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One of the most valuble pieces of data in
travel demand forecasting is the matrix representing existing
travel. It is the basis for forecasting and for almost all
important comparative analyses Cube Analyst is the Cube functional
library developed specifically for estimating and updating
base year automobile, truck and public transit trip matrices.
Cube Analyst enables the user to exploit a wide variety of data
that contribute to matrix updating and matrix development.
Cube Analyst has been used successfully on many and varied studies
around the world.
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Cube Analyst can be used to estimate
trip matrices for any number of zones. It has been used
to estimate the regional base travel matrix for the New
York Metropolitan Area with over 2500 zones. |
Excellent results with limited
data
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Matrix
Desire Lines
Trip matrices are the backbone of travel forecasting.
Cube Analyst helps you estimate highly accurate matrices using
limited data. The graphics in Cube
Base show the level of travel from zone to zone. |
Cube Analyst uses mathematical techniques to find trip matrices
that are consistent with observed transport demand and count
data. It does what many do by hand, but in a much more accurate
and efficient way.
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Matrix
Data
The trip matrices are estimated on a cell-by-cell basis
using the supplied data. Statistical summaries are output
giving indicators of the quality of the estimation. The
graphics in Cube Base show the binary matrix values. |
Cube Analyst is given a set of observations concerning travel demand:
trip end data such as a survey at a shopping center, traffic
counts organized into screen- and cut-lines, movement or path
data identifying the routes used by travellers going from
origin to destination. In addition, and a key element in Cube
ME, the user provides quality weights. These provide tolerance
bands to each of the individual or groups of data observations.
Cube Analyst uses maximum likelihood statitstical techniques to
estimate the cell values for the matrix. These values are
those that fit the best with the observations and their quality
weights.
Key advantages of Cube Analyst
Exploits a wide range of low cost, readily available data:
- existing trip matrices either from surveys or from travel
demand models
- flow counts from all types of counting devices
- trip end data from parking surveys
- public transit
data from boarding and alighting surveys
- partial trip data from license plate and other cordon
surveys
- electronic ticket data
- data of varied quality can be used without compromising
overall quality
- software tools assist with the preparation of data
- use of confidence levels providing explicit consideration
to the inherent variability in
the
data
Rigorous Methodology
- Cube Analyst uses the maximum likelihood statistical method
- a powerful optimizer allows individual cells to be estimated
with precision
- the calculation is self-calibrating
Integral Quality Assurance
- extensive reporting options enable users to establish their
own confidence in the results
- effects and implications on the estimated matrix of different
input data may be studied
- specialist tools indicate the quality of the estimated matrix
- quality analysis of estimated matrix guides cost effective
and selective data surveys  when
required
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