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== I will continue to go on to create a perfect ==
'''Trip distribution''' (or '''destination choice''' or '''zonal interchange analysis'''), is the second component (after [[trip generation]], but before [[mode choice]] and [[route assignment]]) 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, this component has been the least developed component of the [[transportation planning model]].


'Citizen Change' In the beginning, that is scattered [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_11.php クリスチャンルブタン ブーツ] into gas spread to the pubic region of the heart to the body as a bridge of communication universe and original mind to absorb the force of the universe [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_2.php クリスチャンルブタン バッグ] of the stars ......<br><br>'Well, Ray Guardian Master,' Citizen Change [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_7.php クリスチャンルブタン 激安] 'I will practice continues, even to the [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_11.php クリスチャンルブタン ブーツ] last chapter of stars Gong practitioners did not complete, I will continue to go on to create a perfect, even if I fail, I will have a successor to continue to practice, from generation to generation, a generation will eventually completely successful. '<br><br>Qin Yu eyes light flash, hands clasped it is this 'Citizen Change' books.<br><br>repair this 'Citizen Change', there must be the creation [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_11.php クリスチャンルブタン ブーツ] fails, obsessed consciousness and died. But Qin Yu will fear it? Timidity, fear of death, and that was Qin Yu Why? Close to death, but a kind of excitement Qin Yu passionate feeling, so that life is full of passion, is the perfect life without regret.<br><br>Chapter II tragedy in advance?<br><br>'big a storage room.' Qin Yu opened the 'Thunder Mountain' on the first floor of the storage room door, and martial arts hall the size of the area to Qin Yu surprised
{| border="1" cellpadding="5" cellspacing="0" align="center"
相关的主题文章:
|+''Table: Illustrative trip table''
<ul>
! Origin \ Destination
 
!1
  <li>[http://www.apiconsult.com/cgi-bin/guestbook.cgi http://www.apiconsult.com/cgi-bin/guestbook.cgi]</li>
!2
 
!3
  <li>[http://bbs.g361.com/home.php?mod=space&uid=52167 http://bbs.g361.com/home.php?mod=space&uid=52167]</li>
!Z
 
|-
  <li>[http://www.bzinfo.org/plus/feedback.php?aid=11 http://www.bzinfo.org/plus/feedback.php?aid=11]</li>
|1
 
|''T''<sub>11</sub>
</ul>
|''T''<sub>12</sub>
|T<sub>13</sub>
|T<sub>1Z</sub>
|-
|2
|''T''<sub>21</sub>
|
|
|
|-
|3
|''T''<sub>31</sub>
|
|
|
|-
|Z
|''T''<sub>Z1</sub>
|
|
|''T''<sub>ZZ</sub>
|-
|}


== what do ground. 'Qin Yu shot naked eyes. ==
Where: ''T''<sub>&nbsp;''ij''</sub> = trips from origin ''i'' to destination ''j''.  Note that the practical value of trips on the diagonal, e.g. from zone 1 to zone 1, is zero since no inter-zonal trip occurs.
 
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.


Emotionally. '<br><br>Qin Yu nodded slightly.<br><br>'to become a master of the mixing device is also very difficult to, but the more difficulty I have more energy. then I can not practice internal strength of an even ground kid, are able to come to this step now, what do ground. 'Qin [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_3.php クリスチャンルブタン 靴] Yu shot naked eyes.<br><br>Hou Fei, black feathers, Qin Yu looked at the Blue House.<br><br>'To become a master of mixing device, and [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_14.php クリスチャンルブタン アウトレット] most importantly, is the tactical deployment ban, well ...... in this mine for a thousand years, I will retreat in the second layer Jiang Lan sector space' Front Road. 'the outside world for a thousand years This second layer of space I will have a [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_11.php クリスチャンルブタン 日本] hundred thousand years time. 'Qin Yu said.<br><br>'Forber.' Qin Yu look to Fu Bo, 'you where there are no low-grade element began, a millennium year 3600 to pay [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_12.php クリスチャンルブタンジャパン] low-grade [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_1.php クリスチャンルブタン 靴 メンズ] rock gods, you help me pay dig.'<br><br>Forber hesitated: '? beneath contempt beneath contempt?'<br><br>Forber even said it twice.<br><br>'how?' Qin Yu Fu Bo looked puzzled, 'Is Temple fans did not?'
== History ==
相关的主题文章:
<ul>
 
  <li>[http://sdsdzyy.com/plus/feedback.php?aid=695 http://sdsdzyy.com/plus/feedback.php?aid=695]</li>
 
  <li>[http://www.scriptsearch.com/cgi-bin/jump.cgi http://www.scriptsearch.com/cgi-bin/jump.cgi]</li>
 
  <li>[http://www.leonard-gearbox.com/plus/feedback.php?aid=301 http://www.leonard-gearbox.com/plus/feedback.php?aid=301]</li>
 
</ul>


== black dagger extremely sharp ==
Over the years, modelers have used several different formulations of trip distribution. The first was the Fratar or Growth model (which did not differentiate trips by purpose). This structure extrapolated a base year trip table to the future based on growth, but took no account of changing spatial accessibility due to increased supply or changes in travel patterns and congestion. (Simple Growth factor model, Furness Model and Detroit model are models developed at the same time period)


Distance refers Mans shooting, Qin Yu did [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_4.php クリスチャンルブタン セール] not dodge open.<br><br>Zhen Xu tempting [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_5.php クリスチャンルブタン 店舗] excited again, he seems to see his head was shot Qin Yu scene of the explosion.<br><br>Qin Yu eyes suddenly light - spiritual goods is 'Yan Chi Sword'!<br><br>'Phew!'<br><br>'ah!' Zhen Xu scream.<br><br>Qin Yu had deadlocked over the right to live suddenly appeared a black dagger, black dagger [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_1.php クリスチャンルブタン 靴 メンズ] extremely sharp, even a severed left hand Zhen Xu, Xu Zhen's throat and then towards amputated, so close, no time to dodge, Zhen Xu loud [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_8.php クリスチャンルブタン スニーカー] shout, fight back [http://www.lamartcorp.com/modules/mod_menu/rakuten_cl_6.php クリスチャンルブタン 中古] pain palm was cut, the body suddenly intense body care Gangqi up.<br><br>'Dead!' Zhen Xu eyes flashed a Lise.<br><br>Zhen Xu know too late to dodge, can only hope his body care Gang Qi, Xu Zhen hearts while angry, golden claw on the blood of the soul refers Mans increasingly hot up, but suddenly shot, you want to shoot burst Qin Yu head. So sharp golden mean Mans, Qin Yu's head naturally can not resist.
The next models developed were the gravity model  and the intervening opportunities model. The most widely used formulation is still the gravity model.
相关的主题文章:
 
  <ul>
While studying traffic in [[Baltimore, Maryland]],  [[Alan Voorhees]] developed a mathematical formula to predict traffic patterns based on land use. This formula has been instrumental in the design of numerous transportation and public works projects around the world. He wrote "A General Theory of Traffic Movement," (Voorhees, 1956) which applied the gravity model to trip distribution, which translates [[trip generation|trips generated]] in an area to a matrix that identifies the number of trips from each origin to each destination, which can then be loaded onto the network.
 
 
  <li>[http://ldsbee.com/index.php?page=item&id=2483294 http://ldsbee.com/index.php?page=item&id=2483294]</li>
Evaluation of several model forms in the 1960s concluded that "the gravity model and intervening opportunity model proved of about equal reliability and utility in simulating the 1948 and 1955 trip distribution for Washington, D.C." (Heanue and Pyers 1966). The Fratar model was shown to have weakness in areas experiencing land use changes. As comparisons between the models showed that either could be calibrated equally well to match observed conditions, because of computational ease, gravity models became more widely spread than intervening opportunities models. Some theoretical problems with the intervening opportunities model were discussed by Whitaker and West (1968) concerning its inability to account for all trips generated in a zone which makes it more difficult to calibrate, although techniques for dealing with the limitations have been developed by Ruiter (1967).
 
 
  <li>[http://www.epeop.cn/plus/view.php?aid=204043 http://www.epeop.cn/plus/view.php?aid=204043]</li>
With the development of [[logit]] and other discrete choice techniques, new, demographically disaggregate approaches to travel demand were attempted. By including variables other than travel time in determining the probability of making a trip, it is expected to have a better prediction of travel behavior. The [[Logistic regression|logit model]] and gravity model have been shown by Wilson (1967) to be of essentially the same form as used in statistical mechanics, the entropy maximization model. The application of these models differs in concept in that the gravity model uses impedance by travel time, perhaps stratified by socioeconomic variables, in determining the probability of trip making, while a discrete choice approach brings those variables inside the utility or impedance function. Discrete choice models require more information to estimate and more computational time.
    
 
  <li>[http://top100test.zhongsou.net/ymqshopbbs/forum.php?mod=viewthread&tid=2899640 http://top100test.zhongsou.net/ymqshopbbs/forum.php?mod=viewthread&tid=2899640]</li>
Ben-Akiva and Lerman (1985) have developed combination destination choice and [[transport mode|mode]] choice models using a logit formulation for work and non-work trips.  Because of computational intensity, these formulations tended to aggregate traffic zones into larger districts or rings in estimation.  In current application, some models, including for instance the transportation planning model used in Portland, Oregon, use a logit formulation for destination choice. Allen (1984) used utilities from a logit based mode choice model in determining composite impedance for trip distribution.  However, that approach, using mode choice log-sums implies that destination choice depends on the same variables  as mode choice.  Levinson and Kumar (1995) employ mode choice probabilities as a weighting factor and develop a specific impedance function or “f-curve” for each mode for work and non-work trip purposes.
 
 
</ul>
== Mathematics ==
 
At this point in the transportation planning process, the information for zonal interchange analysis is organized in an origin-destination table.  On the left is listed trips produced in each zone.  Along the top are listed the zones, and for each zone we list its attraction.  The table is ''n'' x ''n'', where ''n'' = the number of zones. 
 
Each cell in our table is to contain the number of trips from zone ''i'' to zone ''j''.  We do not have these within-cell numbers yet, although we have the row and column totals.  With data organized this way, our task is to fill in the cells for tables headed ''t''&nbsp;=&nbsp;1 through say ''t''&nbsp;=&nbsp;''n''.
 
Actually, from home interview travel survey data and attraction analysis we have the cell information for ''t''&nbsp;=&nbsp;1.  The data are a sample, so we generalize the sample to the universe.  The techniques used for zonal interchange analysis explore the empirical rule that fits the ''t'' = 1 data.  That rule is then used to generate cell data for ''t'' = 2, ''t'' = 3, ''t'' = 4, etc., to ''t'' = ''n''.
 
The first technique developed to model zonal interchange involves a model such as this:
 
: <math>
T_{ij}  = T_i\frac{{A_j f\left( {C_{ij} } \right)K_{ij} }}
{{\sum_{j = 1}^n {A_j f\left( {C_{ij} } \right)K_{ij} } }}
</math>
 
where:
* <math>T_{ij}</math> : trips from i to j.
* <math>T_i</math> : trips from i, as per our generation analysis
* <math>A_j</math> : trips attracted to  j, as per our generation analysis
* <math>f(C_{ij})</math> : [[travel cost friction]] factor, say = <math>C_{ij}^b</math>
* <math>K_{ij}</math> : Calibration parameter
Zone ''i'' generates ''T''<sub>&nbsp;''i''</sub> trips; how many will go to zone ''j''?  That depends on the attractiveness of ''j'' compared to the attractiveness of all places;  attractiveness is tempered by the distance a zone is from zone ''i''. We compute the fraction comparing ''j'' to all places and multiply ''T''<sub>&nbsp;;''i''</sub> by it.
 
The rule is often of a gravity form:
 
: <math>
T_{ij}  = a\frac{{P_i P_j }}
{{C_{ij}^b }}
</math>
 
where:
* <math>P_i; P_j</math> : populations of  ''i''  and  ''j''
* <math>a; b</math> :  parameters
 
But in the zonal interchange mode, we use numbers related to trip origins (''T''<sub>&nbsp;;''i''</sub>) and trip destinations (''T''<sub>&nbsp;;''j''</sub>) rather than populations.
 
There are lots of model forms because we may use weights and special calibration parameters, e.g., one could write say:
 
: <math>
T_{ij}  = a\frac{{T_i^c T_j^d }}
{{C_{ij}^b }}
</math>
 
or
 
: <math>
T_{ij}  = \frac{{cT_i dT_j }}
{{C_{ij}^b }}
</math>
 
where:
* ''a, b, c, d'' are parameters
* <math>C_{ij}</math> : travel cost (e.g. distance, money, time)
* <math>T_j</math> : inbound trips, destinations
* <math>T_i</math> : outbound trips, origin
 
== Gravity model ==
 
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 1/distance 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 vehicle ownership.
 
Mathematically, the gravity model often takes the form:
 
: <math>
T_{ij}  = K_i K_j T_i T_j f(C_{ij} )
</math>
 
: <math>
\sum_j {T_{ij}  = T_i } ,\sum_i {T_{ij}  = T_j }
</math>
 
: <math>
K_i  = \frac{1}
{{\sum_j {K_j T_j f(C_{ij} )} }},K_j  = \frac{1}
{{\sum_i {K_i T_i f(C_{ij} )} }}
</math>
 
where
* <math>T_{ij}</math> = Trips between origin ''i'' and destination ''j''
* <math>T_i</math> = Trips originating at ''i''
* <math>T_j</math> = Trips destined for ''j''
* <math>C_{ij}</math> = travel cost between ''i'' and ''j''
* <math>K_i, K_j</math> = balancing factors solved iteratively. See [[Iterative proportional fitting]].
* <math>f</math> = distance decay factor, as in the accessibility model
 
It is doubly constrained so that Trips from ''i'' to ''j'' equal number of origins and destinations:
 
== Entropy analysis ==
 
Wilson (1970) gives us another way to think about zonal interchange problem.  This section treats Wilson’s methodology to give a grasp of central ideas.
 
To start, consider some trips where we have seven people in origin zones commuting to seven jobs in destination zones.  One configuration of such trips will be:
 
{| border="1" cellpadding="5" cellspacing="0" align="center"
|+'''Table: Configuration of trips'''
!zone
!1
!2
!3
|-
|1
|2
|1
|1
|-
|2
|0
|2
|1
|-
|}
 
: <math>
w\left( {T_{ij} } \right) = \frac{{7!}}
{{2!1!1!0!2!1!}} = 1260
</math>
 
where 0!&nbsp;=&nbsp;1.
 
That configuration can appear in 1,260 ways.  We have calculated the number of ways that configuration of trips might have occurred, and to explain the calculation, let’s recall those coin tossing experiments talked about so much in elementary statistics.
 
The number of ways a two-sided coin can come up is <math>2^n</math>, where n is the number of times we toss the coin.  If we toss the coin once, it can come up heads or tails, <math>2^1 = 2</math>. If we toss it twice, it can come up  HH, HT, TH, or TT, 4 ways, and  <math>2^2 = 4</math>. To ask the specific question about, say, four coins coming up all heads, we calculate  <math>4!/(4!0!) = 1</math> .  Two heads and two tails would be <math>4!/(2!2!) = 6</math>. We are solving the equation:
 
: <math>
w = \frac{{n!}}
{{\prod_{i = 1}^n {n_i !} }}
</math>
 
An important point is that as ''n'' gets larger, our distribution gets more and more peaked, and it is more and more reasonable to think of a most likely state.
 
However, the notion of most likely state comes not from this thinking; it comes from statistical mechanics, a field well known to Wilson and not so well known to transportation planners.  The result from statistical mechanics is that a descending series is most likely.  Think about the way the energy from lights in the classroom is affecting the air in the classroom.  If the effect resulted in an ascending series, many of the atoms and molecules would be affected a lot and a few would be affected a little.  The descending series would have a lot affected not at all or not much and only a few affected very much.  We could take a given level of energy and compute excitation levels in ascending and descending series.  Using the formula above, we would compute the ways particular series could occur, and we would concluded that descending series dominate.
 
That is more-or-less [[Boltzmann's Law]],
 
: <math>
p_j  = p_0 e^{\beta e_j }
</math>
 
That is, the particles at any particular excitation level ''j'' will be a negative exponential function of the particles in the ground state, ''p''<sub>&nbsp;0</sub>, the excitation level, ''e''<sub>&nbsp;''j''</sub>, and a parameter <math>beta</math>, which is a function of the (average) energy available to the particles in the system.
 
The two paragraphs above have to do with ensemble methods of calculation developed by Gibbs, a topic well beyond the reach of these notes.
 
Returning to our O-D matrix, note that we have not used as much information as we would have from an O and D survey and from our earlier work on trip generation.  For the same travel pattern in the O-D matrix used before, we would have row and column totals, i.e.:
{| border="1" cellpadding="5" cellspacing="0" align="center"
|+'''Table: Illustrative O-D Matrix with row and column totals'''
!
!zone
!1
!2
!3
|-
|zone
|''T<sub>i</sub> \T<sub>j</sub>''
|2
|3
|2
|-
|1
|4
|2
|1
|1
|-
|2
|3
|0
|2
|1
|-
|}
 
Consider the way the four folks might travel, 4!/(2!1!1!) = 12; consider three folks, 3!/(0!2!1!) = 3. All travel can be combined in 12*3 = 36 ways.  The possible configuration of trips is, thus, seen to be much constrained by the column and row totals.
 
We put this point together with the earlier work with our matrix and the notion of most likely state to say that we want to
 
: <math>
\max w\left( {T_{ij} } \right) = \frac{{T!}}
{{\prod_{ij} {Tij!} }}
</math>
 
subject to
 
: <math>
\sum_j {T_{ij}  = T_i } ;
\sum_i {T_{ij}  = T_j } 
</math>
 
where:
 
: <math>
T = \sum_j {\sum_i {T_{ij} } }  = \sum_i {T_i }  = \sum_j {T_j }
</math>
 
and this is the problem that we have solved above.
 
Wilson adds another consideration; he constrains the system to the amount of energy available (i.e., money), and we have the additional constraint,
 
: <math>
\sum_i {\sum_j {T_{ij} C_{ij}  = C} }
</math>
 
where ''C'' is the quantity of resources available and <math>C_{ij}</math> is the travel cost from ''i'' to ''j''.
 
The discussion thus far contains the central ideas in Wilson’s work, but we are not yet to the place where the reader will recognize the model as it is formulated by Wilson.
 
First, writing the <math>\Lambda</math> function to be maximized using [[Lagrangian multipliers]], we have:
 
: <math>
\Lambda(T_{ij},\lambda_i,\lambda_j) = \frac{{T!}}
{{\prod_{ij} {Tij!} }} + \sum_i {\lambda _i \left( {T_i  - \sum_j {T_{ij} } } \right)}  + \sum_j {\lambda _j \left( {T_j  - \sum_i {T_{ij} } } \right) + \beta \left( {C - \sum_i {\sum_j {T_{ij} C_{ij} } } } \right)}
</math>
 
where  <math>\lambda_i, \lambda_j, and \beta</math> are the Lagrange multipliers, <math>\beta</math> having an energy sense.
 
Second, it is convenient to maximize the natural log (ln) rather than  w(Tij), for then we may use [[Stirling's approximation]].
 
: <math>
\ln N! \approx N\ln N - N
</math>
 
so
 
: <math>
\frac{{\partial \ln N!}}
{{\partial N}} \approx \ln N
</math>
 
Third, evaluating the maximum, we have
 
: <math>
\frac{{\partial \Lambda(T_{ij},\lambda_i,\lambda_j) }}
{{\partial T_{ij} }} =  - \ln T_{ij} - \lambda _i  - \lambda _j  - \beta C_{ij}  = 0
</math>
 
with solution
 
: <math>
\ln T_{ij}  =  - \lambda _i  - \lambda _j  - \beta C_{ij}
</math>
 
: <math>
T_{ij}  = e^{ - \lambda _i  - \lambda _j  - \beta C_{ij} }
</math>
 
Finally, substituting this value of <math>T_ij</math>  back into our constraint equations, we have:
 
: <math>
\sum_j {e^{ - \lambda _i  - \lambda _j  - \beta C_{ij} } }  = T_i;
\sum_i {e^{ - \lambda _i  - \lambda _j  - \beta C_{ij} } }  = T_j
</math>
 
and, taking the constant multiples outside of the summation sign
 
: <math>
e^{ - \lambda _i }  = \frac{{T_i }}
{{\sum_j {e^{ - \lambda _j  - \beta C_{ij} } } }};e^{ - \lambda _j }  = \frac{{T_j }}
{{\sum_i {e^{ - \lambda _i  - \beta C_{ij} } } }}
</math>
 
Let
 
: <math>
\frac{{e^{ - \lambda _i } }}
{{T_i }} = A_i ;\frac{{e^{ - \lambda _j } }}
{{T_j }} = B_j
</math>
 
we have
 
: <math>
T_{ij}  = A_i B_j T_i T_j e^{ - \beta C_{ij} }
</math>
 
which says that the most probable distribution of trips has a gravity model form, <math>T_{ij}</math> is proportional to trip origins and destinations. ''A''<sub>&nbsp;''i''</sub>, ''B''<sub>&nbsp;''j''</sub>, and <math>\beta</math> ensure constraints are met.
 
Turning now to computation, we have a large problem. First, we do not know the value of ''C'', which earlier on we said had to do with the money available, it was a cost constraint. Consequently, we have to set <math>\beta</math> to different values and then find the best set of values for <math>A_i</math> and <math>B_j</math>. We know what <math>\beta</math> means – the greater the value of <math>\beta</math>, the less the cost of average distance traveled. (Compare <math>\beta</math> in Boltzmann's Law noted earlier.)  Second, the values of <math>A_i</math> and <math>B_j</math> depend on each other. So for each value of <math>\beta</math>, we must use an iterative solution.  There are computer programs to do this.
 
Wilson's method has been applied to the [[Lowry model]].
 
== Issues ==
 
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). 
 
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]].
 
== References ==
 
* Allen, B. 1984 Trip Distribution Using Composite Impedance Transportation Research Record 944 pp.&nbsp;118&ndash;127
* Barnes, G. and Davis, G. 2000. Understanding Urban Travel Demand: Problems, Solutions, and the Role of Forecasting, University of Minnesota Center for Transportation Studies: Transportation and Regional Growth Study
* Ben-Akiva M. and Lerman S. 1985  Discrete Choice Analysis, MIT Press, Cambridge MA
* Boyce, D., Lupa, M. and Zhang, Y.F. 1994 Introducing “Feedback” into the Four-Step Travel Forecasting Procedure vs. the Equilibrium Solution of a Combined Model presented at 73rd Annual Meeting of Transportation Research Board
* Evans, Suzanne P. 1976 . Derivation and Analysis of Some Models for Combining Trip Distribution and Assignment. Transportation Research, Vol. 10, PP 37&ndash;57 1976
* Florian M., Nguyen S., and Ferland J. 1975 On the Combined Distribution-Assignment of Traffic", Transportation Science, Vol. 9, pp.&nbsp;43&ndash;53, 1975
* Haney, D. 1972 Consistency in Transportation Demand and Evaluation Models, Highway Research Record 392, pp.&nbsp;13&ndash;25 1972
* Hansen, W. G. 1959. How accessibility shapes land use. [[Journal of the American Institute of Planners]], 25(2), 73&ndash;76.
* Heanue, Kevin E. and Pyers, Clyde E. 1966. A Comparative Evaluation of Trip Distribution Procedures,
* Levinson, D. and A. Kumar 1994 The Rational Locator: Why Travel Times Have Remained Stable, Journal of the American Planning Association, 60:3 319&ndash;332
* Levinson, D. and Kumar A. 1995. A Multi-modal Trip Distribution Model.  Transportation Research Record #1466: 124&ndash;131.
* Portland MPO Report to Federal Transit Administration on Transit Modeling
* Reilly, W.J. (1929) “Methods for the Study of Retail Relationships” University of Texas  Bulletin No 2944, Nov. 1929.
* Reilly, W.J., 1931. The Law of Retail Gravitation, New York.
* Ruiter, E. 1967 Improvements in Understanding, Calibrating, and Applying the Opportunity Model Highway Research Record No. 165 pp.&nbsp;1&ndash;21
* Stewart, J.Q. (1948) “Demographic Gravitation: Evidence and Application” Sociometry  Vol. XI Feb.&ndash;May 1948 pp 31&ndash;58.
* Stewart, J.Q., 1947. Empirical Mathematical Rules Concerning the Distribution and Equilibrium of Population, Geographical Review, Vol 37, 461&ndash;486.
*Stewart, J.Q., 1950. Potential of Population and its Relationship to Marketing. In: Theory in Marketing, R. Cox and W. Alderson (Eds) ( Richard D. Irwin, Inc., Homewood, Illinois).
* Stewart, J.Q., 1950. The Development of Social Physics, American Journal of Physics, Vol 18, 239&ndash;253
* Voorhees, Alan M., 1956, "A General Theory of Traffic Movement," 1955 Proceedings, Institute of Traffic Engineers, New Haven, Connecticut.
* Whitaker, R. and K. West 1968 The Intervening Opportunities Model: A Theoretical Consideration Highway Research Record 250 pp.&nbsp;1&ndash;7
* Wilson, A.G. A Statistical Theory of Spatial Distribution Models Transportation Research, Volume 1, pp.&nbsp;253&ndash;269 1967
* Wohl, M. 1963 Demand, Cost, Price and Capacity Relationships Applied to Travel Forecasting. Highway Research Record 38:40&ndash;54
* [[Zipf, G. K.]], 1946. The Hypothesis on the Intercity Movement of Persons. American
Sociological Review, vol. 11, Oct
* Zipf, G. K., 1949. Human Behaviour and the Principle of Least Effort. Massachusetts
 
== External links ==
* [http://www.atsl.cee.vt.edu/tsam.htm Transportation Systems Analysis Model] &mdash; TSAM is a nationwide transportation planning model to forecast intercity travel behavior in the United States.
 
* [http://tdsi.gov.vn Transport modeller in viet nam]
 
{{Transportation-planning}}
 
[[Category:Transportation planning]]

Revision as of 15:39, 28 January 2014

Trip distribution (or destination choice or zonal interchange analysis), is the second component (after trip generation, but before mode choice and route assignment) 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, this component has been the least developed component of the transportation planning model.

Table: Illustrative trip table
Origin \ Destination 1 2 3 Z
1 T11 T12 T13 T1Z
2 T21
3 T31
Z TZ1 TZZ

Where: T ij = trips from origin i to destination j. Note that the practical value of trips on the diagonal, e.g. from zone 1 to zone 1, is zero since no inter-zonal trip occurs.

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.

History

Over the years, modelers have used several different formulations of trip distribution. The first was the Fratar or Growth model (which did not differentiate trips by purpose). This structure extrapolated a base year trip table to the future based on growth, but took no account of changing spatial accessibility due to increased supply or changes in travel patterns and congestion. (Simple Growth factor model, Furness Model and Detroit model are models developed at the same time period)

The next models developed were the gravity model and the intervening opportunities model. The most widely used formulation is still the gravity model.

While studying traffic in Baltimore, Maryland, Alan Voorhees developed a mathematical formula to predict traffic patterns based on land use. This formula has been instrumental in the design of numerous transportation and public works projects around the world. He wrote "A General Theory of Traffic Movement," (Voorhees, 1956) which applied the gravity model to trip distribution, which translates trips generated in an area to a matrix that identifies the number of trips from each origin to each destination, which can then be loaded onto the network.

Evaluation of several model forms in the 1960s concluded that "the gravity model and intervening opportunity model proved of about equal reliability and utility in simulating the 1948 and 1955 trip distribution for Washington, D.C." (Heanue and Pyers 1966). The Fratar model was shown to have weakness in areas experiencing land use changes. As comparisons between the models showed that either could be calibrated equally well to match observed conditions, because of computational ease, gravity models became more widely spread than intervening opportunities models. Some theoretical problems with the intervening opportunities model were discussed by Whitaker and West (1968) concerning its inability to account for all trips generated in a zone which makes it more difficult to calibrate, although techniques for dealing with the limitations have been developed by Ruiter (1967).

With the development of logit and other discrete choice techniques, new, demographically disaggregate approaches to travel demand were attempted. By including variables other than travel time in determining the probability of making a trip, it is expected to have a better prediction of travel behavior. The logit model and gravity model have been shown by Wilson (1967) to be of essentially the same form as used in statistical mechanics, the entropy maximization model. The application of these models differs in concept in that the gravity model uses impedance by travel time, perhaps stratified by socioeconomic variables, in determining the probability of trip making, while a discrete choice approach brings those variables inside the utility or impedance function. Discrete choice models require more information to estimate and more computational time.

Ben-Akiva and Lerman (1985) have developed combination destination choice and mode choice models using a logit formulation for work and non-work trips. Because of computational intensity, these formulations tended to aggregate traffic zones into larger districts or rings in estimation. In current application, some models, including for instance the transportation planning model used in Portland, Oregon, use a logit formulation for destination choice. Allen (1984) used utilities from a logit based mode choice model in determining composite impedance for trip distribution. However, that approach, using mode choice log-sums implies that destination choice depends on the same variables as mode choice. Levinson and Kumar (1995) employ mode choice probabilities as a weighting factor and develop a specific impedance function or “f-curve” for each mode for work and non-work trip purposes.

Mathematics

At this point in the transportation planning process, the information for zonal interchange analysis is organized in an origin-destination table. On the left is listed trips produced in each zone. Along the top are listed the zones, and for each zone we list its attraction. The table is n x n, where n = the number of zones.

Each cell in our table is to contain the number of trips from zone i to zone j. We do not have these within-cell numbers yet, although we have the row and column totals. With data organized this way, our task is to fill in the cells for tables headed t = 1 through say t = n.

Actually, from home interview travel survey data and attraction analysis we have the cell information for t = 1. The data are a sample, so we generalize the sample to the universe. The techniques used for zonal interchange analysis explore the empirical rule that fits the t = 1 data. That rule is then used to generate cell data for t = 2, t = 3, t = 4, etc., to t = n.

The first technique developed to model zonal interchange involves a model such as this:

Tij=TiAjf(Cij)Kijj=1nAjf(Cij)Kij

where:

  • Tij : trips from i to j.
  • Ti : trips from i, as per our generation analysis
  • Aj : trips attracted to j, as per our generation analysis
  • f(Cij) : travel cost friction factor, say = Cijb
  • Kij : Calibration parameter

Zone i generates T i trips; how many will go to zone j? That depends on the attractiveness of j compared to the attractiveness of all places; attractiveness is tempered by the distance a zone is from zone i. We compute the fraction comparing j to all places and multiply T ;i by it.

The rule is often of a gravity form:

Tij=aPiPjCijb

where:

  • Pi;Pj : populations of i and j
  • a;b : parameters

But in the zonal interchange mode, we use numbers related to trip origins (T ;i) and trip destinations (T ;j) rather than populations.

There are lots of model forms because we may use weights and special calibration parameters, e.g., one could write say:

Tij=aTicTjdCijb

or

Tij=cTidTjCijb

where:

  • a, b, c, d are parameters
  • Cij : travel cost (e.g. distance, money, time)
  • Tj : inbound trips, destinations
  • Ti : outbound trips, origin

Gravity model

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 1/distance 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 vehicle ownership.

Mathematically, the gravity model often takes the form:

Tij=KiKjTiTjf(Cij)
jTij=Ti,iTij=Tj
Ki=1jKjTjf(Cij),Kj=1iKiTif(Cij)

where

  • Tij = Trips between origin i and destination j
  • Ti = Trips originating at i
  • Tj = Trips destined for j
  • Cij = travel cost between i and j
  • Ki,Kj = balancing factors solved iteratively. See Iterative proportional fitting.
  • f = distance decay factor, as in the accessibility model

It is doubly constrained so that Trips from i to j equal number of origins and destinations:

Entropy analysis

Wilson (1970) gives us another way to think about zonal interchange problem. This section treats Wilson’s methodology to give a grasp of central ideas.

To start, consider some trips where we have seven people in origin zones commuting to seven jobs in destination zones. One configuration of such trips will be:

Table: Configuration of trips
zone 1 2 3
1 2 1 1
2 0 2 1
w(Tij)=7!2!1!1!0!2!1!=1260

where 0! = 1.

That configuration can appear in 1,260 ways. We have calculated the number of ways that configuration of trips might have occurred, and to explain the calculation, let’s recall those coin tossing experiments talked about so much in elementary statistics.

The number of ways a two-sided coin can come up is 2n, where n is the number of times we toss the coin. If we toss the coin once, it can come up heads or tails, 21=2. If we toss it twice, it can come up HH, HT, TH, or TT, 4 ways, and 22=4. To ask the specific question about, say, four coins coming up all heads, we calculate 4!/(4!0!)=1 . Two heads and two tails would be 4!/(2!2!)=6. We are solving the equation:

w=n!i=1nni!

An important point is that as n gets larger, our distribution gets more and more peaked, and it is more and more reasonable to think of a most likely state.

However, the notion of most likely state comes not from this thinking; it comes from statistical mechanics, a field well known to Wilson and not so well known to transportation planners. The result from statistical mechanics is that a descending series is most likely. Think about the way the energy from lights in the classroom is affecting the air in the classroom. If the effect resulted in an ascending series, many of the atoms and molecules would be affected a lot and a few would be affected a little. The descending series would have a lot affected not at all or not much and only a few affected very much. We could take a given level of energy and compute excitation levels in ascending and descending series. Using the formula above, we would compute the ways particular series could occur, and we would concluded that descending series dominate.

That is more-or-less Boltzmann's Law,

pj=p0eβej

That is, the particles at any particular excitation level j will be a negative exponential function of the particles in the ground state, p 0, the excitation level, e j, and a parameter beta, which is a function of the (average) energy available to the particles in the system.

The two paragraphs above have to do with ensemble methods of calculation developed by Gibbs, a topic well beyond the reach of these notes.

Returning to our O-D matrix, note that we have not used as much information as we would have from an O and D survey and from our earlier work on trip generation. For the same travel pattern in the O-D matrix used before, we would have row and column totals, i.e.:

Table: Illustrative O-D Matrix with row and column totals
zone 1 2 3
zone Ti \Tj 2 3 2
1 4 2 1 1
2 3 0 2 1

Consider the way the four folks might travel, 4!/(2!1!1!) = 12; consider three folks, 3!/(0!2!1!) = 3. All travel can be combined in 12*3 = 36 ways. The possible configuration of trips is, thus, seen to be much constrained by the column and row totals.

We put this point together with the earlier work with our matrix and the notion of most likely state to say that we want to

maxw(Tij)=T!ijTij!

subject to

jTij=Ti;iTij=Tj

where:

T=jiTij=iTi=jTj

and this is the problem that we have solved above.

Wilson adds another consideration; he constrains the system to the amount of energy available (i.e., money), and we have the additional constraint,

ijTijCij=C

where C is the quantity of resources available and Cij is the travel cost from i to j.

The discussion thus far contains the central ideas in Wilson’s work, but we are not yet to the place where the reader will recognize the model as it is formulated by Wilson.

First, writing the Λ function to be maximized using Lagrangian multipliers, we have:

Λ(Tij,λi,λj)=T!ijTij!+iλi(TijTij)+jλj(TjiTij)+β(CijTijCij)

where λi,λj,andβ are the Lagrange multipliers, β having an energy sense.

Second, it is convenient to maximize the natural log (ln) rather than w(Tij), for then we may use Stirling's approximation.

lnN!NlnNN

so

lnN!NlnN

Third, evaluating the maximum, we have

Λ(Tij,λi,λj)Tij=lnTijλiλjβCij=0

with solution

lnTij=λiλjβCij
Tij=eλiλjβCij

Finally, substituting this value of Tij back into our constraint equations, we have:

jeλiλjβCij=Ti;ieλiλjβCij=Tj

and, taking the constant multiples outside of the summation sign

eλi=TijeλjβCij;eλj=TjieλiβCij

Let

eλiTi=Ai;eλjTj=Bj

we have

Tij=AiBjTiTjeβCij

which says that the most probable distribution of trips has a gravity model form, Tij is proportional to trip origins and destinations. A i, B j, and β ensure constraints are met.

Turning now to computation, we have a large problem. First, we do not know the value of C, which earlier on we said had to do with the money available, it was a cost constraint. Consequently, we have to set β to different values and then find the best set of values for Ai and Bj. We know what β means – the greater the value of β, the less the cost of average distance traveled. (Compare β in Boltzmann's Law noted earlier.) Second, the values of Ai and Bj depend on each other. So for each value of β, we must use an iterative solution. There are computer programs to do this.

Wilson's method has been applied to the Lowry model.

Issues

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).

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.

References

  • Allen, B. 1984 Trip Distribution Using Composite Impedance Transportation Research Record 944 pp. 118–127
  • Barnes, G. and Davis, G. 2000. Understanding Urban Travel Demand: Problems, Solutions, and the Role of Forecasting, University of Minnesota Center for Transportation Studies: Transportation and Regional Growth Study
  • Ben-Akiva M. and Lerman S. 1985 Discrete Choice Analysis, MIT Press, Cambridge MA
  • Boyce, D., Lupa, M. and Zhang, Y.F. 1994 Introducing “Feedback” into the Four-Step Travel Forecasting Procedure vs. the Equilibrium Solution of a Combined Model presented at 73rd Annual Meeting of Transportation Research Board
  • Evans, Suzanne P. 1976 . Derivation and Analysis of Some Models for Combining Trip Distribution and Assignment. Transportation Research, Vol. 10, PP 37–57 1976
  • Florian M., Nguyen S., and Ferland J. 1975 On the Combined Distribution-Assignment of Traffic", Transportation Science, Vol. 9, pp. 43–53, 1975
  • Haney, D. 1972 Consistency in Transportation Demand and Evaluation Models, Highway Research Record 392, pp. 13–25 1972
  • Hansen, W. G. 1959. How accessibility shapes land use. Journal of the American Institute of Planners, 25(2), 73–76.
  • Heanue, Kevin E. and Pyers, Clyde E. 1966. A Comparative Evaluation of Trip Distribution Procedures,
  • Levinson, D. and A. Kumar 1994 The Rational Locator: Why Travel Times Have Remained Stable, Journal of the American Planning Association, 60:3 319–332
  • Levinson, D. and Kumar A. 1995. A Multi-modal Trip Distribution Model. Transportation Research Record #1466: 124–131.
  • Portland MPO Report to Federal Transit Administration on Transit Modeling
  • Reilly, W.J. (1929) “Methods for the Study of Retail Relationships” University of Texas Bulletin No 2944, Nov. 1929.
  • Reilly, W.J., 1931. The Law of Retail Gravitation, New York.
  • Ruiter, E. 1967 Improvements in Understanding, Calibrating, and Applying the Opportunity Model Highway Research Record No. 165 pp. 1–21
  • Stewart, J.Q. (1948) “Demographic Gravitation: Evidence and Application” Sociometry Vol. XI Feb.–May 1948 pp 31–58.
  • Stewart, J.Q., 1947. Empirical Mathematical Rules Concerning the Distribution and Equilibrium of Population, Geographical Review, Vol 37, 461–486.
  • Stewart, J.Q., 1950. Potential of Population and its Relationship to Marketing. In: Theory in Marketing, R. Cox and W. Alderson (Eds) ( Richard D. Irwin, Inc., Homewood, Illinois).
  • Stewart, J.Q., 1950. The Development of Social Physics, American Journal of Physics, Vol 18, 239–253
  • Voorhees, Alan M., 1956, "A General Theory of Traffic Movement," 1955 Proceedings, Institute of Traffic Engineers, New Haven, Connecticut.
  • Whitaker, R. and K. West 1968 The Intervening Opportunities Model: A Theoretical Consideration Highway Research Record 250 pp. 1–7
  • Wilson, A.G. A Statistical Theory of Spatial Distribution Models Transportation Research, Volume 1, pp. 253–269 1967
  • Wohl, M. 1963 Demand, Cost, Price and Capacity Relationships Applied to Travel Forecasting. Highway Research Record 38:40–54
  • Zipf, G. K., 1946. The Hypothesis on the Intercity Movement of Persons. American

Sociological Review, vol. 11, Oct

  • Zipf, G. K., 1949. Human Behaviour and the Principle of Least Effort. Massachusetts

External links

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