994 – All Trips
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Observations on All Trips Atlanta & Washington, over time Peaks get lower; midday/night higher People leave earlier, return later Comparisons among cities Washington & Baltimore similar PM high, AM less peaked Atlanta, Charlotte, Reading (?!) similar New Orleans unique
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Peak Trip Share Declines AtlantaWashington 19952002 19891994 Work6:30-9:30 a38%34%36%34% 3:30-6:30 p35%30%34%33% off-peak27%36%30%33% Other6:30-9:30 a14%9%12%15% 3:30-6:30 p24%23%39%25% off-peak62%68%49%60%
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Peak Trip Share Declines – All Cities Work Trend Line Other Trend Line
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Causes of Peak Spreading Increased traffic congestion Changing lifestyles More flex-time More part-time workers
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Non-Home-Based Sub-purposes A fast-growing trip category NHB categories based on tour type JTW: home-other-work or work- other-home JAW: work-other-work NWK: home-other-other-other-home Trip generation and distribution are similar TOD is very different
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Washington – 1994 – NHB JTW
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Washington – 1994 – NHB JAW
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Washington – 1994 – NHB NWK
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Validation Compare link volumes to counts by assignment period This type of TOD model sometimes overestimates peak period volumes Reduce peak fractions, increase off- peak fractions until volumes ≈ counts A very necessary step Difficult to get counts Easy to adjust fractions
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Conclusions Work trip patterns are generally consistent Some peak spreading over time Increased congestion is part of the reason Splitting NHB into sub-purposes is important for TOD This approach quickly produces a usable TOD model, but validation is important TOD models are not really transferable
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Questions Please use Microphone
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