routes, and to study whether there is any common
factor among them. Besides, one could study the
impact that incidents have on the transportation
system performance, and how long it typically takes
to clear incidents, and bring operations back to
normal.
Other than the applications aforementioned, we
are currently performing a research study to develop
predictive models for border crossing delays.
4.2 Extreme Traffic Events
The Greater Buffalo Niagara region is well known
for its winter weather which is characterized by
numerous and sometimes severe ‘lake-effect’ snow
storms. These events result in significant delay and
increase the frequency of accidents. The data stored
within the data warehouse can provide an
opportunity to better understand the impact of such
events on the transportation network, and hence can
help in devising emergency plans for dealing with
such disrupting events.
The Transportation Analysis and Simulation
System (TRANSIMS) is an integrated, open-source
set of transportation planning models designed to
provide a number of capabilities that go beyond the
traditional “four-step” modelling process. The
TRANSIMS framework has four components: a
population synthesizer, an activity generator, a route
planner, and a micro-simulator. Also, the area has
recently been selected as one among a handful sites
nationwide for the test deployment of the
TRANSIMS model, focusing on freight border-
crossing issues.
On Dec 2nd, 2010, for example, a severe snow
storm hit the south Buffalo area, which forced the
New York State Thruway Authority to shut down
the Thruway (I-90) for several hours.
The data stored can thus be used to study how
traffic flow behaviour and patterns change during
such events, and then to devise effective
management strategies for dealing with such
situations. We are currently in the process of
correlating the archived weather data to TRANSMIT
travel time information to perhaps develop models
that show us how travel time or traffic speed
changes with the different weather and road
conditions
4.3 Traveller Information System
In a related effort, we developed a system called
MYNITTEC, which is a personalized subscriber
traveller information system that allows users to
receive customized real-time traveller information in
Western New York and Southern Ontario via text
messaging and/or email. Subscribers have the ability
to select specific expressways, days of the week and
times of day to correspond with your travels.
The way MYNITTEC works is simple. Users
choose their favourite routes and time spots as their
unique travel profiles. Each travel profile allows the
user to receive personalized notifications from the
system. The data warehouse could help enhance the
traveller information system by providing both
predictive information and more detailed route
performance measurement. On the other hand,
MYNITTEC collects some useful information about
travellers in the Western New York region (e.g. their
preferred routes, times of travel). This information
will also be stored within the data warehouse and
can be mined to understand certain aspects of travel
behaviour in the region.
4.4 Model Development, Calibration
& Validation
4.4.1 Model Development
Aside from the traffic data archived in the data
warehouse (i.e. traffic volumes, travel times,
accidents, etc.), the data warehouse also includes
very useful static information about the attributes of
the transportation network. For example, the system
has stored very detailed link attributes, like the
number of lanes, pocket lane, length of the links and
so forth, which provides an opportunity to automate
and facilitate the process of developing traffic
simulation models to support the different traffic
studies in the region.
As we know, there are all kinds of simulation
models, such as AIMSUN, CORSIM, PARAMICS,
VISSIM and so forth. Although some of them are
macroscopic model, some are mesoscopic or
microscopic model. One thing they have in common
is that they all require a network to build the model
on, although they all have their own network file
format. Therefore, another direct application of data
warehouse is the model development based on the
network information we’ve already archived. In
other words, if we are able to transfer the network
information into the format a simulation software
could read, it could make model development a lot
easier instead of an extremely time consuming
process especially for large-scale networks.
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