Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (2024)

Everything is related to everything else, but near things are more related than distant things. - Waldo Tobler's 'First Law of Geography’

Destination Choice (or trip distribution or zonal interchange analysis), is the second component (after Trip Generation, but before Mode Choice and Route Choice) in the traditional four-step transportation forecasting model. This step matches tripmakers’ origins and destinations to develop a “trip table”, a matrix that displays the number of trips going from each origin to each destination. Historically, trip distribution has been the least developed component of the transportation planning model.

Table: Illustrative Trip Table
Origin \ Destination123Z
1T11T12T13T1Z
2T21
3T31
ZTZ1TZZ

Where: Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (1) = Trips from origin i to destination j.

Work trip distribution is the way that travel demand models understand how people take jobs. There are trip distribution models for other (non-work) activities, which follow the same structure.

Contents

  • 1 Fratar Models
  • 2 Gravity Model
  • 3 Balancing a matrix
  • 4 Issues
    • 4.1 Feedback
    • 4.2 Feedback and time budgets
  • 5 Examples
    • 5.1 Example 1: Solving for impedance
    • 5.2 Example 2: Balancing a Matrix Using Gravity Model
  • 6 Additional Questions
  • 7 Variables
  • 8 Further reading
  • 9 Videos
  • 10 References

Fratar Models

[edit | edit source]

The simplest trip distribution models (Fratar or Growth models) simply extrapolate a base year trip table to the future based on growth, Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (2)

where:

  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (3) - Trips from Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (4) to Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (5) in year Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (6)
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (7) - growth factor

Fratar Model takes no account of changing spatial accessibility due to increased supply or changes in travel patterns and congestion.

Gravity Model

[edit | edit source]

The gravity model illustrates the macroscopic relationships between places (say homes and workplaces). It has long been posited that the interaction between two locations declines with increasing (distance, time, and cost) between them, but is positively associated with the amount of activity at each location (Isard, 1956). In analogy with physics, Reilly (1929) formulated Reilly's law of retail gravitation, and J. Q. Stewart (1948) formulated definitions of demographic gravitation, force, energy, and potential, now called accessibility (Hansen, 1959). The distance decay factor of Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (8) has been updated to a more comprehensive function of generalized cost, which is not necessarily linear - a negative exponential tends to be the preferred form. In analogy with Newton’s law of gravity, a gravity model is often used in transportation planning.

The gravity model has been corroborated many times as a basic underlying aggregate relationship (Scott 1988, Cervero 1989, Levinson and Kumar 1995). The rate of decline of the interaction (called alternatively, the impedance or friction factor, or the utility or propensity function) has to be empirically measured, and varies by context.

Limiting the usefulness of the gravity model is its aggregate nature. Though policy also operates at an aggregate level, more accurate analyses will retain the most detailed level of information as long as possible. While the gravity model is very successful in explaining the choice of a large number of individuals, the choice of any given individual varies greatly from the predicted value. As applied in an urban travel demand context, the disutilities are primarily time, distance, and cost, although discrete choice models with the application of more expansive utility expressions are sometimes used, as is stratification by income or auto ownership.

Mathematically, the gravity model often takes the form:

Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (9)

Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (10)

Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (11)

Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (12)

where

  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (13) = Trips between origin Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (14) and destination Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (15)
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (16) = Trips originating at Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (17)
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (18) = Trips destined for Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (19)
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (20) = travel cost between Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (21) and Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (22)
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (23) = balancing factors solved iteratively.
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (24) = impedance or distance decay factor

It is doubly constrained so that Trips from Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (25) to Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (26) equal number of origins and destinations.

Balancing a matrix

[edit | edit source]

Balancing a matrix can be done using what is called the Furness Method, summarized and generalized below.

1. Assess Data, you have Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (27),Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (28), Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (29)

2. Compute Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (30), e.g.

  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (31)
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (32)

3. Iterate to Balance Matrix

(a) Multiply Trips from Zone Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (33) (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (34)) by Trips to Zone Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (35) (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (36)) by Impedance in Cell Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (37) (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (38)) for all Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (39)

(b) Sum Row Totals Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (40), Sum Column Totals Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (41)

(c) Multiply Rows by Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (42)

(d) Sum Row Totals Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (43), Sum Column Totals Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (44)

(e) Compare Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (45) and Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (46), Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (47) Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (48) if within tolerance stop, Otherwise goto (f)

(f) Multiply Columns by Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (49)

(g) Sum Row Totals Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (50), Sum Column Totals Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (51)

(h) Compare Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (52) and Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (53), Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (54) and Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (55) if within tolerance stop, Otherwise goto (b)

Issues

[edit | edit source]

Feedback

[edit | edit source]

One of the key drawbacks to the application of many early models was the inability to take account of congested travel time on the road network in determining the probability of making a trip between two locations. Although Wohl noted as early as 1963 research into the feedback mechanism or the “interdependencies among assigned or distributed volume, travel time (or travel ‘resistance’) and route or system capacity”, this work has yet to be widely adopted with rigorous tests of convergence or with a so-called “equilibrium” or “combined” solution (Boyce et al. 1994). Haney (1972) suggests internal assumptions about travel time used to develop demand should be consistent with the output travel times of the route assignment of that demand. While small methodological inconsistencies are necessarily a problem for estimating base year conditions, forecasting becomes even more tenuous without an understanding of the feedback between supply and demand. Initially heuristic methods were developed by Irwin and Von Cube (as quoted in Florian et al. (1975) ) and others, and later formal mathematical programming techniques were established by Evans (1976).

Feedback and time budgets

[edit | edit source]

A key point in analyzing feedback is the finding in earlier research by Levinson and Kumar (1994) that commuting times have remained stable over the past thirty years in the Washington Metropolitan Region, despite significant changes in household income, land use pattern, family structure, and labor force participation. Similar results have been found in the Twin Cities by Barnes and Davis (2000).

The stability of travel times and distribution curves over the past three decades gives a good basis for the application of aggregate trip distribution models for relatively long term forecasting. This is not to suggest that there exists a constant travel time budget.

In terms of time budgets:

  • 1440 Minutes in a Day
  • Time Spent Traveling: ~ 100 minutes + or -
  • Time Spent Traveling Home to Work: 20 – 30 minutes + or -

Research has found that auto commuting times have remained largely stable over the past forty years, despite significant changes in transportation networks, congestion, household income, land use pattern, family structure, and labor force participation. The stability of travel times and distribution curves gives a good basis for the application of trip distribution models for relatively long term forecasting.

Examples

[edit | edit source]

Example 1: Solving for impedance

[edit | edit source]

Problem:

You are given the travel times between zones, compute the impedance matrix Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (57), assuming Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (58).

Travel Time OD Matrix (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (59))
Origin ZoneDestination Zone 1Destination Zone 2
125
252

Compute impedances (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (60))

Solution:

Impedance Matrix (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (62))
Origin ZoneDestination Zone 1Destination Zone 2
1Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (63)Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (64)
2Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (65)Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (66)

Example 2: Balancing a Matrix Using Gravity Model

[edit | edit source]

Problem:

You are given the travel times between zones, trips originating at each zone (zone1 =15, zone 2=15) trips destined for each zone (zone 1=10, zone 2 = 20) and asked to use the classic gravity model Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (68)

Travel Time OD Matrix (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (69))
Origin ZoneDestination Zone 1Destination Zone 2
125
252

Solution:

(a) Compute impedances (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (71))

Impedance Matrix (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (72))
Origin ZoneDestination Zone 1Destination Zone 2
10.250.04
20.040.25

(b) Find the trip table

Balancing Iteration 0 (Set-up)
Origin ZoneTrips OriginatingDestination Zone 1Destination Zone 2
Trips Destined1020
1150.250.04
2150.040.25
Balancing Iteration 1 (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (73))
Origin ZoneTrips OriginatingDestination Zone 1Destination Zone 2Row Total Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (74)Normalizing Factor Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (75)
Trips Destined1020
11537.501249.500.303
215675810.185
Column Total43.5087
Balancing Iteration 2 (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (76))
Origin ZoneTrips OriginatingDestination Zone 1Destination Zone 2Row Total Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (77)Normalizing Factor Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (78)
Trips Destined1020
11511.363.6415.001.00
2151.1113.8915.001.00
Column Total12.4717.53
Normalizing Factor Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (79)0.8021.141
Balancing Iteration 3 (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (80))
Origin ZoneTrips OriginatingDestination Zone 1Destination Zone 2Row Total Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (81)Normalizing Factor Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (82)
Trips Destined1020
1159.114.1513.261.13
2150.8915.8516.740.90
Column Total10.0020.00
Normalizing Factor = Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (83)1.001.00
Balancing Iteration 4 (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (84))
Origin ZoneTrips OriginatingDestination Zone 1Destination Zone 2Row Total Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (85)Normalizing Factor Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (86)
Trips Destined1020
11510.314.6915.001.00
2150.8014.2015.001.00
Column Total11.1018.90
Normalizing Factor = Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (87)0.901.06

...

Balancing Iteration 16 (Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (88))
Origin ZoneTrips OriginatingDestination Zone 1Destination Zone 2Row Total Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (89)Normalizing Factor Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (90)
Trips Destined1020
1159.395.6115.001.00
2150.6214.3815.001.00
Column Total10.0119.99
Normalizing Factor = Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (91)1.001.00

So while the matrix is not strictly balanced, it is very close, well within a 1% threshold, after 16 iterations. The threshold refers to the proximity of the normalizing factor to 1.0.

Additional Questions

[edit | edit source]

  • Homework
  • Additional Questions

Variables

[edit | edit source]

  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (92) - Trips leaving origin Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (93)
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (94) - Trips arriving at destination Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (95)
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (96) - Effective Trips arriving at destination Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (97), computed as a result for calibration to the next iteration
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (98) - Total number of trips between origin Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (99) and destination Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (100)
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (101) - Calibration parameter for Origins
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (102) - Calibration parameter for Destinations
  • Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (103) - Cost function between origin Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (104) and destination Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (105)

Further reading

[edit | edit source]

Videos

[edit | edit source]

References

[edit | edit source]

Fundamentals of Transportation/Destination Choice - Wikibooks, open books for an open world (2024)

FAQs

What is the fratar model? ›

The growth factor (Fratar) model is frequently used for distributing external (through) trips for producing incremental updates of trip tables when full application of the trip distribution model is not warranted.

What is the logit model of transport? ›

The most common form of the mode choice model is the logit model. The logit mode choice relationship states that the probability of choosing a particular mode for a given trip is based on the relative values of a number of factors such as cost, level of service, and travel time.

What is the gravity model in transportation? ›

Gravity model is used in transportation planning process for trip distribution. The gravity model assumes that the trips produced at an origin and attracted to a destination are directly proportional to the total trip productions at the origin and the total attractions at the destination.

What is the furness method of trip distribution? ›

The Furness method provides a systematic approach to optimizing the distribution of trips, taking into account the growth rates and balancing factors associated with each zone.

What is the difference between logit and probit? ›

The logit model assumes a logistic distribution of errors, and the probit model assumes a normal distributed errors.

Why is it called a logit? ›

The unit of measurement for the log-odds scale is called a logit, from logistic unit, hence the alternative names.

What is the mode choice model of transportation? ›

Mode choice models are used to analyze and predict the choices of individuals or groups in selecting transportation modes for types of trips. The goal of the model is to predict the shares, or the absolute number of trips, made by each mode.

How do you calculate the gravity model example? ›

This can help scientists predict the movement of people and goods, among other things. Gravity model examples have been calculated using the formula S = P 1 x P 2 / D 2 , where P 1 and P 2 are the populations of two regions, and D, the distance between the two regions, squared.

What are the three basic methods used in trip distribution? ›

Several basic methods are used for trip distribution, among these are: The gravity Model, Growth factor models, and intervening opportunities.

What is an example of a trip generation model? ›

Example: A trip from office to Shopping Mall. The proportion of journey is different by different purposes usually varies with time of the day. Thus the classification is often given as Peak and Off Peak Period Trip. The travel behaviour of an individual is mainly dependent on its Socio- Economic attributes.

What is the difference between gravity model and growth factor model? ›

Growth factor model is a method which respond only to relative growth rates at origins and destinations and this is suitable for short-term trend extrapolation. In gravity model, we start from assumptions about trip making behavior and the way it is influenced by external factors.

Top Articles
Latest Posts
Article information

Author: Stevie Stamm

Last Updated:

Views: 5684

Rating: 5 / 5 (60 voted)

Reviews: 91% of readers found this page helpful

Author information

Name: Stevie Stamm

Birthday: 1996-06-22

Address: Apt. 419 4200 Sipes Estate, East Delmerview, WY 05617

Phone: +342332224300

Job: Future Advertising Analyst

Hobby: Leather crafting, Puzzles, Leather crafting, scrapbook, Urban exploration, Cabaret, Skateboarding

Introduction: My name is Stevie Stamm, I am a colorful, sparkling, splendid, vast, open, hilarious, tender person who loves writing and wants to share my knowledge and understanding with you.