Title: Accessibility
1Accessibility
2Why Do Cities Form?
- Why does the Twin Cities exist?
- Why are the Twin Cities larger than Duluth or
Fargo? - Why is Chicago more important than St. Louis?
- What is inevitable, what is chance?
3Accessibility
- A measure that relates the transportation network
to the pattern of activities that comprise land
use. - It measures the ease of reaching valued
destinations. - Accessibility is perhaps the most important
concept in defining and explaining regional form
and function. (Wachs and Kumagai 1973)
4The Power of Networks
- Top picture two markets A-B and B-A.
- Middle Picture six markets B-C, C-B, C-A, A-C
- Bottom Picture twelve markets D-C, C-D, D-B,
B-D, D-A, A-D
5Mathematical Expression
- S N ( N-1)
- S Size of the Network
- N Number of Nodes (places)
- To illustrate
- With 2 nodes S 21 2
- With 3 nodes S 32 6
- With 4 nodes S 43 12. And so on.
6Relative vs. Absolute Change
- Do people value the absolute increase (each
person I am connected to adds the same value)? - Or do people value the relative change (I will
pay twice as much for a network that is twice the
size)?
7Measuring Point Accessibility
- Where
- Pj some measure of activity at point j (for
example jobs) - Cij the cost to travel between i and j (for
example travel time by auto).
8Measuring Metropolitan Accessibility
- where
- A Accessibility
- Wi Workers at origin i
- Ej Employment at destination j
- f(Cij) function of the travel cost (time and
money) between i and j.
9Network Size vs. Accessibility
- Network Size
- All nodes valued equally
- Independent of type of node
- Independent of spatial separation of nodes
- Accessibilty
- Places are not equal
- Places (i, j) are weighted according to size
- Considers spatial separation of places.
10Absolute vs. Relative Accessibility
- A transportation improvement reduces the travel
time between two places. What happens? - The absolute accessibility of the entire region
increases. The pie increases - The relative accessibility of the two places
increases at a greater rate than the rest of the
region. The slice of the pie going to those two
places increases even more. - Why does this matter?
11Feedback Positive and Negative
- Positive Feedback Systems
- More begets more
- Less begets less.
- Examples?
- Negative Feedback Systems
- More begets less
- Less begets more.
- Examples?
12Accessibility and Land Use
13Coruscant
14Constraints
- If the model is correct, why dont we live on
coruscant? - Time - we just dont live there yet
- We do, visit New York, Tokyo, Hong Kong
- Congestion and related costs to density limit the
accessibility machine - Population, food, energy are constraints
15Network Externalities
16Multi-Modal Multi-Purpose Accessibility
17Access By Mode Distance
18Journey to Work Time and Home Value by Ring
19Gravity Model
- Hypothesis The interaction between two places
decreases with distance, but increases with the
size of the two places. - There is more interaction between Minneapolis and
St. Paul than Minneapolis and Chicago, despite
the fact that Chicago is bigger. - Similarly there is more interaction between
Minneapolis and Chicago than Minneapolis and Los
Angeles. - However, there is more interaction between
Minneapolis and Los Angeles than Minneapolis and
Las Vegas, despite the fact that Las Vegas is
closer.
20Gravity Math
- Where
- Tij Trips from i to j
- Oi Productions of trips at origin i
- Dj Productions of trips at destination j
- Ki, Kj balancing factors solved iteratively
21f(Cij)
- For auto
- For transit
- Where
- Cija peak hour auto travel time between zones i
and j and - Cijt peak hour transit travel time between
zones i and j.
22Illustration of Gravity Model
23Testing the Gravity Model
- It is hypothesized that living in an area with
relatively high jobs accessibility is associated
with shorter trips, as is working in an area of
relatively high housing accessibility. - (the doubly-constrained gravity model)
24Data
- MWCOG Household Travel Survey (1987-88)
- 8,000 households and 55,000 trips
- Accessibility Measures
25Jobs and Housing Accessibility and Commuting
Duration
- In the gravity model implicitly being tested
here, average commute to work time is determined
by three factors - 1) a propensity (choices) function which relates
willingness to travel with travel cost or time,
(individual demand) - 2) the opportunities (chances) available at any
given distance or time from the origin, (market
supply) and - 3) the number of competing workers. (market
demand) - Propensity f ( tij , Income, Mode, Gender... )
- It is hypothesized that this underlying
preference is relatively undifferentiated based
solely on location.
26Geographic Factors
- 1) distance between the home and the center of
the region (Di0) (the zero mile marker at the
ellipse in front of the White House), - 2) distance between workplace and the center
(Dj0), - 3) accessibility to jobs from the home (AiE),
- 4) accessibility to other houses from the home
(AiR), - 5) accessibility to other jobs from the workplace
(AjE), - 6) and accessibility to houses from workplace
(AjR).
27Chart 1 Summary Hypotheses
- Trip-End
- Home-End Work-End
- (Origin) (Destination)
-
--------------------------------------------------
---------- - Accessibility AiE AjE
- to Jobs negative positive
- Accessibility AiR AjR
- to Houses positive negative
- Distance Di0 Dj0
- from Center positive negative
28Elasticities of Travel Time with respect to
Accessibility
AUTO COMMUTERS AUTO COMMUTERS TRANSIT COMMUTERS TRANSIT COMMUTERS
VARIABLE ELASTICITY VARIABLE ELASTICITY
AiEa -0.22 AiEt -0.12
AiRa 0.19 AiRt 0.05
AjEa 0.24 AjEt -0.25
AjRa -0.25 AjRt 0.07
Di0 0.25 Di0 0.31
Dj0 -0.16 Dj0 -0.09
29Dependent Variable Travel Time to Work
30Accessibility and Housing Value
- Urban Economics suggests trade-off time money
- - finding supported for auto accessibility
- - not for transit accessibility
31Conclusions
- The City is the Network.
- Location matters, important explanatory variable,
but - Density and J/H Balance (Accessibility) weak
policy variables to influence commuting. ... - Ignores self-selection process - creating more
high density housing wont create more young or
old who wish to live in those high density urban
areas.
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